87 results on '"Redolfi, A."'
Search Results
2. Development of a prediction model of conversion to Alzheimer’s disease in people with mild cognitive impairment: the statistical analysis plan of the INTERCEPTOR project
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Flavia L. Lombardo, Patrizia Lorenzini, Flavia Mayer, Marco Massari, Paola Piscopo, Ilaria Bacigalupo, Antonio Ancidoni, Francesco Sciancalepore, Nicoletta Locuratolo, Giulia Remoli, Simone Salemme, Stefano Cappa, Daniela Perani, Patrizia Spadin, Fabrizio Tagliavini, Alberto Redolfi, Maria Cotelli, Camillo Marra, Naike Caraglia, Fabrizio Vecchio, Francesca Miraglia, Paolo Maria Rossini, Nicola Vanacore, and the INTERCEPTOR Network
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Statistical analysis plan ,Longitudinal study ,Mild cognitive impairment ,Dementia ,Alzheimer’s disease ,Biomarker ,Medicine (General) ,R5-920 - Abstract
Abstract Background In recent years, significant efforts have been directed towards the research and development of disease-modifying therapies for dementia. These drugs focus on prodromal (mild cognitive impairment, MCI) and/or early stages of Alzheimer’s disease (AD). Literature evidence indicates that a considerable proportion of individuals with MCI do not progress to dementia. Identifying individuals at higher risk of developing dementia is essential for appropriate management, including the prescription of new disease-modifying therapies expected to become available in clinical practice in the near future. Methods The ongoing INTERCEPTOR study is a multicenter, longitudinal, interventional, non-therapeutic cohort study designed to enroll 500 individuals with MCI aged 50–85 years. The primary aim is to identify a biomarker or a set of biomarkers able to accurately predict the conversion from MCI to AD dementia within 3 years of follow-up. The biomarkers investigated in this study are neuropsychological tests (mini-mental state examination (MMSE) and delayed free recall), brain glucose metabolism ([18F]FDG-PET), MRI volumetry of the hippocampus, EEG brain connectivity, cerebrospinal fluid (CSF) markers (p-tau, t-tau, Aβ1-42, Aβ1-42/1–40 ratio, Aβ1-42/p-Tau ratio) and APOE genotype. The baseline visit includes a full cognitive and neuropsychological evaluation, as well as the collection of clinical and socio-demographic information. Prognostic models will be developed using Cox regression, incorporating individual characteristics and biomarkers through stepwise selection. Model performance will be evaluated in terms of discrimination and calibration and subjected to internal validation using the bootstrapping procedure. The final model will be visually represented as a nomogram. Discussion This paper contains a detailed description of the statistical analysis plan to ensure the reproducibility and transparency of the analysis. The prognostic model developed in this study aims to identify the population with MCI at higher risk of developing AD dementia, potentially eligible for drug prescriptions. The nomogram could provide a valuable tool for clinicians for risk stratification and early treatment decisions. Trial registration ClinicalTrials.gov NCT03834402. Registered on February 8, 2019
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- 2024
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3. Virtual brain simulations reveal network-specific parameters in neurodegenerative dementias
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Anita Monteverdi, Fulvia Palesi, Michael Schirner, Francesca Argentino, Mariateresa Merante, Alberto Redolfi, Francesca Conca, Laura Mazzocchi, Stefano F. Cappa, Matteo Cotta Ramusino, Alfredo Costa, Anna Pichiecchio, Lisa M. Farina, Viktor Jirsa, Petra Ritter, Claudia A. M. Gandini Wheeler-Kingshott, and Egidio D’Angelo
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virtual brain modeling ,brain dynamics ,excitatory/inhibitory balance ,Alzheimer’s disease ,frontotemporal dementia ,resting-state networks ,Neurosciences. Biological psychiatry. Neuropsychiatry ,RC321-571 - Abstract
IntroductionNeural circuit alterations lay at the core of brain physiopathology, and yet are hard to unveil in living subjects. The Virtual Brain (TVB) modeling, by exploiting structural and functional magnetic resonance imaging (MRI), yields mesoscopic parameters of connectivity and synaptic transmission.MethodsWe used TVB to simulate brain networks, which are key for human brain function, in Alzheimer’s disease (AD) and frontotemporal dementia (FTD) patients, whose connectivity and synaptic parameters remain largely unknown; we then compared them to healthy controls, to reveal novel in vivo pathological hallmarks.ResultsThe pattern of simulated parameter differed between AD and FTD, shedding light on disease-specific alterations in brain networks. Individual subjects displayed subtle differences in network parameter patterns that significantly correlated with their individual neuropsychological, clinical, and pharmacological profiles.DiscussionThese TVB simulations, by informing about a new personalized set of networks parameters, open new perspectives for understanding dementias mechanisms and design personalized therapeutic approaches.
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- 2023
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4. Familial Alzheimer’s disease presenilin-2 mutants affect Ca2+ homeostasis and brain network excitability
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Pendin, Diana, Fasolato, Cristina, Basso, Emy, Filadi, Riccardo, Greotti, Elisa, Galla, Luisa, Gomiero, Chiara, Leparulo, Alessandro, Redolfi, Nelly, Scremin, Elena, Vajente, Nicola, Pozzan, Tullio, and Pizzo, Paola
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- 2021
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5. Mild cognitive impairment with suspected nonamyloid pathology (SNAP)
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Caroli, Anna, Prestia, Annapaola, Galluzzi, Samantha, Ferrari, Clarissa, van der Flier, Wiesje M, Ossenkoppele, Rik, Van Berckel, Bart, Barkhof, Frederik, Teunissen, Charlotte, Wall, Anders E, Carter, Stephen F, Schöll, Michael, Choo, Il Han, Grimmer, Timo, Redolfi, Alberto, Nordberg, Agneta, Scheltens, Philip, Drzezga, Alexander, Frisoni, Giovanni B, Weiner, Michael, Aisen, Paul, Petersen, Ronald, Jack, Clifford R, Jagust, William, Trojanowki, JQ, Toga, Arthur W, Beckett, Laurel, Green, Robert C, Gamst, Anthony, Saykin, Andrew J, Morris, John, Potter, William Z, Montine, Tom, Thomas, Ronald G, Donohue, Michael, Walter, Sarah, Dale, Anders, Bernstein, Matthew, Felmlee, Joel, Fox, Nick, Thompson, Paul, Schuff, Norbert, Alexander, Gene, DeCarli, Charles, Bandy, Dan, Koeppe, Robert A, Foster, Norm, Reiman, Eric M, Chen, Kewei, Mathis, Chet, Cairns, Nigel J, Taylor-Reinwald, Lisa, Shaw, Les, Lee, Virginia M-Y, Korecka, Magdalena, Crawford, Karen, Neu, Scott, Harvey, Danielle, Kornak, John, Foroud, Tatiana M, Potkin, Steven, Shen, Li, Kachaturian, Zaven, Frank, Richard, Snyder, Peter J, Molchan, Susan, Kaye, Jeffrey, Dolen, Sara, Quinn, Joseph, Schneider, Lon, Pawluczyk, Sonia, Spann, Bryan M, Brewer, James, Vanderswag, Helen, Heidebrink, Judith L, Lord, Joanne L, Johnson, Kris, Doody, Rachelle S, Villanueva-Meyer, Javier, Chowdhury, Munir, Stern, Yaakov, Honig, Lawrence S, Bell, Karen L, Morris, John C, and Mintun, Mark A
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Biomedical and Clinical Sciences ,Clinical Sciences ,Aging ,Alzheimer's Disease ,Neurosciences ,Brain Disorders ,Acquired Cognitive Impairment ,Neurodegenerative ,Alzheimer's Disease including Alzheimer's Disease Related Dementias (AD/ADRD) ,Dementia ,2.1 Biological and endogenous factors ,Aetiology ,Neurological ,Aged ,Aged ,80 and over ,Cognitive Dysfunction ,Databases ,Factual ,Disease Progression ,Female ,Follow-Up Studies ,Humans ,Male ,Middle Aged ,Neurodegenerative Diseases ,Plaque ,Amyloid ,Predictive Value of Tests ,Alzheimer's Disease Neuroimaging Initiative ,Cognitive Sciences ,Neurology & Neurosurgery ,Clinical sciences - Abstract
ObjectivesThe aim of this study was to investigate predictors of progressive cognitive deterioration in patients with suspected non-Alzheimer disease pathology (SNAP) and mild cognitive impairment (MCI).MethodsWe measured markers of amyloid pathology (CSF β-amyloid 42) and neurodegeneration (hippocampal volume on MRI and cortical metabolism on [(18)F]-fluorodeoxyglucose-PET) in 201 patients with MCI clinically followed for up to 6 years to detect progressive cognitive deterioration. We categorized patients with MCI as A+/A- and N+/N- based on presence/absence of amyloid pathology and neurodegeneration. SNAPs were A-N+ cases.ResultsThe proportion of progressors was 11% (8/41), 34% (14/41), 56% (19/34), and 71% (60/85) in A-N-, A+N-, SNAP, and A+N+, respectively; the proportion of APOE ε4 carriers was 29%, 70%, 31%, and 71%, respectively, with the SNAP group featuring a significantly different proportion than both A+N- and A+N+ groups (p ≤ 0.005). Hypometabolism in SNAP patients was comparable to A+N+ patients (p = 0.154), while hippocampal atrophy was more severe in SNAP patients (p = 0.002). Compared with A-N-, SNAP and A+N+ patients had significant risk of progressive cognitive deterioration (hazard ratio = 2.7 and 3.8, p = 0.016 and p < 0.001), while A+N- patients did not (hazard ratio = 1.13, p = 0.771). In A+N- and A+N+ groups, none of the biomarkers predicted time to progression. In the SNAP group, lower time to progression was correlated with greater hypometabolism (r = 0.42, p = 0.073).ConclusionsOur findings support the notion that patients with SNAP MCI feature a specific risk progression profile.
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- 2015
6. Delphi definition of the EADC‐ADNI Harmonized Protocol for hippocampal segmentation on magnetic resonance
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Boccardi, Marina, Bocchetta, Martina, Apostolova, Liana G, Barnes, Josephine, Bartzokis, George, Corbetta, Gabriele, DeCarli, Charles, deToledo‐Morrell, Leyla, Firbank, Michael, Ganzola, Rossana, Gerritsen, Lotte, Henneman, Wouter, Killiany, Ronald J, Malykhin, Nikolai, Pasqualetti, Patrizio, Pruessner, Jens C, Redolfi, Alberto, Robitaille, Nicolas, Soininen, Hilkka, Tolomeo, Daniele, Wang, Lei, Watson, Craig, Wolf, Henrike, Duvernoy, Henri, Duchesne, Simon, Jack, Clifford R, Frisoni, Giovanni B, and Segmentation, EADC‐ADNI Working Group on the Harmonized Protocol for Manual Hippocampal
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Neurosciences ,Alzheimer Disease ,Atrophy ,Consensus ,Delphi Technique ,Hippocampus ,Humans ,Image Processing ,Computer-Assisted ,Imaging ,Three-Dimensional ,Internationality ,Magnetic Resonance Imaging ,Neuroimaging ,Volumetry ,Manual segmentation ,Harmonization ,Anatomical landmarks ,Delphi procedure ,Alzheimer's disease ,Medial temporal Jobe ,Hippocampal atrophy ,Magnetic.resonance ,Standard operational procedures ,Enrichment ,MCI ,Reliability ,EADC-ADNI Working Group on the Harmonized Protocol for Manual Hippocampal Segmentation ,Magnetic resonance ,Medial temporal lobe ,Clinical Sciences ,Geriatrics - Abstract
BackgroundThis study aimed to have international experts converge on a harmonized definition of whole hippocampus boundaries and segmentation procedures, to define standard operating procedures for magnetic resonance (MR)-based manual hippocampal segmentation.MethodsThe panel received a questionnaire regarding whole hippocampus boundaries and segmentation procedures. Quantitative information was supplied to allow evidence-based answers. A recursive and anonymous Delphi procedure was used to achieve convergence. Significance of agreement among panelists was assessed by exact probability on Fisher's and binomial tests.ResultsAgreement was significant on the inclusion of alveus/fimbria (P = .021), whole hippocampal tail (P = .013), medial border of the body according to visible morphology (P = .0006), and on this combined set of features (P = .001). This definition captures 100% of hippocampal tissue, 100% of Alzheimer's disease-related atrophy, and demonstrated good reliability on preliminary intrarater (0.98) and inter-rater (0.94) estimates.DiscussionConsensus was achieved among international experts with respect to hippocampal segmentation using MR resulting in a harmonized segmentation protocol.
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- 2015
7. Mitochondrial Ca2+ Signaling and Bioenergetics in Alzheimer’s Disease
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Nikita Arnst, Nelly Redolfi, Annamaria Lia, Martina Bedetta, Elisa Greotti, and Paola Pizzo
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calcium ,Alzheimer’s disease ,mitochondria ,bioenergetics ,neuron ,microglia ,Biology (General) ,QH301-705.5 - Abstract
Alzheimer’s disease (AD) is a hereditary and sporadic neurodegenerative illness defined by the gradual and cumulative loss of neurons in specific brain areas. The processes that cause AD are still under investigation and there are no available therapies to halt it. Current progress puts at the forefront the “calcium (Ca2+) hypothesis” as a key AD pathogenic pathway, impacting neuronal, astrocyte and microglial function. In this review, we focused on mitochondrial Ca2+ alterations in AD, their causes and bioenergetic consequences in neuronal and glial cells, summarizing the possible mechanisms linking detrimental mitochondrial Ca2+ signals to neuronal death in different experimental AD models.
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- 2022
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8. E-Infrastructures for Neuroscientists: The GAAIN and neuGRID Examples
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Orlandi, Daniele, Redolfi, Alberto, Revillard, Jérôme, Manset, David, Teipel, Stefan, Frisoni, Giovanni B., Patrizio, Giorgio, Editor-in-Chief, Canuto, Claudio, Series Editor, Coletti, Giulianella, Series Editor, Gentili, Graziano, Series Editor, Malchiodi, Andrea, Series Editor, Marcellini, Paolo, Series Editor, Mezzetti, Emilia, Series Editor, Moscariello, Gioconda, Series Editor, Ruggeri, Tommaso, Series Editor, Naldi, Giovanni, editor, and Nieus, Thierry, editor
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- 2017
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9. Accelerated Aging Characterizes the Early Stage of Alzheimer’s Disease
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Alessandro Leparulo, Marta Bisio, Nelly Redolfi, Tullio Pozzan, Stefano Vassanelli, and Cristina Fasolato
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Alzheimer’s disease ,PS2APP ,presenilin-2 ,amyloid-β ,slow oscillations ,delta waves ,Cytology ,QH573-671 - Abstract
For Alzheimer’s disease (AD), aging is the main risk factor, but whether cognitive impairments due to aging resemble early AD deficits is not yet defined. When working with mouse models of AD, the situation is just as complicated, because only a few studies track the progression of the disease at different ages, and most ignore how the aging process affects control mice. In this work, we addressed this problem by comparing the aging process of PS2APP (AD) and wild-type (WT) mice at the level of spontaneous brain electrical activity under anesthesia. Using local field potential recordings, obtained with a linear probe that traverses the posterior parietal cortex and the entire hippocampus, we analyzed how multiple electrical parameters are modified by aging in AD and WT mice. With this approach, we highlighted AD specific features that appear in young AD mice prior to plaque deposition or that are delayed at 12 and 16 months of age. Furthermore, we identified aging characteristics present in WT mice but also occurring prematurely in young AD mice. In short, we found that reduction in the relative power of slow oscillations (SO) and Low/High power imbalance are linked to an AD phenotype at its onset. The loss of SO connectivity and cortico-hippocampal coupling between SO and higher frequencies as well as the increase in UP-state and burst durations are found in young AD and old WT mice. We show evidence that the aging process is accelerated by the mutant PS2 itself and discuss such changes in relation to amyloidosis and gliosis.
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- 2022
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10. MRI predictors of amyloid pathology: results from the EMIF-AD Multimodal Biomarker Discovery study
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Mara ten Kate, Alberto Redolfi, Enrico Peira, Isabelle Bos, Stephanie J. Vos, Rik Vandenberghe, Silvy Gabel, Jolien Schaeverbeke, Philip Scheltens, Olivier Blin, Jill C. Richardson, Regis Bordet, Anders Wallin, Carl Eckerstrom, José Luis Molinuevo, Sebastiaan Engelborghs, Christine Van Broeckhoven, Pablo Martinez-Lage, Julius Popp, Magdalini Tsolaki, Frans R. J. Verhey, Alison L. Baird, Cristina Legido-Quigley, Lars Bertram, Valerija Dobricic, Henrik Zetterberg, Simon Lovestone, Johannes Streffer, Silvia Bianchetti, Gerald P. Novak, Jerome Revillard, Mark F. Gordon, Zhiyong Xie, Viktor Wottschel, Giovanni Frisoni, Pieter Jelle Visser, and Frederik Barkhof
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Alzheimer’s disease ,Mild cognitive impairment ,Biomarkers ,Magnetic resonance imaging ,Amyloid ,Machine learning ,Neurosciences. Biological psychiatry. Neuropsychiatry ,RC321-571 ,Neurology. Diseases of the nervous system ,RC346-429 - Abstract
Abstract Background With the shift of research focus towards the pre-dementia stage of Alzheimer’s disease (AD), there is an urgent need for reliable, non-invasive biomarkers to predict amyloid pathology. The aim of this study was to assess whether easily obtainable measures from structural MRI, combined with demographic data, cognitive data and apolipoprotein E (APOE) ε4 genotype, can be used to predict amyloid pathology using machine-learning classification. Methods We examined 810 subjects with structural MRI data and amyloid markers from the European Medical Information Framework for Alzheimer’s Disease Multimodal Biomarker Discovery study, including subjects with normal cognition (CN, n = 337, age 66.5 ± 7.2, 50% female, 27% amyloid positive), mild cognitive impairment (MCI, n = 375, age 69.1 ± 7.5, 53% female, 63% amyloid positive) and AD dementia (n = 98, age 67.0 ± 7.7, 48% female, 97% amyloid positive). Structural MRI scans were visually assessed and Freesurfer was used to obtain subcortical volumes, cortical thickness and surface area measures. We first assessed univariate associations between MRI measures and amyloid pathology using mixed models. Next, we developed and tested an automated classifier using demographic, cognitive, MRI and APOE ε4 information to predict amyloid pathology. A support vector machine (SVM) with nested 10-fold cross-validation was applied to identify a set of markers best discriminating between amyloid positive and amyloid negative subjects. Results In univariate associations, amyloid pathology was associated with lower subcortical volumes and thinner cortex in AD-signature regions in CN and MCI. The multi-variable SVM classifier provided an area under the curve (AUC) of 0.81 ± 0.07 in MCI and an AUC of 0.74 ± 0.08 in CN. In CN, selected features for the classifier included APOE ε4, age, memory scores and several MRI measures such as hippocampus, amygdala and accumbens volumes and cortical thickness in temporal and parahippocampal regions. In MCI, the classifier including demographic and APOE ε4 information did not improve after additionally adding imaging measures. Conclusions Amyloid pathology is associated with changes in structural MRI measures in CN and MCI. An automated classifier based on clinical, imaging and APOE ε4 data can identify the presence of amyloid pathology with a moderate level of accuracy. These results could be used in clinical trials to pre-screen subjects for anti-amyloid therapies.
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- 2018
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11. Differential diagnosis of neurodegenerative dementias with the explainable MRI based machine learning algorithm MUQUBIA.
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De Francesco, Silvia, Crema, Claudio, Archetti, Damiano, Muscio, Cristina, Reid, Robert I., Nigri, Anna, Bruzzone, Maria Grazia, Tagliavini, Fabrizio, Lodi, Raffaele, D'Angelo, Egidio, Boeve, Brad, Kantarci, Kejal, Firbank, Michael, Taylor, John-Paul, Tiraboschi, Pietro, Redolfi, Alberto, Gandini Wheeler-Kingshott, Claudia A. M., Tosetti, Michela, Forloni, Gianluigi, and Agati, Raffaele
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MACHINE learning ,LEWY body dementia ,DIFFERENTIAL diagnosis ,ALZHEIMER'S disease ,DEMENTIA - Abstract
Biomarker-based differential diagnosis of the most common forms of dementia is becoming increasingly important. Machine learning (ML) may be able to address this challenge. The aim of this study was to develop and interpret a ML algorithm capable of differentiating Alzheimer's dementia, frontotemporal dementia, dementia with Lewy bodies and cognitively normal control subjects based on sociodemographic, clinical, and magnetic resonance imaging (MRI) variables. 506 subjects from 5 databases were included. MRI images were processed with FreeSurfer, LPA, and TRACULA to obtain brain volumes and thicknesses, white matter lesions and diffusion metrics. MRI metrics were used in conjunction with clinical and demographic data to perform differential diagnosis based on a Support Vector Machine model called MUQUBIA (Multimodal Quantification of Brain whIte matter biomArkers). Age, gender, Clinical Dementia Rating (CDR) Dementia Staging Instrument, and 19 imaging features formed the best set of discriminative features. The predictive model performed with an overall Area Under the Curve of 98%, high overall precision (88%), recall (88%), and F1 scores (88%) in the test group, and good Label Ranking Average Precision score (0.95) in a subset of neuropathologically assessed patients. The results of MUQUBIA were explained by the SHapley Additive exPlanations (SHAP) method. The MUQUBIA algorithm successfully classified various dementias with good performance using cost-effective clinical and MRI information, and with independent validation, has the potential to assist physicians in their clinical diagnosis. [ABSTRACT FROM AUTHOR]
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- 2023
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12. In Situ Raman Study of Neurodegenerated Human Neuroblastoma Cells Exposed to Outer-Membrane Vesicles Isolated from Porphyromonas gingivalis.
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Pezzotti, Giuseppe, Adachi, Tetsuya, Imamura, Hayata, Bristol, Davide Redolfi, Adachi, Keiji, Yamamoto, Toshiro, Kanamura, Narisato, Marin, Elia, Zhu, Wenliang, Kawai, Toshihisa, Mazda, Osam, Kariu, Toru, Waku, Tomonori, Nichols, Frank C., Riello, Pietro, Rizzolio, Flavio, Limongi, Tania, and Okuma, Kazu
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PORPHYROMONAS gingivalis ,CYSTEINE proteinases ,NEUROBLASTOMA ,RAMAN spectroscopy ,NEUROFIBRILLARY tangles ,ALZHEIMER'S disease - Abstract
The aim of this study was to elucidate the chemistry of cellular degeneration in human neuroblastoma cells upon exposure to outer-membrane vesicles (OMVs) produced by Porphyromonas gingivalis (Pg) oral bacteria by monitoring their metabolomic evolution using in situ Raman spectroscopy. Pg-OMVs are a key factor in Alzheimer's disease (AD) pathogenesis, as they act as efficient vectors for the delivery of toxins promoting neuronal damage. However, the chemical mechanisms underlying the direct impact of Pg-OMVs on cell metabolites at the molecular scale still remain conspicuously unclear. A widely used in vitro model employing neuroblastoma SH-SY5Y cells (a sub-line of the SK-N-SH cell line) was spectroscopically analyzed in situ before and 6 h after Pg-OMV contamination. Concurrently, Raman characterizations were also performed on isolated Pg-OMVs, which included phosphorylated dihydroceramide (PDHC) lipids and lipopolysaccharide (LPS), the latter in turn being contaminated with a highly pathogenic class of cysteine proteases, a key factor in neuronal cell degradation. Raman characterizations located lipopolysaccharide fingerprints in the vesicle structure and unveiled so far unproved aspects of the chemistry behind protein degradation induced by Pg-OMV contamination of SH-SY5Y cells. The observed alterations of cells' Raman profiles were then discussed in view of key factors including the formation of amyloid β (Aβ) plaques and hyperphosphorylated Tau neurofibrillary tangles, and the formation of cholesterol agglomerates that exacerbate AD pathologies. [ABSTRACT FROM AUTHOR]
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- 2023
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13. Intracellular Calcium Dysregulation by the Alzheimer’s Disease-Linked Protein Presenilin 2
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Luisa Galla, Nelly Redolfi, Tullio Pozzan, Paola Pizzo, and Elisa Greotti
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presenilins ,calcium dysregulation ,alzheimer’s disease ,soce ,genetically encoded calcium indicators ,Biology (General) ,QH301-705.5 ,Chemistry ,QD1-999 - Abstract
Alzheimer’s disease (AD) is the most common form of dementia. Even though most AD cases are sporadic, a small percentage is familial due to autosomal dominant mutations in amyloid precursor protein (APP), presenilin-1 (PSEN1), and presenilin-2 (PSEN2) genes. AD mutations contribute to the generation of toxic amyloid β (Aβ) peptides and the formation of cerebral plaques, leading to the formulation of the amyloid cascade hypothesis for AD pathogenesis. Many drugs have been developed to inhibit this pathway but all these approaches currently failed, raising the need to find additional pathogenic mechanisms. Alterations in cellular calcium (Ca2+) signaling have also been reported as causative of neurodegeneration. Interestingly, Aβ peptides, mutated presenilin-1 (PS1), and presenilin-2 (PS2) variously lead to modifications in Ca2+ homeostasis. In this contribution, we focus on PS2, summarizing how AD-linked PS2 mutants alter multiple Ca2+ pathways and the functional consequences of this Ca2+ dysregulation in AD pathogenesis.
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- 2020
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14. Virtual brain simulations reveal network-specific parameters in neurodegenerative dementias.
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Monteverdi, Anita, Palesi, Fulvia, Schirner, Michael, Argentino, Francesca, Merante, Mariateresa, Redolfi, Alberto, Conca, Francesca, Mazzocchi, Laura, Cappa, Stefano F., Ramusino, Matteo Cotta, Costa, Alfredo, Pichiecchio, Anna, Farina, Lisa M., Jirsa, Viktor, Ritter, Petra, Gandini Wheeler-Kingshott, Claudia A. M., and D’Angelo, Egidio
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COMPUTER simulation ,ALZHEIMER'S disease ,RESEARCH funding ,BRAIN ,NEURODEGENERATION ,DESCRIPTIVE statistics ,LARGE-scale brain networks ,STATISTICS ,NEUROPSYCHOLOGICAL tests ,DEMENTIA ,DATA analysis software - Abstract
Introduction: Neural circuit alterations lay at the core of brain physiopathology, and yet are hard to unveil in living subjects. The Virtual Brain (TVB) modeling, by exploiting structural and functional magnetic resonance imaging (MRI), yields mesoscopic parameters of connectivity and synaptic transmission. Methods: We used TVB to simulate brain networks, which are key for human brain function, in Alzheimer’s disease (AD) and frontotemporal dementia (FTD) patients, whose connectivity and synaptic parameters remain largely unknown; we then compared them to healthy controls, to reveal novel in vivo pathological hallmarks. Results: The pattern of simulated parameter differed between AD and FTD, shedding light on disease-specific alterations in brain networks. Individual subjects displayed subtle differences in network parameter patterns that significantly correlated with their individual neuropsychological, clinical, and pharmacological profiles. Discussion: These TVB simulations, by informing about a new personalized set of networks parameters, open new perspectives for understanding dementias mechanisms and design personalized therapeutic approaches. [ABSTRACT FROM AUTHOR]
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- 2023
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15. Italian, European, and international neuroinformatics efforts: An overview.
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Redolfi, Alberto, Archetti, Damiano, De Francesco, Silvia, Crema, Claudio, Tagliavini, Fabrizio, Lodi, Raffaele, Ghidoni, Roberta, Gandini Wheeler‐Kingshott, Claudia A. M., Alexander, Daniel C., and D'Angelo, Egidio
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INTERNATIONAL relations , *SOFTWARE development tools , *POWER resources , *BIG data , *NEUROSCIENTISTS - Abstract
Neuroinformatics is a research field that focusses on software tools capable of identifying, analysing, modelling, organising and sharing multiscale neuroscience data. Neuroinformatics has exploded in the last two decades with the emergence of the Big Data phenomenon, characterised by the so‐called 3Vs (volume, velocity and variety), which provided neuroscientists with an improved ability to acquire and process data faster and more cheaply thanks to technical improvements in clinical, genomic and radiological technologies. This situation has led to a 'data deluge', as neuroscientists can routinely collect more study data in a few days than they could in a year just a decade ago. To address this phenomenon, several neuroimaging‐focussed neuroinformatics platforms have emerged, funded by national or transnational agencies, with the following goals: (i) development of tools for archiving and organising analytical data (XNAT, REDCap and LabKey); (ii) development of data‐driven models evolving from reductionist approaches to multidimensional models (RIN, IVN, HBD, EuroPOND, E‐DADS and GAAIN BRAIN); and (iii) development of e‐infrastructures to provide sufficient computational power and storage resources (neuGRID, HBP‐EBRAINS, LONI and CONP). Although the scenario is still fragmented, there are technological and economical attempts at both national and international levels to introduce high standards for open and Findable, Accessible, Interoperable and Reusable (FAIR) neuroscience worldwide. [ABSTRACT FROM AUTHOR]
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- 2023
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16. MRI predictors of amyloid pathology: results from the EMIF-AD Multimodal Biomarker Discovery study
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ten Kate, Mara, Redolfi, Alberto, Peira, Enrico, Bos, Isabelle, Vos, Stephanie J., Vandenberghe, Rik, Gabel, Silvy, Schaeverbeke, Jolien, Scheltens, Philip, Blin, Olivier, Richardson, Jill C., Bordet, Regis, Wallin, Anders, Eckerstrom, Carl, Molinuevo, José Luis, Engelborghs, Sebastiaan, Van Broeckhoven, Christine, Martinez-Lage, Pablo, Popp, Julius, Tsolaki, Magdalini, Verhey, Frans R. J., Baird, Alison L., Legido-Quigley, Cristina, Bertram, Lars, Dobricic, Valerija, Zetterberg, Henrik, Lovestone, Simon, Streffer, Johannes, Bianchetti, Silvia, Novak, Gerald P., Revillard, Jerome, Gordon, Mark F., Xie, Zhiyong, Wottschel, Viktor, Frisoni, Giovanni, Visser, Pieter Jelle, and Barkhof, Frederik
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- 2018
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17. A comparison of two statistical mapping tools for automated brain fdg-pet analysis in predicting conversion to alzheimer’s disease in subjects with mild cognitive impairment
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Paolo Bosco, Osman Ratib, Robert Perneczky, Giovanni B. Frisoni, Mira Didic, Gabriel Gold, Alexander Drzezga, Sara Trombella, Alberto Redolfi, Panteleimon Giannakopoulos, Valentina Garibotto, Silvia Morbelli, Flavio Nobili, Olivier Rager, Luigi Antelmi, Rik Ossenkoppele, Bart N.M. van Berckel, Claire Tabouret-Viaud, Eric Guedj, Université de Genève = University of Geneva (UNIGE), Inria Sophia Antipolis - Méditerranée (CRISAM), Institut National de Recherche en Informatique et en Automatique (Inria), IRCCS Fondazione Stella Maris [Pisa], IRCCS Fatebenefratelli - Brescia, IRCCS Istituto Giannina Gaslini [Genoa, Italy], Technische Universität München = Technical University of Munich (TUM), Imperial College London, Institut de Neurosciences des Systèmes (INS), Aix Marseille Université (AMU)-Institut National de la Santé et de la Recherche Médicale (INSERM), Institut National de la Santé et de la Recherche Médicale (INSERM), Institut FRESNEL (FRESNEL), Aix Marseille Université (AMU)-École Centrale de Marseille (ECM)-Centre National de la Recherche Scientifique (CNRS), University of Cologne, VU University Medical Center [Amsterdam], Otten, Lisa, Imagerie MOléculaire pour applications THéranostiques personnalisées (IMOTHEP), Centre National de la Recherche Scientifique (CNRS)-École Centrale de Marseille (ECM)-Aix Marseille Université (AMU)-Centre National de la Recherche Scientifique (CNRS)-École Centrale de Marseille (ECM)-Aix Marseille Université (AMU)- Hôpital de la Timone [CHU - APHM] (TIMONE), Neurology, Amsterdam Neuroscience - Neurodegeneration, Radiology and nuclear medicine, and Aix Marseille Université (AMU)-École Centrale de Marseille (ECM)-Centre National de la Recherche Scientifique (CNRS)-Aix Marseille Université (AMU)-École Centrale de Marseille (ECM)-Centre National de la Recherche Scientifique (CNRS)- Hôpital de la Timone [CHU - APHM] (TIMONE)
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Male ,hypometabolic pattern ,Concordance ,[SDV]Life Sciences [q-bio] ,Disease ,computer.software_genre ,030218 nuclear medicine & medical imaging ,Correlation ,03 medical and health sciences ,0302 clinical medicine ,Neuroimaging ,Alzheimer Disease ,Fluorodeoxyglucose F18 ,Voxel ,medicine ,Humans ,Dementia ,Cognitive Dysfunction ,Alzheimer’s disease ,Automated analysis ,FDG-PET ,Hypometabolic pattern ,MCI ,Tatistical parametric mapping ,Aged ,Sweden ,Brain Mapping ,Models, Statistical ,tatistical parametric mapping ,business.industry ,[SCCO.NEUR]Cognitive science/Neuroscience ,[SCCO.NEUR] Cognitive science/Neuroscience ,Statistical mapping ,Brain ,Gold standard (test) ,Alzheimer's disease ,medicine.disease ,Neurology ,Positron-Emission Tomography ,Disease Progression ,Female ,Neurology (clinical) ,Radiopharmaceuticals ,business ,Nuclear medicine ,computer ,030217 neurology & neurosurgery - Abstract
Objective: Automated voxel-based analysis methods are used to detect cortical hypometabolism typical of Alzheimer’s Disease (AD) on FDG-PET brain scans. We compared the accuracy of two clinically validated tools for their ability to identify those MCI subjects progressing to AD at followup, to evaluate the impact of the analysis method on FDG-PET diagnostic performance. Methods: SPMGrid and BRASS (Hermes Medical Solutions, Stockholm, Sweden) were tested on 131 MCI and elderly healthy controls from the EADC PET dataset. The concordance between the tools was tested by correlating the quantitative parameters (z- and t-values), calculated by the two software tools, and by measuring the topographical overlap of the abnormal regions (Dice score). Three independent expert readers blindly assigned a diagnosis based on the two map sets. We used conversion to AD dementia as the gold standard. Results: The t-map and z-map calculated with SPMGrid and BRASS, respectively, showed a good correlation (R > .50) for the majority of individual cases (128/131) and for the majority of selected regions of interest (ROIs) (98/116). The overlap of the hypometabolic patterns from the two tools was, however, poor (Dice score .36). The diagnostic performance was comparable, with BRASS showing significantly higher sensitivity (.82 versus .59) and SPMGrid showing higher specificity (.87 versus .52). Conclusion: Despite similar diagnostic performance in predicting conversion to AD in MCI subjects, the two tools showed significant differences, and the maps provided by the tools showed limited overlap. These results underline the urgency for standardization across FDG-PET analysis methods for their use in clinical practice.
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- 2020
18. Mitochondrial Ca 2+ Signaling and Bioenergetics in Alzheimer's Disease.
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Arnst, Nikita, Redolfi, Nelly, Lia, Annamaria, Bedetta, Martina, Greotti, Elisa, and Pizzo, Paola
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ALZHEIMER'S disease ,BIOENERGETICS ,MITOCHONDRIA ,NEUROGLIA - Abstract
Alzheimer's disease (AD) is a hereditary and sporadic neurodegenerative illness defined by the gradual and cumulative loss of neurons in specific brain areas. The processes that cause AD are still under investigation and there are no available therapies to halt it. Current progress puts at the forefront the "calcium (Ca
2+ ) hypothesis" as a key AD pathogenic pathway, impacting neuronal, astrocyte and microglial function. In this review, we focused on mitochondrial Ca2+ alterations in AD, their causes and bioenergetic consequences in neuronal and glial cells, summarizing the possible mechanisms linking detrimental mitochondrial Ca2+ signals to neuronal death in different experimental AD models. [ABSTRACT FROM AUTHOR]- Published
- 2022
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19. Familial Alzheimer’s disease presenilin-2 mutants affect Ca2+ homeostasis and brain network excitability
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Nelly Redolfi, Paola Pizzo, Diana Pendin, Elisa Greotti, Alessandro Leparulo, Cristina Fasolato, Tullio Pozzan, Elena Scremin, Riccardo Filadi, Chiara Gomiero, Emy Basso, Luisa Galla, and Nicola Vajente
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Aging ,Amyloid beta ,Cell ,Mutant ,Presenilin ,Alzheimer’s disease ,Amyloid-beta ,Brain network ,Ca2+ probes ,Calcium homeostasis ,03 medical and health sciences ,0302 clinical medicine ,mental disorders ,medicine ,Amyloid precursor protein ,Dementia ,030212 general & internal medicine ,biology ,Neurodegeneration ,medicine.disease ,medicine.anatomical_structure ,biology.protein ,Geriatrics and Gerontology ,Age of onset ,Neuroscience ,030217 neurology & neurosurgery - Abstract
Alzheimer's disease (AD) is the most frequent cause of dementia in the elderly. Few cases are familial (FAD), due to autosomal dominant mutations in presenilin-1 (PS1), presenilin-2 (PS2) or amyloid precursor protein (APP). The three proteins are involved in the generation of amyloid-beta (Aβ) peptides, providing genetic support to the hypothesis of Aβ pathogenicity. However, clinical trials focused on the Aβ pathway failed in their attempt to modify disease progression, suggesting the existence of additional pathogenic mechanisms. Ca2+ dysregulation is a feature of cerebral aging, with an increased frequency and anticipated age of onset in several forms of neurodegeneration, including AD. Interestingly, FAD-linked PS1 and PS2 mutants alter multiple key cellular pathways, including Ca2+ signaling. By generating novel tools for measuring Ca2+ in living cells, and combining different approaches, we showed that FAD-linked PS2 mutants significantly alter cell Ca2+ signaling and brain network activity, as summarized below.
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- 2019
20. Using normative modelling to detect disease progression in mild cognitive impairment and Alzheimer's disease in a cross-sectional multi-cohort study
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Michela Pievani, Giovanni B. Frisoni, Rafael Garcia-Dias, Vince D. Calhoun, Andrea Mechelli, Lea Baecker, Alberto Redolfi, Pedro F. da Costa, João Ricardo Sato, Cristina Scarpazza, Sandra Vieira, and Walter H. L. Pinaya
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Male ,medicine.medical_specialty ,Science ,Neuroimaging ,Article ,Cohort Studies ,Machine Learning ,Physical medicine and rehabilitation ,Alzheimer Disease ,Normative model of decision-making ,medicine ,Humans ,Generalizability theory ,Cognitive Dysfunction ,Aged ,Multidisciplinary ,Models, Statistical ,business.industry ,Deep learning ,Brain ,Diagnostic markers ,Middle Aged ,Alzheimer's disease ,Autoencoder ,Computer science ,Regression ,Cross-Sectional Studies ,Case-Control Studies ,Disease Progression ,Medicine ,Normative ,Female ,Artificial intelligence ,Neural Networks, Computer ,business ,Psychology ,Biomedical engineering ,Cohort study - Abstract
Normative modelling is an emerging method for quantifying how individuals deviate from the healthy populational pattern. Several machine learning models have been implemented to develop normative models to investigate brain disorders, including regression, support vector machines and Gaussian process models. With the advance of deep learning technology, the use of deep neural networks has also been proposed. In this study, we assessed normative models based on deep autoencoders using structural neuroimaging data from patients with Alzheimer’s disease (n = 206) and mild cognitive impairment (n = 354). We first trained the autoencoder on an independent dataset (UK Biobank dataset) with 11,034 healthy controls. Then, we estimated how each patient deviated from this norm and established which brain regions were associated to this deviation. Finally, we compared the performance of our normative model against traditional classifiers. As expected, we found that patients exhibited deviations according to the severity of their clinical condition. The model identified medial temporal regions, including the hippocampus, and the ventricular system as critical regions for the calculation of the deviation score. Overall, the normative model had comparable cross-cohort generalizability to traditional classifiers. To promote open science, we are making all scripts and the trained models available to the wider research community.
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- 2021
21. MRI predictors of amyloid pathology: results from the EMIF-AD Multimodal Biomarker Discovery study
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Christine Van Broeckhoven, Isabelle Bos, Pablo Martinez-Lage, Frans R.J. Verhey, Frederik Barkhof, Alison L. Baird, Magdalini Tsolaki, Régis Bordet, Jolien Schaeverbeke, Sebastiaan Engelborghs, Pieter Jelle Visser, Olivier Blin, Zhiyong Xie, Mark Forrest Gordon, Silvy Gabel, Mara ten Kate, Carl Eckerström, Rik Vandenberghe, Jérôme Revillard, Julius Popp, Cristina Legido-Quigley, Alberto Redolfi, Giovanni B. Frisoni, Simon Lovestone, Gerald Novak, Lars Bertram, Jill C. Richardson, Johannes Streffer, Silvia Bianchetti, José Luis Molinuevo, Anders Wallin, Enrico Peira, Viktor Wottschel, Valerija Dobricic, Philip Scheltens, Henrik Zetterberg, Stephanie J.B. Vos, Radiology and nuclear medicine, Amsterdam Neuroscience - Neurodegeneration, Neurology, Clinical sciences, Pathologic Biochemistry and Physiology, RS: MHeNs - R1 - Cognitive Neuropsychiatry and Clinical Neuroscience, Psychiatrie & Neuropsychologie, Promovendi MHN, MUMC+: MA Med Staf Spec Psychiatrie (9), VU University Medical Center [Amsterdam], Centro San Giovanni di Dio, Fatebenefratelli, Brescia (IRCCS), Università degli Studi di Brescia = University of Brescia (UniBs), Maastricht University [Maastricht], University Hospitals Leuven [Leuven], Catholic University of Leuven - Katholieke Universiteit Leuven (KU Leuven), Hôpital de la Timone [CHU - APHM] (TIMONE), CIC-CPCET, GlaxoSmithKline [Stevenage, UK] (GSK), GlaxoSmithKline [Headquarters, London, UK] (GSK), Troubles cognitifs dégénératifs et vasculaires - U 1171 (TCDV), Institut National de la Santé et de la Recherche Médicale (INSERM)-Université de Lille-Centre Hospitalier Régional Universitaire [Lille] (CHRU Lille), CHU Lille, University of Gothenburg (GU), Pasqual Maragall Foundation, University of Antwerp (UA), Hospital Network Antwerp Middelheim and Hoge Beuken, Center for Research and Advanced Therapies CITA-Alzheimer Foundation [San Sebastián], Lausanne University Hospital, Geneva University Hospital (HUG), Aristotle University of Thessaloniki, University of Oxford, King‘s College London, Universität zu Lübeck = University of Lübeck [Lübeck], Imperial College London, University of Oslo (UiO), UCL, Institute of Neurology [London], UK Dementia Research Institute (UK DRI), University College of London [London] (UCL), Sahlgrenska University Hospital [Gothenburg], UCB Pharma S.A.[Braine-l'Alleud], UCB Pharma [Brussels], Janssen Research & Development, Boehringer Ingelheim Pharmaceuticals, Inc, Ridgefield, Pfizer Global Research and Development [Cambridge, MA, USA], Vrije Universiteit Medical Centre (VUMC), Vrije Universiteit Amsterdam [Amsterdam] (VU), Université de Genève = University of Geneva (UNIGE), and Institutes of Neurology and Healthcare Engineering, UCL, London
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0301 basic medicine ,Apolipoprotein E ,Oncology ,Male ,MILD COGNITIVE IMPAIRMENT ,Neurology ,Support vector machine ,European Medical Information Framework for Alzheimer's Disease ,Apolipoprotein E4 ,lcsh:RC346-429 ,ddc:616.89 ,0302 clinical medicine ,Biomarker discovery ,Medicine(all) ,medicine.diagnostic_test ,DEMENTIA ,Brain ,Cognition ,Alzheimer's disease ,Middle Aged ,European Medical Information Framework for Alzheimer’s Disease ,3. Good health ,ALZHEIMERS-DISEASE ,Female ,Life Sciences & Biomedicine ,PROJECT ,Alzheimer’s disease ,medicine.medical_specialty ,Amyloid ,Aged ,Alzheimer Disease/diagnostic imaging ,Alzheimer Disease/genetics ,Alzheimer Disease/pathology ,Amyloid beta-Peptides/cerebrospinal fluid ,Amyloid beta-Peptides/metabolism ,Apolipoprotein E4/genetics ,Biomarkers ,Brain/diagnostic imaging ,Brain/pathology ,Cognitive Dysfunction/diagnostic imaging ,Cognitive Dysfunction/pathology ,Humans ,Magnetic Resonance Imaging ,ROC Curve ,Support Vector Machine ,Machine learning ,Magnetic resonance imaging ,Mild cognitive impairment ,Cognitive Neuroscience ,Clinical Neurology ,ATROPHY ,lcsh:RC321-571 ,03 medical and health sciences ,Atrophy ,Alzheimer Disease ,Internal medicine ,BETA DEPOSITION ,mental disorders ,medicine ,Dementia ,Cognitive Dysfunction ,support vector machine ,Biology ,lcsh:Neurosciences. Biological psychiatry. Neuropsychiatry ,lcsh:Neurology. Diseases of the nervous system ,SELECTION BIAS ,DECLINE ,Science & Technology ,Amyloid beta-Peptides ,business.industry ,[SCCO.NEUR]Cognitive science/Neuroscience ,Research ,Neurosciences ,medicine.disease ,PREVENTION ,MACHINE ,030104 developmental biology ,Neurology (clinical) ,Neurosciences & Neurology ,Human medicine ,business ,030217 neurology & neurosurgery - Abstract
Background With the shift of research focus towards the pre-dementia stage of Alzheimer’s disease (AD), there is an urgent need for reliable, non-invasive biomarkers to predict amyloid pathology. The aim of this study was to assess whether easily obtainable measures from structural MRI, combined with demographic data, cognitive data and apolipoprotein E (APOE) ε4 genotype, can be used to predict amyloid pathology using machine-learning classification. Methods We examined 810 subjects with structural MRI data and amyloid markers from the European Medical Information Framework for Alzheimer’s Disease Multimodal Biomarker Discovery study, including subjects with normal cognition (CN, n = 337, age 66.5 ± 7.2, 50% female, 27% amyloid positive), mild cognitive impairment (MCI, n = 375, age 69.1 ± 7.5, 53% female, 63% amyloid positive) and AD dementia (n = 98, age 67.0 ± 7.7, 48% female, 97% amyloid positive). Structural MRI scans were visually assessed and Freesurfer was used to obtain subcortical volumes, cortical thickness and surface area measures. We first assessed univariate associations between MRI measures and amyloid pathology using mixed models. Next, we developed and tested an automated classifier using demographic, cognitive, MRI and APOE ε4 information to predict amyloid pathology. A support vector machine (SVM) with nested 10-fold cross-validation was applied to identify a set of markers best discriminating between amyloid positive and amyloid negative subjects. Results In univariate associations, amyloid pathology was associated with lower subcortical volumes and thinner cortex in AD-signature regions in CN and MCI. The multi-variable SVM classifier provided an area under the curve (AUC) of 0.81 ± 0.07 in MCI and an AUC of 0.74 ± 0.08 in CN. In CN, selected features for the classifier included APOE ε4, age, memory scores and several MRI measures such as hippocampus, amygdala and accumbens volumes and cortical thickness in temporal and parahippocampal regions. In MCI, the classifier including demographic and APOE ε4 information did not improve after additionally adding imaging measures. Conclusions Amyloid pathology is associated with changes in structural MRI measures in CN and MCI. An automated classifier based on clinical, imaging and APOE ε4 data can identify the presence of amyloid pathology with a moderate level of accuracy. These results could be used in clinical trials to pre-screen subjects for anti-amyloid therapies.
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- 2018
22. Hippocampal atrophy has limited usefulness as a diagnostic biomarker on the early onset Alzheimer's disease patients: A comparison between visual and quantitative assessment
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Neus Falgàs, Lorena Rami, Jaume Olives, Albert Lladó, Alberto Redolfi, Adrià Tort-Merino, Oriol Grau, Cristina Muñoz-García, Magdalena Castellví, Anna Antonell, María León, Raquel Sánchez-Valle, Beatriz Bosch, Guadalupe Fernández-Villullas, Núria Bargalló, Nina Coll-Padros, and Mircea Balasa
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Oncology ,Male ,svPPA, semantic variant of Primary Progressive Aphasia ,Hippocampus ,FAQ, Pfeiffer Functional Activities Questionnaire ,lcsh:RC346-429 ,Primary progressive aphasia ,0302 clinical medicine ,FTD, Fronto-temporal dementia ,Early-onset Alzheimer's disease ,Age of Onset ,HC, healthy controls ,A-EOAD, Amnesic Early Onset Alzheimer's disease ,MTA, Medial temporal atrophy ,medicine.diagnostic_test ,05 social sciences ,Regular Article ,Middle Aged ,Alzheimer's disease ,MMSE, Mini Mental State Examination ,Neurology ,EOAD, Early Onset Alzheimer's disease ,Biomarker (medicine) ,lcsh:R858-859.7 ,Female ,AD, Alzheimer's disease ,Frontotemporal dementia ,medicine.medical_specialty ,Cognitive Neuroscience ,Neuroimaging ,LOAD, Late-onset Alzheimer's disease ,lcsh:Computer applications to medicine. Medical informatics ,050105 experimental psychology ,NA- EOAD, Non-Amnesic Early Onset Alzheimer's disease ,HV, Hippocampal volume ,03 medical and health sciences ,Atrophy ,Magnetic resonance imaging ,Alzheimer Disease ,Internal medicine ,mental disorders ,medicine ,Dementia ,Humans ,0501 psychology and cognitive sciences ,Radiology, Nuclear Medicine and imaging ,lcsh:Neurology. Diseases of the nervous system ,Aged ,nfvPPA, non-fluent variant of Primary Progressive Aphasia ,HA, Hippocampal atrophy ,Mini–Mental State Examination ,business.industry ,bvFTD, behavioral variant of Fronto-temporal dementia ,medicine.disease ,Neurology (clinical) ,Amnesia ,MCI, mild cognitive impairment ,business ,030217 neurology & neurosurgery ,Biomarkers - Abstract
NIA-AA diagnostic criteria include volumetric or visual rating measures of hippocampal atrophy (HA) as a diagnostic biomarker of Alzheimer's disease (AD). We aimed to determine its utility as a diagnostic biomarker for early onset Alzheimer's disease (EOAD) by assessing Medial Temporal Atrophy (MTA) and hippocampal volume (HV) determination. MTA score and HV quantified by FreeSurfer were assessed in 140 (aged ≤65) subjects with biomarker supported diagnosis: 38 amnesic (A-EOAD), 20 non-amnesic (NA-EOAD), 30 late onset AD (LOAD), 20 fronto-temporal dementia (FTD) and 32 healthy controls (HC). The results showed that the proportion of MTA ≥ 1.5 was higher on LOAD and FTD than EOAD and HC but none of the MTA thresholds (≥1, ≥1.5 and ≥ 2) showed acceptable diagnostic accuracy. LOAD had lower HV than the other groups. A-EOAD HV was lower than NA-EOAD and HC but equal to FTD. The 6258 mm3 cut-off showed good diagnostic accuracy between A-EOAD and HC. Both tools showed a moderate inverse correlation. In conclusion, MTA has a limited diagnostic utility as an EOAD biomarker as it does not discriminate AD from FTD or HC in initial symptomatic stages. HV may discriminate A-EOAD from HC but not from FTD., Highlights • FTD had higher MTA scores than AD patients. • MTA scores visual assessment had low diagnostic performance in EOAD. • Amnesic EOAD patients had lower hippocampal volume than the non-amnesic ones. • Quantitative assessment only discriminate between amnesic EOAD from controls.
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- 2019
23. Prognostic value of Alzheimer's biomarkers in mild cognitive impairment: the effect of age at onset
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Alexander Drzezga, Giovanni B. Frisoni, Frederik Barkhof, Stephen F. Carter, Daniele Altomare, Wiesje M. van der Flier, Il Han Choo, Samantha Galluzzi, Alberto Redolfi, Michael Schöll, Clarissa Ferrari, Bart N.M. van Berckel, Anna Caroli, Philip Scheltens, Timo Grimmer, Anders Wall, Rik Ossenkoppele, Agneta Nordberg, Charlotte E. Teunissen, Annapaola Prestia, Neurology, Amsterdam Neuroscience - Neurodegeneration, APH - Personalized Medicine, APH - Methodology, Epidemiology and Data Science, Radiology and nuclear medicine, and Clinical chemistry
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Peptide Fragments/metabolism ,Male ,Neurology ,Datasets as Topic ,Biomarkers/metabolism ,Positron-Emission Tomography/standards ,Hippocampus ,0302 clinical medicine ,030212 general & internal medicine ,Cognitive decline ,Age of Onset ,Cognitive Dysfunction/diagnosis/metabolism/pathology/physiopathology ,Cerebral Cortex/diagnostic imaging/metabolism/pathology ,Neuroradiology ,Aged, 80 and over ,Cerebral Cortex ,medicine.diagnostic_test ,biology ,Middle Aged ,Prognosis ,Magnetic Resonance Imaging ,Cardiology ,Disease Progression ,Biomarker (medicine) ,Female ,Alzheimer's disease ,Alzheimer Disease/diagnosis/metabolism/pathology/physiopathology ,medicine.medical_specialty ,Tau protein ,tau Proteins ,03 medical and health sciences ,tau Proteins/metabolism ,Alzheimer Disease ,Fluorodeoxyglucose F18 ,Predictive Value of Tests ,Internal medicine ,medicine ,Humans ,Cognitive Dysfunction ,Amyloid beta-Peptides/metabolism ,Aged ,Amyloid beta-Peptides ,Receiver operating characteristic ,business.industry ,Magnetic Resonance Imaging/standards ,Magnetic resonance imaging ,medicine.disease ,Peptide Fragments ,Hippocampus/diagnostic imaging/metabolism/pathology ,Positron-Emission Tomography ,ddc:618.97 ,biology.protein ,Neurology (clinical) ,business ,030217 neurology & neurosurgery ,Biomarkers ,Follow-Up Studies - Abstract
OBJECTIVE: The aim of this study is to assess the impact of age at onset on the prognostic value of Alzheimer's biomarkers in a large sample of patients with mild cognitive impairment (MCI).METHODS: We measured Aβ42, t-tau, hippocampal volume on magnetic resonance imaging (MRI) and cortical metabolism on fluorodeoxyglucose-positron emission tomography (FDG-PET) in 188 MCI patients followed for at least 1 year. We categorised patients into earlier and later onset (EO/LO). Receiver operating characteristic curves and corresponding areas under the curve (AUCs) were performed to assess and compar the biomarker prognostic performances in EO and LO groups. Linear Model was adopted for estimating the time-to-progression in relation with earlier/later onset MCI groups and biomarkers.RESULTS: In earlier onset patients, all the assessed biomarkers were able to predict cognitive decline (p DISCUSSION: FDG-PET may represent the most universal tool for the establishment of a prognosis in MCI patients and may be used for obtaining an onset-related estimate of the time free from disease.
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- 2019
24. Multi-study validation of data-driven disease progression models to characterize evolution of biomarkers in Alzheimer's disease
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Archetti, Damiano, Ingala, Silvia, Venkatraghavan, Vikram, Wottschel, Viktor, Young, Alexandra L, Bellio, Maura, Bron, Esther E, Klein, Stefan, Barkhof, Frederik, Alexander, Daniel C, Oxtoby, Neil P, Frisoni, Giovanni, Redolfi, Alberto, Alzheimer's Disease Neuroimaging Initiative, EuroPOND Consortium, Radiology and nuclear medicine, Amsterdam Neuroscience - Neurodegeneration, Medical Informatics, and Radiology & Nuclear Medicine
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Male ,Oncology ,MCI, Mild Cognitive Impairment ,Databases, Factual ,SMC, subjective memory complaint ,OASIS, Open Access Series of Imaging Studies ,Patient staging ,Disease ,Biomarkers progression ,MCMC, Markov Chain Monte Carlo ,Neuropsychological Tests ,CSF, cerebrospinal fluid ,lcsh:RC346-429 ,APOE4, Apolipoprotein E ε4 ,Event-based models ,Cohort Studies ,0302 clinical medicine ,Aged, 80 and over ,RAVLT, Rey's Auditory Verbal Learning Test ,medicine.diagnostic_test ,Aβ1–42, Amyloid-β 1,42 ,05 social sciences ,Regular Article ,ADAS-Cog, Alzheimer's Disease Assessment Scale – Cognitive ,Cognition ,Alzheimer's disease ,MMSE, Mini Mental State Examination ,EDSD, European DTI Study on Dementia ,Neurology ,ARWiBo, Alzheimer's disease Repository Without Borders ,Disease Progression ,lcsh:R858-859.7 ,Biomarker (medicine) ,Female ,AD, Alzheimer's disease ,DEBM, discriminative event-based model ,medicine.medical_specialty ,Cognitive Neuroscience ,tau Proteins ,Inter-cohort validation ,AUC, area under curve ,lcsh:Computer applications to medicine. Medical informatics ,MRI, Magnetic Resonance Imaging ,050105 experimental psychology ,eTIV, Estimated Total Intracranial Volume ,External validity ,03 medical and health sciences ,Neuroimaging ,Alzheimer Disease ,Internal medicine ,medicine ,Humans ,Dementia ,0501 psychology and cognitive sciences ,Radiology, Nuclear Medicine and imaging ,SuStaIn, Subtype and Stage Inference ,lcsh:Neurology. Diseases of the nervous system ,Aged ,CN, cognitively normal ,Amyloid beta-Peptides ,Mini–Mental State Examination ,EBM, event-based model ,ELISA, Enzyme Linked Immunosorbent Assay ,business.industry ,GMM, Gaussian Mixture Model ,t-Tau, total Tau ,Models, Theoretical ,medicine.disease ,ROC, receiver operating characteristic ,ADNI, Alzheimer's Disease Neuroimaging Initiative ,Cross-Sectional Studies ,Alzheimer's disease, biomarkers progression, event-based models, inter-cohort validation, patient staging ,ddc:618.97 ,p-Tau, phosphorylated Tau ,ADC, Amsterdam Dementia Cohort ,ViTA, Vienna Transdanube Aging ,Neurology (clinical) ,business ,Biomarkers ,030217 neurology & neurosurgery - Abstract
Understanding the sequence of biological and clinical events along the course of Alzheimer's disease provides insights into dementia pathophysiology and can help participant selection in clinical trials. Our objective is to train two data-driven computational models for sequencing these events, the Event Based Model (EBM) and discriminative-EBM (DEBM), on the basis of well-characterized research data, then validate the trained models on subjects from clinical cohorts characterized by less-structured data-acquisition protocols. Seven independent data cohorts were considered totalling 2389 cognitively normal (CN), 1424 mild cognitive impairment (MCI) and 743 Alzheimer's disease (AD) patients. The Alzheimer's Disease Neuroimaging Initiative (ADNI) data set was used as training set for the constriction of disease models while a collection of multi-centric data cohorts was used as test set for validation. Cross-sectional information related to clinical, cognitive, imaging and cerebrospinal fluid (CSF) biomarkers was used. Event sequences obtained with EBM and DEBM showed differences in the ordering of single biomarkers but according to both the first biomarkers to become abnormal were those related to CSF, followed by cognitive scores, while structural imaging showed significant volumetric decreases at later stages of the disease progression. Staging of test set subjects based on sequences obtained with both models showed good linear correlation with the Mini Mental State Examination score (R2EBM = 0.866; R2DEBM = 0.906). In discriminant analyses, significant differences (p-value ≤ 0.05) between the staging of subjects from training and test sets were observed in both models. No significant difference between the staging of subjects from the training and test was observed (p-value > 0.05) when considering a subset composed by 562 subjects for which all biomarker families (cognitive, imaging and CSF) are available. Event sequence obtained with DEBM recapitulates the heuristic models in a data-driven fashion and is clinically plausible. We demonstrated inter-cohort transferability of two disease progression models and their robustness in detecting AD phases. This is an important step towards the adoption of data-driven statistical models into clinical domain., Highlights • Data-driven event sequences describe evolution of relevant biomarkers in AD. • Agreement between event sequences and heuristic AD progression models • Accuracy in classifying subjects from clinical cohorts up to 91% • Staging of subjects and MMSE scores of individuals show linear relation. • Transferability of AD progression models based on research data to clinical cohorts
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- 2019
25. Reproducibility of hippocampal atrophy rates measured with manual, FreeSurfer, AdaBoost, FSL/FIRST and the MAPS-HBSI methods in Alzheimer's disease
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Hugo Vrenken, Paolo Bosco, Giovanni B. Frisoni, Baptiste Grenier, Frederik Barkhof, Adriaan Versteeg, Alberto Redolfi, Ronald A. van Schijndel, Peter J. Visser, Bob W. van Dijk, Jérôme Revillard, Remko A. de Jong, E. Mulder, Keith S. Cover, Soheil Damangir, David Manset, Kelvin K. Leung, Physics and medical technology, Amsterdam Neuroscience - Brain Imaging, and Radiology and nuclear medicine
- Subjects
Male ,Pathology ,medicine.medical_specialty ,Neuroscience (miscellaneous) ,Neuroimaging ,Disease ,Hippocampus ,030218 nuclear medicine & medical imaging ,ddc:616.89 ,03 medical and health sciences ,0302 clinical medicine ,Atrophy ,Alzheimer Disease ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,AdaBoost ,Aged ,Reproducibility ,medicine.diagnostic_test ,business.industry ,Reproducibility of Results ,Magnetic resonance imaging ,medicine.disease ,Magnetic Resonance Imaging ,Psychiatry and Mental health ,Sample size determination ,Female ,Alzheimer's disease ,Nuclear medicine ,business ,Psychology ,Algorithms ,030217 neurology & neurosurgery - Abstract
The purpose of this study is to assess the reproducibility of hippocampal atrophy rate measurements of commonly used fully-automated algorithms in Alzheimer disease (AD). The reproducibility of hippocampal atrophy rate for FSL/FIRST, AdaBoost, FreeSurfer, MAPS independently and MAPS combined with the boundary shift integral (MAPS-HBSI) were calculated. Back-to-back (BTB) 3D T1-weighted MPRAGE MRI from the Alzheimer's Disease Neuroimaging Initiative (ADNI1) study at baseline and year one were used. Analysis on 3 groups of subjects was performed - 562 subjects at 1.5 T, a 75 subject group that also had manual segmentation and 111 subjects at 3 T. A simple and novel statistical test based on the binomial distribution was used that handled outlying data points robustly. Median hippocampal atrophy rates were -1.1%/year for healthy controls, -3.0%/year for mildly cognitively impaired and -5.1%/year for AD subjects. The best reproducibility was observed for MAPS-HBSI (1.3%), while the other methods tested had reproducibilities at least 50% higher at 1.5 T and 3 T which was statistically significant. For a clinical trial, MAPS-HBSI should require less than half the subjects of the other methods tested. All methods had good accuracy versus manual segmentation. The MAPS-HBSI method has substantially better reproducibility than the other methods considered.
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- 2016
26. Multiple RF classifier for the hippocampus segmentation: Method and validation on EADC-ADNI Harmonized Hippocampal Protocol
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Martina Bocchetta, Stefania Bruno, Paolo Inglese, Giovanni B. Frisoni, Rosalia Maglietta, R. Errico, Nicola Amoroso, Marina Boccardi, Alberto Redolfi, Francesco Sensi, Roberto Bellotti, Sabina Tangaro, Andrea Tateo, and Andrea Chincarini
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Computer science ,Biophysics ,General Physics and Astronomy ,Physics and Astronomy(all) ,Hippocampal formation ,computer.software_genre ,Hippocampus ,Imaging ,ddc:616.89 ,Imaging, Three-Dimensional ,Voxel ,Minimum bounding box ,Three-Dimensional/methods ,Random forest classifier ,medicine ,Radiology, Nuclear Medicine and imaging ,Segmentation ,Science & Technology ,02 Physical Sciences ,medicine.diagnostic_test ,business.industry ,Radiology, Nuclear Medicine & Medical Imaging ,Hippocampus segmentation ,Alzheimer's Disease Neuroimaging Initiative ,Magnetic resonance imaging ,Pattern recognition ,11 Medical And Health Sciences ,General Medicine ,Alzheimer's disease ,06 Biological Sciences ,Magnetic Resonance Imaging ,Random forest ,Nuclear Medicine & Medical Imaging ,Radiology Nuclear Medicine and imaging ,Affine transformation ,Data mining ,Artificial intelligence ,business ,Life Sciences & Biomedicine ,Classifier (UML) ,computer ,Algorithms - Abstract
The hippocampus has a key role in a number of neurodegenerative diseases, such as Alzheimer's Disease. Here we present a novel method for the automated segmentation of the hippocampus from structural magnetic resonance images (MRI), based on a combination of multiple classifiers. The method is validated on a cohort of 50 T1 MRI scans, comprehending healthy control, mild cognitive impairment, and Alzheimer's Disease subjects. The preliminary release of the EADC-ADNI Harmonized Protocol training labels is used as gold standard. The fully automated pipeline consists of a registration using an affine transformation, the extraction of a local bounding box, and the classification of each voxel in two classes (background and hippocampus). The classification is performed slice-by-slice along each of the three orthogonal directions of the 3D-MRI using a Random Forest (RF) classifier, followed by a fusion of the three full segmentations. Dice coefficients obtained by multiple RF (0.87 ± 0.03) are larger than those obtained by a single monolithic RF applied to the entire bounding box, and are comparable to state-of-the-art. A test on an external cohort of 50 T1 MRI scans shows that the presented method is robust and reliable. Additionally, a comparison of local changes in the morphology of the hippocampi between the three subject groups is performed. Our work showed that a multiple classification approach can be implemented for the segmentation for the measurement of volume and shape changes of the hippocampus with diagnostic purposes.
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- 2015
27. Using normative modelling to detect disease progression in mild cognitive impairment and Alzheimer's disease in a cross-sectional multi-cohort study.
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Pinaya, Walter H. L., Scarpazza, Cristina, Garcia-Dias, Rafael, Vieira, Sandra, Baecker, Lea, F da Costa, Pedro, Redolfi, Alberto, Frisoni, Giovanni B., Pievani, Michela, Calhoun, Vince D., Sato, João R., and Mechelli, Andrea
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DISEASE progression ,MILD cognitive impairment ,ALZHEIMER'S disease ,DEEP learning ,GAUSSIAN processes - Abstract
Normative modelling is an emerging method for quantifying how individuals deviate from the healthy populational pattern. Several machine learning models have been implemented to develop normative models to investigate brain disorders, including regression, support vector machines and Gaussian process models. With the advance of deep learning technology, the use of deep neural networks has also been proposed. In this study, we assessed normative models based on deep autoencoders using structural neuroimaging data from patients with Alzheimer's disease (n = 206) and mild cognitive impairment (n = 354). We first trained the autoencoder on an independent dataset (UK Biobank dataset) with 11,034 healthy controls. Then, we estimated how each patient deviated from this norm and established which brain regions were associated to this deviation. Finally, we compared the performance of our normative model against traditional classifiers. As expected, we found that patients exhibited deviations according to the severity of their clinical condition. The model identified medial temporal regions, including the hippocampus, and the ventricular system as critical regions for the calculation of the deviation score. Overall, the normative model had comparable cross-cohort generalizability to traditional classifiers. To promote open science, we are making all scripts and the trained models available to the wider research community. [ABSTRACT FROM AUTHOR]
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- 2021
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28. Norms for Automatic Estimation of Hippocampal Atrophy and a Step Forward for Applicability to the Italian Population.
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De Francesco, Silvia, Galluzzi, Samantha, Vanacore, Nicola, Festari, Cristina, Rossini, Paolo Maria, Cappa, Stefano F., Frisoni, Giovanni B., and Redolfi, Alberto
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HIPPOCAMPUS (Brain) ,MAGNETIC resonance imaging ,ALZHEIMER'S disease ,ATROPHY ,DISTRIBUTION (Probability theory) - Abstract
Introduction: Hippocampal volume is one of the main biomarkers of Alzheimer's Dementia (AD). Over the years, advanced tools that performed automatic segmentation of Magnetic Resonance Imaging (MRI) T13D scans have been developed, such as FreeSurfer (FS) and ACM-Adaboost (AA). Hippocampal volume is considered abnormal when it is below the 5th percentile of the normative population. The aim of this study was to set norms, established from the Alzheimer's Disease Neuroimaging Initiative (ADNI) population, for hippocampal volume measured with FS v.6.0 and AA tools in the neuGRID platform (www.neugrid2.eu) and demonstrate their applicability for the Italian population. Methods: Norms were set from a large group of 545 healthy controls belonging to ADNI. For each pipeline, subjects with segmentation errors were discarded, resulting in 532 valid segmentations for FS and 421 for AA (age range 56–90 years). The comparability of ADNI and the Italian Brain Normative Archive (IBNA), representative of the Italian general population, was assessed testing clinical variables, neuropsychological scores and normalized hippocampal volumes. Finally, percentiles were validated using the Italian Alzheimer's disease Repository Without Borders (ARWiBo) as external independent data set to evaluate FS and AA generalizability. Results: Hippocampal percentiles were checked with the chi-square goodness of fit test. P -values were not significant, showing that FS and AA algorithm distributions fitted the data well. Clinical, neuropsychological and volumetric features were similar in ADNI and IBNA (p > 0.01). Hippocampal volumes measured with both FS and AA were associated with age (p < 0.001). The 5th percentile thresholds, indicating left/right hippocampal atrophy were respectively: (i) below 3,223/3,456 mm
3 at 56 years and 2,506/2,415 mm3 at 90 years for FS; (ii) below 4,583/4,873 mm3 at 56 years and 3,831/3,870 mm3 at 90 years for AA. The average volumes computed on 100 cognitively intact healthy controls (CN) selected from ARWiBo were close to the 50th percentiles, while those for 100 AD patients were close to the abnormal percentiles. Discussion: Norms generated from ADNI through the automatic FS and AA segmentation tools may be used as normative references for Italian patients with suspected AD. [ABSTRACT FROM AUTHOR]- Published
- 2021
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29. Assessment of the incremental diagnostic value of florbetapir F 18 imaging in patients with cognitive impairment: The incremental diagnostic value of amyloid PET with [ 18 F]-florbetapir (INDIA-FBP) study
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Boccardi, Marina, Altomare, Daniele, Ferrari, Clarissa, Festari, Cristina, Guerra, Ugo Paolo, Paghera, Barbara, Pizzocaro, Claudio, Lussignoli, Giulia, Geroldi, Cristina, Zanetti, Orazio, Cotelli, Maria Sofia, Turla, Marinella, Borroni, Barbara, Rozzini, Luca, Mirabile, Dario, Defanti, Carlo, Gennuso, Michele, Prelle, Alessandro, Gentile, Simona, Morandi, Alessandro, Vollaro, Stefano, Volta, Giorgio Dalla, Bianchetti, Angelo, Conti, Marta Zaffira, Cappuccio, Melania, Carbone, Pasqualina, Bellandi, Daniele, Abruzzi, Luciano, Bettoni, Luigi, Villani, Daniele, Raimondi, Maria Clara, Lanari, Alessia, Ciccone, Alfonso, Facchi, Emanuela, Di Fazio, Ignazio, Rozzini, Renzo, Boffelli, Stefano, Manzoni, Laura, Salvi, Giovanni Pietro, Cavaliere, Sabina, Belotti, Gloria, Avanzi, Stefano, Pasqualetti, Patrizio, Muscio, Cristina, Padovani, Alessandro, Frisoni, Giovanni B., Antelmi, Luigi, Galluzzi, Samantha, Pievani, Michela, Redolfi, Alberto, Tarallo, ANNA ROSA, Arora, Anupa, Bertocchi, Monica, Chitò, Eugenia, Moretti, Davide V., Giubbini, Raffaele, Rodella, Carlo, Camoni, Luca, Massetti, Valentina, Andreoli, Michela, Bellelli, Giuseppe, Fascendini, Sara, Mattioli, Flavia, Turco, Renato, Vezzadini, Giuliana, Raimondi, Vanessa, Mondini, Sara, Zanacchi, Elisa Carolina, Grigolo, Marta, Pezzini, Alessandra, Bilotti, Giacinta, Bigni, Barbara, Zavarise, Paola, Ngonga, Gael, Anzola, Gian Paolo, Turrone, Rosanna, Guizzetti, Gianluca, Zanetti, Marina, Boccardi, Marina, Altomare, Daniele, Ferrari, Clarissa, Festari, Cristina, Frisoni, Giovanni, Boccardi, M, Altomare, D, Ferrari, C, Festari, C, Guerra, U, Paghera, B, Pizzocaro, C, Lussignoli, G, Geroldi, C, Zanetti, O, Cotelli, M, Turla, M, Borroni, B, Rozzini, L, Mirabile, D, Defanti, C, Gennuso, M, Prelle, A, Gentile, S, Morandi, A, Vollaro, S, Volta, G, Bianchetti, A, Conti, M, Cappuccio, M, Carbone, P, Bellandi, D, Abruzzi, L, Bettoni, L, Villani, D, Raimondi, M, Lanari, A, Ciccone, A, Facchi, E, Di Fazio, I, Rozzini, R, Boffelli, S, Manzoni, L, Salvi, G, Cavaliere, S, Belotti, G, Avanzi, S, Pasqualetti, P, Muscio, C, Padovani, A, Frisoni, G, Antelmi, L, Galluzzi, S, Pievani, M, Redolfi, A, Tarallo, A, Arora, A, Bertocchi, M, Chito, E, Moretti, D, Giubbini, R, Rodella, C, Camoni, L, Massetti, V, Andreoli, M, Bellelli, G, Fascendini, S, Mattioli, F, Turco, R, Vezzadini, G, Raimondi, V, Mondini, S, Zanacchi, E, Grigolo, M, Pezzini, A, Bilotti, G, Bigni, B, Zavarise, P, Ngonga, G, Anzola, G, Turrone, R, Guizzetti, G, and Zanetti, M
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Male ,medicine.medical_specialty ,Positron-Emission Tomography/methods/standards ,Aged, Aged, 80 and over, Alzheimer Disease, Amyloid beta-Peptides, Cognitive Dysfunction, Female, Humans, Male, Positron-Emission Tomography, Predictive Value of Tests, Aniline Compounds, Ethylene Glycols ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,ddc:616.89 ,0302 clinical medicine ,Alzheimer Disease ,Predictive Value of Tests ,Medical imaging ,80 and over ,Medicine ,Humans ,Cognitive Dysfunction ,Cognitive decline ,Cognitive impairment ,Amyloid beta-Peptides/metabolism ,Aged ,Aged, 80 and over ,Amyloid beta-Peptides ,Aniline Compounds ,medicine.diagnostic_test ,business.industry ,Amyloidosis ,Alzheimer Disease/diagnosis/diagnostic imaging/metabolism ,Cognitive Dysfunction/diagnosis/diagnostic imaging/metabolism ,medicine.disease ,aged ,aged, 80 and over ,alzheimer disease ,amyloid beta-peptides ,cognitive dysfunction ,female ,humans ,male ,positron-emission tomography ,predictive value of tests ,aniline compounds ,ethylene glycols ,Surgery ,Female ,Positron-Emission Tomography ,Ethylene Glycols ,Neurology (clinical) ,Positron emission tomography ,Predictive value of tests ,Radiology ,Alzheimer's disease ,Abnormality ,business ,030217 neurology & neurosurgery - Abstract
IMPORTANCE Cerebral amyloidosis is a key abnormality in Alzheimer disease (AD) and can be detected in vivo with positron emission tomography (PET) ligands. Although amyloid PET has clearly demonstrated analytical validity, its clinical utility is debated. OBJECTIVE To evaluate the incremental diagnostic value of amyloid PET with florbetapir F 18 in addition to the routine clinical diagnostic assessment of patients evaluated for cognitive impairment. DESIGN, SETTING, AND PARTICIPANTS The Incremental Diagnostic Value ofAmyloid PET With [18F]-Florbetapir (INDIA-FBP) Study is a multicenter study involving 18 AD evaluation units from eastern Lombardy, Northern Italy, 228 consecutive adults with cognitive impairmentwere evaluated for AD and other causes of cognitive decline, with a prescan diagnostic confidence of AD between 15%and 85%. Participants underwent routine clinical and instrumental diagnostic assessment. A prescan diagnosiswas made, diagnostic confidencewas estimated, and drug treatmentwas provided. At the time of thisworkup, an amyloid PET/computed tomographic scanwas performed, and the resultwas communicated to physicians afterworkup completion. Physicianswere asked to review the diagnosis, diagnostic confidence, and treatment after the scan. The studywas conducted from August 5, 2013, to December 31, 2014. MAIN OUTCOMES AND MEASURES Primary outcomeswere prescan to postscan changes of diagnosis, diagnostic confidence, and treatment. RESULTS Of the 228 participants, 107 (46%) were male; mean (SD) age was 70.5 (7) years. Diagnostic change occurred in 46 patients (79%) having both a previous diagnosis of AD and an amyloid-negative scan (P < .001) and in 16 (53%) of those with non-AD diagnoses and an amyloid-positive scan (P < .001). Diagnostic confidence in AD diagnosis increased by 15.2%in amyloid-positive (P < .001; effect size Cohen d = 1.04) and decreased by 29.9%in amyloid-negative (P < .001; d = -1.19) scans. Acetylcholinesterase inhibitors and memantine hydrochloride were introduced in 61 (65.6%) patients with positive scan results who had not previously received those drugs, and the use of the drugs was discontinued in 6 (33.3%) patients with negative scan results who were receiving those drugs (P < .001). CONCLUSIONS AND RELEVANCE Amyloid PET in addition to routine assessment in patients with cognitive impairment has a significant effect on diagnosis, diagnostic confidence, and drug treatment. The effect on health outcomes, such as morbidity and mortality, remains to be assessed.
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- 2016
30. Integrating longitudinal information in hippocampal volume measurements for the early detection of Alzheimer's disease
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Giovanni B. Frisoni, Francesco Sensi, Luca Rei, Sandro Squarcia, Martina Bocchetta, Sabina Tangaro, Gianluca Gemme, Alberto Redolfi, Renata Longo, Marina Boccardi, Paolo Bosco, Nicola Amoroso, Flavio Nobili, Francesco Brun, Roberto Bellotti, Andrea Chincarini, Chincarini, Andrea, Sensi, Francesco, Rei, Luca, Gemme, Gianluca, Squarcia, Sandro, Longo, Renata, Brun, Francesco, Tangaro, Sabina, Bellotti, Roberto, Amoroso, Nicola, Bocchetta, Martina, Redolfi, Alberto, Bosco, Paolo, Boccardi, Marina, Frisoni, Giovanni B., and Nobili, Flavio
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Male ,medicine.medical_specialty ,Neurology ,Cognitive Neuroscience ,Early detection ,Context (language use) ,Disease ,Hippocampus ,030218 nuclear medicine & medical imaging ,Image analysis ,03 medical and health sciences ,ddc:616.89 ,Hippocampu ,0302 clinical medicine ,Neuroimaging ,Alzheimer Disease ,Image Interpretation, Computer-Assisted ,Alzheimer's disease ,Longitudinal measure ,MRI ,medicine ,Humans ,Dementia ,Aged ,Aged, 80 and over ,business.industry ,Middle Aged ,medicine.disease ,Magnetic Resonance Imaging ,Early Diagnosis ,Cohort ,Hippocampal volume ,Female ,Image analysi ,Psychology ,Nuclear medicine ,business ,Neuroscience ,Algorithms ,030217 neurology & neurosurgery - Abstract
Background Structural MRI measures for monitoring Alzheimer's Disease (AD) progression are becoming instrumental in the clinical practice, and more so in the context of longitudinal studies. This investigation addresses the impact of four image analysis approaches on the longitudinal performance of the hippocampal volume. Methods We present a hippocampal segmentation algorithm and validate it on a gold-standard manual tracing database. We segmented 460 subjects from ADNI, each subject having been scanned twice at baseline, 12-month and 24 month follow-up scan (1.5 T, T1 MRI). We used the bilateral hippocampal volume v and its variation, measured as the annualized volume change Λ = δv / year ( mm 3 / y ). Four processing approaches with different complexity are compared to maximize the longitudinal information, and they are tested for cohort discrimination ability. Reference cohorts are Controls vs. Alzheimer's Disease (CTRL/AD) and CTRL vs. Mild Cognitive Impairment who subsequently progressed to AD dementia (CTRL/MCI -co ). We discuss the conditions on v and the added value of Λ in discriminating subjects. Results The age-corrected bilateral annualized atrophy rate (%/year) were: − 1.6 (0.6) for CTRL, − 2.2 (1.0) for MCI- nc , − 3.2 (1.2) for MCI- co and − 4.0 (1.5) for AD. Combined ( v , Λ) discrimination ability gave an Area under the ROC curve ( auc ) = 0.93 for CTRL vs AD and auc = 0.88 for CTRL vs MCI- co . Conclusions Longitudinal volume measurements can provide meaningful clinical insight and added value with respect to the baseline provided the analysis procedure embeds the longitudinal information.
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- 2016
31. E-infrastructure, segmentation du cortex, environnement de contrôle qualité : un fil rouge pour les neuroscientifiques
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Redolfi, Alberto, Laboratoire de Neuroimagerie Assistée par Ordinateur (LNAO), Commissariat à l'énergie atomique et aux énergies alternatives (CEA), IRCCS San Giovanni, Laboratory of Epidemiology and Neuroimaging, Brescia, Université Paris Saclay (COmUE), and Jean-François Mangin
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Épaisseur corticale ,Machine learning ,Maladie d'Alzheimer ,[INFO.INFO-IM]Computer Science [cs]/Medical Imaging ,Quality control ,E-infrastructure ,Apprentissage automatique ,Maillage 3D ,Contrôle de qualité ,3D mesh ,Alzheimer’s disease ,Cortical thickness - Abstract
Neuroscience entered the “big data” era. Individual desktop computers are no longer suitable to analyse terabyte, and potentially petabytes, of brain images. To fill in the gap between data acquisition and information extraction, e-infrastructures are being developing in North America, Canada, and Europe. E-infrastructures allow neuroscientists to conduct neuroimaging experiments using dedicated computational resources such as grids, high-performance computing (HPC) systems, and public/private clouds. Today, e-infrastructures are the most advanced and the best equipped systems to support the creation of advanced multimodal and multiscale models of the AD brain (chapter 2) or to validate promising imaging biomarkers with sophisticated pipelines, as for cortical thickness, (chapter 3). Indeed, imaging analyses such as those described in chapter 2 and 3 expand the amount of post-processed data per single study. In order to cope with the huge amount of post-processing data generated via e-infrastructures, an automatic quality control environment (QCE) of the cortical delineation algorithms is proposed (chapter 4). QCE is a machine learning (ML) classifier with a supervised learning approach based on Random Forest (RF) and Support Vector Machine (SVM) estimators. Given its scalability and efficacy, QCE fits well in the e-infrastructures under development, where this kind of sanity check service is still lacking. QCE represents a unique opportunity to process data more easily and quickly, allowing neuroscientists to spend their valuable time do data analysis instead of using their resources in manual quality control work.; Les neurosciences sont entrées dans l'ère des « big data ». Les ordinateurs de bureau individuels ne sont plus adaptés à l'analyse des téraoctets et potentiellement des pétaoctets qu'impliquent les images cérébrales. Pour combler le gouffre qui existe entre la taille des données et les possibilités standard d'extraction des informations, on développe actuellement des infrastructures virtuelles en Amérique du Nord, au Canada et également en Europe. Ces infrastructures dématérialisées permettent d'effectuer des expériences en imagerie médicale à l'aide de ressources informatiques dédiées telles que des grilles, des systèmes de calcul haute performance (HPC) et des clouds publics ou privés. Les infrastructures virtuelles sont aujourd'hui les systèmes les plus avancés et les mieux équipés pour soutenir la création de modèles multimodaux et multi-échelles avancés du cerveau atteint par la maladie d'Alzheimer (chapitre 2) ou pour valider des biomarqueurs d'imagerie prometteurs, tels que l'épaisseur corticale, grâce à des pipelines sophistiqués (chapitre 3). En effet, les analyses d'imagerie, telles que celles décrites dans les chapitres 2 et 3, multiplient de manière exponentielle la quantité de données post-traitées qui atteignent, à la fin, des téraoctets de résultats pour une seule étude. Afin de faire face à l'énorme quantité de données de post-traitement générées par les infrastructures électroniques, un environnement de contrôle qualité automatique (ECQ) des maillages de la surface corticale (chapitre 4) a été proposé. L'ECQ est un classifieur par apprentissage automatique (AA) avec une approche par apprentissage supervisé basée sur les forêts d'arbres décisionnels (RF) et des estimations par séparateurs à vaste marge (SVM). Compte tenu de son évolutivité et de son efficacité, l'ECQ s'inscrit bien dans les infrastructures électroniques en cours de développement, où ce type de service de vérification élémentaire manque toujours. L'ECQ représente une occasion unique de traiter les données plus facilement et plus rapidement, ce qui permettra aux neuroscientifiques de passer leur temps précieux à effectuer des analyses de données au lieu de le dépenser dans des tâches manuelles et laborieuses de contrôle qualité.
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- 2017
32. The impact of automated hippocampal volumetry on diagnostic confidence in patients with suspected Alzheimer's disease: An EADC study
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Bosco, Paolo, Redolfi, Alberto, Bocchetta, Martina, Engelborghs, Sebastiaan, Ferrari, Clarissa, Mega, Anna, Galluzzi, Samantha, Austin, Mark, Chincarini, Andrea, Collins, D. Louis, Duchesne, Simon, Marechal, Benedicte, Roche, Alexis, Sensi, Francesco, Wolz, Robin, Alegret, Montserrat, Assal, Frederic, Balasa, Mircea, Bastin, Christine, Bougea, Anastasia, Emek-Savas, Derya Durusu, Grimmer, Timo, Grosu, Galina, Kramberger, Milica G., Lawlor, Brian, Stojmenovic, Gorana Mandic, Marinescu, Mihaela, Mecocci, Patrizia, Molinuevo, Jose Luis, Morais, Ricardo, Niemantsverdriet, Ellis, Nobili, Flavio, Ntovas, Konstantinos, O'Dwyer, Sarah, Paraskevas, George P., Pelini, Luca, Picco, Agnese, Salmon, Eric, Santana, Isabel, Sotolongo-Grau, Oscar, Spiru, Luiza, Stefanova, Elka, Popovic, Katarina Surlan, Tsolaki, Magda, Yener, Gorsev G., Zekry, Dina, and Frisoni, Giovanni B.
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Epidemiology ,Health Policy ,Alzheimer's disease ,Biomarkers ,Diagnostic confidence of AD ,Hippocampal volume ,Medial temporal lobe atrophy ,Developmental Neuroscience ,Geriatrics and Gerontology ,Neurology (clinical) ,Cellular and Molecular Neuroscience ,Psychiatry and Mental Health ,Human medicine - Abstract
Introduction: Hippocampal volume is a core biomarker of Alzheimer's disease (AD). However, its contribution over the standard diagnostic workup is unclear. Methods: Three hundred fifty-six patients, under clinical evaluation for cognitive impairment, with suspected AD and Mini-Mental State Examination >= 20, were recruited across 17 European memory clinics. After the traditional diagnostic workup, diagnostic confidence of AD pathology (DCAD) was estimated by the physicians in charge. The latter were provided with the results of automated hippocampal volumetry in standardized format and DCAD was reassessed. Results: An increment of one interquartile range in hippocampal volume was associated with a mean change of DCAD of 28.0% (95% credible interval: [211.5, 25.0]). Automated hippocampal volumetry showed a statistically significant impact on DCAD beyond the contributions of neuropsychology, 18 F-fluorodeoxyglucose positron emission tomography/single-photon emission computed tomography, and cerebrospinal fluid markers (28.5, CrI: [211.5, 25.6]; 214.1, CrI: [219.3, 28.8]; 210.6, CrI: [214.6, 26.1], respectively). Discussion: There is a measurable effect of hippocampal volume on DCAD even when used on top of the traditional diagnostic workup. (C) 2017 the Alzheimer's Association. Published by Elsevier Inc. All rights reserved.
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- 2017
33. Neuroimaging Feature Terminology: A Controlled Terminology for the Annotation of Brain Imaging Features
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Martin Hofmann-Apitius, Giovanni B. Frisoni, Shashank Khanna, Henri A. Vrooman, Alberto Redolfi, Erfan Younesi, Anandhi Iyappan, Radiology & Nuclear Medicine, and Publica
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0301 basic medicine ,Computer science ,brain ,Interoperability ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Context (language use) ,Bioinformatics ,computer.software_genre ,Domain (software engineering) ,Terminology ,03 medical and health sciences ,Annotation ,ddc:616.89 ,0302 clinical medicine ,Neuroimaging ,Alzheimer Disease ,Terminology as Topic ,terminology ,Image Processing, Computer-Assisted ,Humans ,Cognitive Dysfunction ,Natural Language Processing ,neuroimaging ,business.industry ,General Neuroscience ,Computational Biology ,General Medicine ,Databases, Bibliographic ,Psychiatry and Mental health ,Clinical Psychology ,030104 developmental biology ,annotation ,Feature (computer vision) ,Artificial intelligence ,Geriatrics and Gerontology ,business ,Alzheimer’s disease ,computer ,Algorithms ,030217 neurology & neurosurgery ,Controlled Terminology ,Natural language processing ,Research Article - Abstract
Ontologies and terminologies are used for interoperability of knowledge and data in a standard manner among interdisciplinary research groups. Existing imaging ontologies capture general aspects of the imaging domain as a whole such as methodological concepts or calibrations of imaging instruments. However, none of the existing ontologies covers the diagnostic features measured by imaging technologies in the context of neurodegenerative diseases. Therefore, the Neuro-Imaging Feature Terminology (NIFT) was developed to organize the knowledge domain of measured brain features in association with neurodegenerative diseases by imaging technologies. The purpose is to identify quantitative imaging biomarkers that can be extracted from multi-modal brain imaging data. This terminology attempts to cover measured features and parameters in brain scans relevant to disease progression. In this paper, we demonstrate the systematic retrieval of measured indices from literature and ho w the extracted knowledge can be further used for disease modeling that integrates neuroimaging features with molecular processes.
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- 2017
34. Grid infrastructures for computational neuroscience: the neuGRID example
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Giovanni B. Frisoni, Frederik Barkhof, Alberto Redolfi, Christian Spenger, David Manset, Richard McClatchey, Ashiq Anjum, Chiara Barattieri Di San Pietro, Yannik Legré, Lars-Olof Wahlund, Alex Zijdenbos, Redolfi, A, Mcclatchey, R, Anjum, A, Zijdenbos, A, Manset, D, Barkhof, F, Spenger, C, Legré, Y, Wahlund, L, BARATTIERI DI SAN PIETRO, C, and B Frisoni, G
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Parallel computing ,ING-INF/06 - BIOINGEGNERIA ELETTRONICA E INFORMATICA ,Computer science ,computer.software_genre ,neuGRID ,Alzheimer’s disease, Grid architecture, medical imaging neuGRID, parallel computing, remote experiment ,Neuroimaging ,MED/26 - NEUROLOGIA ,Multi-core processor ,Computational neuroscience ,Scope (project management) ,Alzheimer's disease ,Grid architecture ,Medical imaging ,Remote experiment ,Grid ,Supercomputer ,Data science ,Neurology ,Grid computing ,Information and Communications Technology ,Neurology (clinical) ,M-PSI/01 - PSICOLOGIA GENERALE ,Neuroscience ,computer - Abstract
Neuroscience is increasingly making use of statistical and mathematical tools to extract information from images of biological tissues. Computational neuroimaging tools require substantial computational resources and the increasing availability of large image datasets will further enhance this need. Many efforts have been directed towards creating brain image repositories including the recent US Alzheimer Disease Neuroimaging Initiative. Multisite-distributed computing infrastructures have been launched with the goal of fostering shared resources and facilitating data analysis in the study of neurodegenerative diseases. Currently, some Grid- and non-Grid-based projects are aiming to establish distributed e-infrastructures, interconnecting compatible imaging datasets and to supply neuroscientists with the most advanced information and communication technologies tools to study markers of Alzheimer's and other brain diseases, but they have so far failed to make a difference in the larger neuroscience community. NeuGRID is an Europeon comission-funded effort arising from the needs of the Alzheimer's disease imaging community, which will allow the collection and archiving of large amounts of imaging data coupled with Grid-based algorithms and sufficiently powered computational resources. The major benefit will be the faster discovery of new disease markers that will be valuable for earlier diagnosis and development of innovative drugs. The initial setup of neuGRID will feature three nodes equipped with supercomputer capabilities and resources of more than 300 processor cores, 300 GB of RAM memory and approximately 20 TB of physical space. The scope of this article is highlights the new perspectives and potential for the study of the neurodegenerative disorders using the emerging Grid technology. © 2009 Future Medicine Ltd.
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- 2009
35. Medical Informatics Platform (MIP): A Pilot Study Across Clinical Italian Cohorts.
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Redolfi, Alberto, De Francesco, Silvia, Palesi, Fulvia, Galluzzi, Samantha, Muscio, Cristina, Castellazzi, Gloria, Tiraboschi, Pietro, Savini, Giovanni, Nigri, Anna, Bottini, Gabriella, Bruzzone, Maria Grazia, Ramusino, Matteo Cotta, Ferraro, Stefania, Gandini Wheeler-Kingshott, Claudia A. M., Tagliavini, Fabrizio, Frisoni, Giovanni B., Ryvlin, Philippe, Demonet, Jean-François, Kherif, Ferath, and Cappa, Stefano F.
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MEDICAL informatics ,ALZHEIMER'S disease ,MILD cognitive impairment ,PILOT projects ,INDIVIDUALIZED medicine ,BIOLOGICAL models - Abstract
Introduction: With the shift of research focus to personalized medicine in Alzheimer's Dementia (AD), there is an urgent need for tools that are capable of quantifying a patient's risk using diagnostic biomarkers. The Medical Informatics Platform (MIP) is a distributed e-infrastructure federating large amounts of data coupled with machine-learning (ML) algorithms and statistical models to define the biological signature of the disease. The present study assessed (i) the accuracy of two ML algorithms, i.e., supervised Gradient Boosting (GB) and semi-unsupervised 3C strategy (Categorize, Cluster, Classify—CCC) implemented in the MIP and (ii) their contribution over the standard diagnostic workup. Methods: We examined individuals coming from the MIP installed across 3 Italian memory clinics, including subjects with Normal Cognition (CN, n = 432), Mild Cognitive Impairment (MCI, n = 456), and AD (n = 451). The GB classifier was applied to best discriminate the three diagnostic classes in 1,339 subjects, and the CCC strategy was used to refine the classical disease categories. Four dementia experts provided their diagnostic confidence (DC) of MCI conversion on an independent cohort of 38 patients. DC was based on clinical, neuropsychological, CSF, and structural MRI information and again with addition of the outcome from the MIP tools. Results: The GB algorithm provided a classification accuracy of 85% in a nested 10-fold cross-validation for CN vs. MCI vs. AD discrimination. Accuracy increased to 95% in the holdout validation, with the omission of each Italian clinical cohort out in turn. CCC identified five homogeneous clusters of subjects and 36 biomarkers that represented the disease fingerprint. In the DC assessment, CCC defined six clusters in the MCI population used to train the algorithm and 29 biomarkers to improve patients staging. GB and CCC showed a significant impact, evaluated as +5.99% of increment on physicians' DC. The influence of MIP on DC was rated from "slight" to "significant" in 80% of the cases. Discussion: GB provided fair results in classification of CN, MCI, and AD. CCC identified homogeneous and promising classes of subjects via its semi-unsupervised approach. We measured the effect of the MIP on the physician's DC. Our results pave the way for the establishment of a new paradigm for ML discrimination of patients who will or will not convert to AD, a clinical priority for neurology. [ABSTRACT FROM AUTHOR]
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- 2020
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36. The Italian Alzheimer's Disease Neuroimaging Initiative (I-ADNI): Validation of Structural MR Imaging
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Annalisa Baglieri, Carlo Cosimo Quattrocchi, Federica Scrascia, Claudio Babiloni, Maria Grazia Bruzzone, Luisa Chiapparini, Enrica Cavedo, Domenico Aquino, Giovanni B. Frisoni, Gioacchino Tedeschi, Patrizia Chiarati, Marcella Alesiani, Andrea Soricelli, Elena Sinforiani, Patrizia Montella, Andrea Cherubini, Milena Cobelli, Filippo Carducci, Silvia Marino, Alberto Redolfi, Fabrizio Vernieri, Roberta Lizio, Daniele Corbo, Francesco Angeloni, Simona De Salvo, Elena Salvatore, Stefano Bastianello, Umberto Sabatini, Cavedo, E, Redolfi, A, Angeloni, F, Babiloni, C, Lizio, R, Chiapparini, L, Bruzzone, Mg, Aquino, D, Sabatini, U, Alesiani, M, Cherubini, A, Salvatore, E, Soricelli, A, Vernieri, F, Scrascia, F, Sinforiani, E, Chiarati, P, Bastianello, S, Montella, P, Corbo, D, Tedeschi, Gioacchino, Marino, S, Baglieri, A, DE SALVO, S, Carducci, F, Quattrocchi, Cc, Cobelli, M, Frisoni, G. B., Salvatore, Elena, Tedeschi, G, and De Salvo, S
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Male ,Imaging biomarker ,hippocampus ,intracranial volume ,standardized operating procedures ,Neuropsychological Tests ,Structural magnetic resonance imaging ,ddc:616.89 ,mild cognitive impairment ,Neuroimaging ,Alzheimer Disease ,Intracranial volume ,mental disorders ,Image Processing, Computer-Assisted ,medicine ,Humans ,Analysis of Variance ,medicine.diagnostic_test ,business.industry ,General Neuroscience ,alzheimer's disease ,magnetic resonance imaging ,Brain ,Reproducibility of Results ,Magnetic resonance imaging ,General Medicine ,Magnetic Resonance Imaging ,Mr imaging ,Psychiatry and Mental health ,Clinical Psychology ,Italy ,Female ,Geriatrics and Gerontology ,business ,Neuroscience ,Alzheimer's Disease Neuroimaging Initiative - Abstract
Background: The North American Alzheimer's Disease Neuroimaging Initiative (NA-ADNI) was the first program to develop standardized procedures for Alzheimer's disease (AD) imaging biomarker collection. Objective: We describe the validation of acquisition and processing of structural magnetic resonance imaging (MRI) in different Italian academic AD clinics following NA-ADNI procedures. Methods: 373 patients with subjective memory impairment (n = 12), mild cognitive impairment (n = 92), Alzheimer's dementia (n = 253), and frontotemporal dementia (n = 16) were enrolled in 9 Italian centers. Also included were 22 cognitively healthy elderly controls. MRI site qualification and MP-RAGE quality assessment was applied following the NA-ADNI procedures. Indices of validity were: (i) AN-ADNI phantom's signal-to-noise and contrast-to-noise ratio, (ii) proportion of images passing quality control, (iii) comparability of automated intracranial volume (ICV) estimates across scanners, and (iv) known-group validity of manual hippocampal volumetry. Results: Results on Phantom and Volunteers scans showed that I-ADNI acquisition parameters were comparable with those one of the ranked-A ADNI scans. Eighty-seven percent of I-ADNI MPRAGE images were ranked of high quality in comparison of 69% of NA-ADNI. ICV showed homogeneous variances across scanners except for Siemens scanners at 3.0 Tesla (p = 0.039). A significant difference in hippocampal volume was found between AD and controls on 1.5 Tesla scans (p < 0.001), confirming known group validity test. Conclusion: This study has provided standardization of MRI acquisition and imaging marker collection across different Italian clinical units and equipment. This is a mandatory step to the implementation of imaging biomarkers in clinical routine for early and differential diagnosis.
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- 2014
37. Impact of Biomarkers on Diagnostic Confidence in Clinical Assessment of Patients with Suspected Alzheimer's Disease and High Diagnostic Uncertainty
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Morais, R, EMEK SAVAŞ, DERYA DURUSU, Frisoni, GB, Zekry, D, YENER, GÖRSEV, Tsolaki, M, Popovic, KS, Stefanova, E, Spiru, L, Sotolongo Grau, O, Santana, I, Salmon, A, Picco, A, Pelini, L, Paraskevas, GP, Odwyer, S, Ntovas, K, Nobili, F, Niemantsverdriet, E, Molinuevo, JL, Mecocci, P, Marinescu, M, Mandic Stojmenovic, G, Lawlor, B, Kramberger, MG, Grosu, G, Grimmer, T, Gold, Gabriel, Giannakopoulos, Panteleimon, Engelborghs, S, Bougea, A, Bastin, C, Balasa, M, Assal, F, Galluzzi, S, Mega, A, Ferrari, C, Bocchetta, M, Redolfi, A, Bosco, P, Clinical sciences, and Neurology
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Medicine(all) ,biomarker ,Alzheimer's disease - Published
- 2016
38. Mild cognitive impairment with suspected nonamyloid pathology (SNAP): Prediction of progression
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Caroli, Anna, Prestia, Annapaola, Galluzzi, Samantha, Ferrari, Clarissa, van der Flier, Wiesje M, Ossenkoppele, Rik, Van Berckel, Bart, Barkhof, Frederik, Teunissen, Charlotte, Wall, Anders E, Carter, Stephen F, Schöll, Michael, Choo, Il Han, Grimmer, Timo, Redolfi, Alberto, Nordberg, Agneta, Scheltens, Philip, Drzezga, Alexander, Frisoni, Giovanni B, and Alzheimer's Disease Neuroimaging Initiative
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Male ,Amyloid ,Aging ,Clinical Sciences ,Neurodegenerative ,Alzheimer's Disease ,Databases ,Predictive Value of Tests ,80 and over ,Acquired Cognitive Impairment ,Humans ,2.1 Biological and endogenous factors ,Cognitive Dysfunction ,Aetiology ,Factual ,Aged ,Plaque ,Neurology & Neurosurgery ,Alzheimer's Disease Neuroimaging Initiative ,Neurosciences ,Alzheimer's Disease including Alzheimer's Disease Related Dementias (AD/ADRD) ,Neurodegenerative Diseases ,Middle Aged ,Brain Disorders ,Neurological ,Disease Progression ,Female ,Dementia ,Cognitive Sciences ,Follow-Up Studies - Abstract
ObjectivesThe aim of this study was to investigate predictors of progressive cognitive deterioration in patients with suspected non-Alzheimer disease pathology (SNAP) and mild cognitive impairment (MCI).MethodsWe measured markers of amyloid pathology (CSF β-amyloid 42) and neurodegeneration (hippocampal volume on MRI and cortical metabolism on [(18)F]-fluorodeoxyglucose-PET) in 201 patients with MCI clinically followed for up to 6 years to detect progressive cognitive deterioration. We categorized patients with MCI as A+/A- and N+/N- based on presence/absence of amyloid pathology and neurodegeneration. SNAPs were A-N+ cases.ResultsThe proportion of progressors was 11% (8/41), 34% (14/41), 56% (19/34), and 71% (60/85) in A-N-, A+N-, SNAP, and A+N+, respectively; the proportion of APOE ε4 carriers was 29%, 70%, 31%, and 71%, respectively, with the SNAP group featuring a significantly different proportion than both A+N- and A+N+ groups (p ≤ 0.005). Hypometabolism in SNAP patients was comparable to A+N+ patients (p = 0.154), while hippocampal atrophy was more severe in SNAP patients (p = 0.002). Compared with A-N-, SNAP and A+N+ patients had significant risk of progressive cognitive deterioration (hazard ratio = 2.7 and 3.8, p = 0.016 and p < 0.001), while A+N- patients did not (hazard ratio = 1.13, p = 0.771). In A+N- and A+N+ groups, none of the biomarkers predicted time to progression. In the SNAP group, lower time to progression was correlated with greater hypometabolism (r = 0.42, p = 0.073).ConclusionsOur findings support the notion that patients with SNAP MCI feature a specific risk progression profile.
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- 2015
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39. Resting state cortical electroencephalographic rhythms are related to gray matter volume in subjects with mild cognitive impairment and Alzheimer's disease
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Carlo Cosimo Quattrocchi, Francesca Ursini, Fabrizio Esposito, Fabrizio Vernieri, Roberta Lizio, Raffaele Ferri, Torleif Jan Pedersen, Claudio Babiloni, Gioacchino Tedeschi, Giovanni B. Frisoni, Silvia Marino, Alessandro Bozzao, Andrea Soricelli, Giancarlo Rossi-Fedele, Federica Scrascia, Fabrizio Vecchio, Annalisa Baglieri, Guizzaro A, Paolo Maria Rossini, Filippo Carducci, Alberto Redolfi, Carla Buttinelli, Hans Goran Hardemark, Enrica Cavedo, Franco Giubilei, Silvia Bernardini, Patrizia Montella, Babiloni, C, Carducci, F, Lizio, R, Vecchio, F, Baglieri, A, Bernardini, S, Cavedo, E, Bozzao, A, Buttinelli, C, Esposito, F, Giubilei, F, Guizzaro, A, Marino, S, Montella, P, Quattrocchi, Cc, Redolfi, A, Soricelli, A, Tedeschi, Gioacchino, Ferri, R, Rossi Fedele, G, Ursini, F, Scrascia, F, Vernieri, F, Pedersen, Tj, Hardemark, Hg, Rossini, Pm, and Frisoni, G. B.
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Male ,medicine.medical_specialty ,low resolution brain electromagnetic tomography (loreta) ,alzheimer ,Rest ,Electroencephalography ,Audiology ,rhythms ,amnesic mild cognitive impairment (mci) ,resting state electroencephalography (eeg) ,magnetic resonance imaging (mri) ,alzheimer's disease neuroimaging initiative (adni) ,gray matter volume ,Atrophy ,Rhythm ,Neuroimaging ,Alzheimer Disease ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Cognitive Dysfunction ,Research Articles ,Aged ,Radiological and Ultrasound Technology ,medicine.diagnostic_test ,Resting state fMRI ,Brain ,Magnetic resonance imaging ,Cognition ,medicine.disease ,Magnetic Resonance Imaging ,Settore MED/26 - NEUROLOGIA ,Neurology ,Nerve Degeneration ,Female ,Neurology (clinical) ,Anatomy ,Alzheimer's disease ,Psychology ,Neuroscience - Abstract
Cortical gray matter volume and resting state cortical electroencephalographic rhythms are typically abnormal in subjects with amnesic mild cognitive impairment (MCI) and Alzheimer's disease (AD). Here we tested the hypothesis that in amnesic MCI and AD subjects, abnormalities of EEG rhythms are a functional reflection of cortical atrophy across the disease. Eyes‐closed resting state EEG data were recorded in 57 healthy elderly (Nold), 102 amnesic MCI, and 108 AD patients. Cortical gray matter volume was indexed by magnetic resonance imaging recorded in the MCI and AD subjects according to Alzheimer's disease neuroimaging initiative project (http://www.adni-info.org/). EEG rhythms of interest were delta (2–4 Hz), theta (4–8 Hz), alpha1 (8–10.5 Hz), alpha2 (10.5–13 Hz), beta1 (13–20 Hz), beta2 (20–30 Hz), and gamma (30–40 Hz). These rhythms were indexed by LORETA. Compared with the Nold, the MCI showed a decrease in amplitude of alpha 1 sources. With respect to the Nold and MCI, the AD showed an amplitude increase of delta sources, along with a strong amplitude reduction of alpha 1 sources. In the MCI and AD subjects as a whole group, the lower the cortical gray matter volume, the higher the delta sources, the lower the alpha 1 sources. The better the score to cognitive tests the higher the gray matter volume, the lower the pathological delta sources, and the higher the alpha sources. These results suggest that in amnesic MCI and AD subjects, abnormalities of resting state cortical EEG rhythms are not epiphenomena but are strictly related to neurodegeneration (atrophy of cortical gray matter) and cognition. Hum Brain Mapp, 2013. © 2012 Wiley Periodicals, Inc.
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- 2012
40. Resting state cortical electroencephalographic rhythms and white matter vascular lesions in subjects with Alzheimer's disease: an Italian multicenter study
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Enrica Cavedo, Gioacchino Tedeschi, Ciro Mundi, Carlo Cosimo Quattrocchi, Silvia Pugliese, Laura Parisi, Paolo Maria Rossini, Alessandro Bozzao, Alberto Redolfi, Giovanni B. Frisoni, Antonio Ivano Triggiani, Claudio Babiloni, Placido Bramanti, Hans-Goran Hardemark, Franco Giubilei, Francesco Orzi, Raffaele Ferri, Michelangelo Ferrara, Silvia Marino, Filomena I.I. Cosentino, Gianluca Gerardi, Patrizia Montella, Fabrizio Vernieri, Gianpaolo Grilli, Jan Torleif Pedersen, Fabrizio Vecchio, Annalisa Baglieri, Guizzaro A, Elena Salvatore, Filippo Carducci, Andrea Soricelli, Fabrizio Esposito, Roberta Lizio, Babiloni, C, Lizio, R, Carducci, F, Vecchio, F, Redolfi, A, Marino, S, Tedeschi, G, Montella, P, Guizzaro, A, Esposito, Fabrizio, Bozzao, A, Giubilei, F, Orzi, F, Quattrocchi, Cc, Soricelli, A, Salvatore, Elena, Baglieri, A, Bramanti, P, Cavedo, E, Ferri, R, Cosentino, F, Ferrara, M, Mundi, C, Grilli, G, Pugliese, S, Gerardi, G, Parisi, L, Vernieri, F, Triggiani, Ai, Pedersen, Jt, Hårdemark, Hg, Rossini, Pm, Frisoni, G. B., Tedeschi, Gioacchino, Esposito, F, Salvatore, E, Boccardi, M, and Frisoni, Gb
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Male ,medicine.medical_specialty ,Pathology ,amnesic mild c cognitive impairment ,Alpha (ethology) ,Electroencephalography ,Audiology ,Neuropsychological Tests ,Nerve Fibers, Myelinated ,White matter ,low resolution brain electromagnetic tomography ,mild cognitive impairment ,pathology/physiopathology ,Alzheimer Disease ,mental disorders ,medicine ,Humans ,Cognitive Dysfunction ,resting state ,alzheimer's disease neuroimaging initiative ,Aged ,Cerebral Cortex ,Resting state fMRI ,medicine.diagnostic_test ,General Neuroscience ,nerve fibers ,pathology/physiology ,white matter vascular lesion ,Magnetic resonance imaging ,General Medicine ,myelinated ,electroencephalographic rhythms ,medicine.disease ,Magnetic Resonance Imaging ,male ,alzheimer's disease ,magnetic resonance imaging ,humans ,aged ,cerebral cortex ,electroencephalography ,female ,alzheimer disease ,neuropsychological tests ,italy ,Settore MED/26 - NEUROLOGIA ,Psychiatry and Mental health ,Clinical Psychology ,Alzheimer's disease, Alzheimer's disease neuroimaging initiative, amnesic mild c cognitive impairment, electroencephalographic rhythms, low resolution brain electromagnetic tomography, magnetic resonance imaging, resting state, white matter vascular lesion, Aged, Alzheimer Disease, Cerebral Cortex, Electroencephalography, Female, Humans, Italy, Magnetic Resonance Imaging, Male, Mild Cognitive Impairment, Nerve Fibers, Myelinated, Neuropsychological Tests, Psychiatry and Mental Health, Geriatrics and Gerontology, Clinical Psychology ,medicine.anatomical_structure ,Italy ,Cerebral cortex ,Female ,Geriatrics and Gerontology ,Alzheimer's disease ,Psychology ,Alzheimer's Disease Neuroimaging Initiative - Abstract
Resting state electroencephalographic (EEG) rhythms do not deteriorate with the increase of white matter vascular lesion in amnesic mild cognitive impairment (MCI) subjects [1], although white matter is impaired along Alzheimer's disease (AD). Here we tested whether this is true even in AD subjects. Closed-eye resting state EEG data were recorded in 40 healthy elderly (Nold), 96 amnesic MCI, and 83 AD subjects. White matter vascular lesions were indexed by magnetic resonance imaging recorded in the MCI and AD subjects (about 42% of cases following ADNI standards). The MCI subjects were divided into two sub-groups based on the median of the white matter lesion, namely MCI+ (people with highest vascular load; n = 48) and MCI- (people with lowest vascular load; n = 48). The same was true for the AD subjects (AD+, n = 42; AD-, n = 41). EEG rhythms of interest were delta (2-4 Hz), theta (4-8 Hz), alpha1 (8-10.5 Hz), alpha2 (10.5-13 Hz), beta1 (13-20 Hz), beta2 (20-30 Hz), and gamma (30-40 Hz). LORETA software estimated cortical EEG sources. When compared to Nold group, MCI and AD groups showed well known abnormalities of delta and alpha sources. Furthermore, amplitude of occipital, temporal, and limbic alpha 1 sources were higher in MCI+ than MCI- group. As a novelty, amplitude of occipital delta sources was lower in AD+ than AD- group. Furthermore, central, parietal, occipital, temporal, and limbic alpha sources were higher in amplitude in AD+ than AD- group. Amplitude of these sources was correlated to global cognitive status (i.e., Mini Mental State Evaluation score). These results suggest that in amnesic MCI and AD subjects, resting state posterior delta and alpha EEG rhythms do not deteriorate with the increase of white-matter vascular lesion. These rhythms might be more sensitive to AD neurodegenerative processes and cognitive status rather than to concomitant lesions to white matter.
- Published
- 2011
41. The SIENA/FSL whole brain atrophy algorithm is no more reproducible at 3 T than 1.5 T for Alzheimer's disease
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Frederik Barkhof, Keith S. Cover, Giovanni B. Frisoni, Bob W. van Dijk, Veronica Popescu, Ronald A. van Schijndel, Dirk L. Knol, Alberto Redolfi, Hugo Vrenken, Neuroscience Campus Amsterdam - Neurodegeneration, Neuroscience Campus Amsterdam - Brain Imaging Technology, Physics and medical technology, Radiology and nuclear medicine, Epidemiology and Data Science, NCA - neurodegeneration, and NCA - Brain imaging technology
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Male ,Percentile ,Pathology ,medicine.medical_specialty ,Neuroscience (miscellaneous) ,Atrophy ,Neuroimaging ,Alzheimer Disease ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Reproducibility ,medicine.diagnostic_test ,business.industry ,Multiple sclerosis ,Brain ,Reproducibility of Results ,Magnetic resonance imaging ,medicine.disease ,Magnetic Resonance Imaging ,Psychiatry and Mental health ,Brain size ,Alzheimer's disease ,Nuclear medicine ,business ,Psychology ,Algorithms - Abstract
The back-to-back (BTB) acquisition of MP-RAGE MRI scans of the Alzheimer's Disease Neuroimaging Initiative (ADNI1) provides an excellent data set with which to check the reproducibility of brain atrophy measures. As part of ADNI1, 131 subjects received BTB MP-RAGEs at multiple time points and two field strengths of 3. T and 1.5. T. As a result, high quality data from 200 subject-visit-pairs was available to compare the reproducibility of brain atrophies measured with FSL/SIENA over 12 to 18 month intervals at both 3. T and 1.5. T. Although several publications have reported on the differing performance of brain atrophy measures at 3. T and 1.5. T, no formal comparison of reproducibility has been published to date. Another goal was to check whether tuning SIENA options, including -B, -S, -R and the fractional intensity threshold ( f) had a significant impact on the reproducibility. The BTB reproducibility for SIENA was quantified by the 50th percentile of the absolute value of the difference in the percentage brain volume change (PBVC) for the BTB MP-RAGES. At both 3. T and 1.5. T the SIENA option combination of "-B f=0.2", which is different from the default values of f=0.5, yielded the best reproducibility as measured by the 50th percentile yielding 0.28 (0.23-0.39)% and 0.26 (0.20-0.32)%. These results demonstrated that in general 3. T had no advantage over 1.5. T for the whole brain atrophy measure - at least for SIENA. While 3. T MRI is superior to 1.5. T for many types of measurements, and thus worth the additional cost, brain atrophy measurement does not seem to be one of them. © 2014 Elsevier Ireland Ltd.
- Published
- 2014
42. Delphi definition of the EADC-ADNI Harmonized Protocol for hippocampal segmentation on magnetic resonance
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Marina Boccardi, Leyla deToledo-Morrell, Daniele Tolomeo, Charles DeCarli, Lei Wang, Nicolas Robitaille, Gabriele Corbetta, Patrizio Pasqualetti, Rossana Ganzola, Craig Watson, Michael J. Firbank, Wouter J.P. Henneman, Nikolai Malykhin, Clifford R. Jack, Giovanni B. Frisoni, Jens C. Pruessner, Hilkka Soininen, Liana G. Apostolova, Lotte Gerritsen, Martina Bocchetta, George Bartzokis, Henri Duvernoy, Alberto Redolfi, Josephine Barnes, Ronald J. Killiany, Henrike Wolf, Simon Duchesne, Psychiatry, and NCA - Neurobiology of mental health
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Internationality ,Delphi Technique ,Epidemiology ,Delphi method ,Hippocampal formation ,Hippocampus ,ddc:616.89 ,pathology [Alzheimer Disease] ,methods [Magnetic Resonance Imaging] ,ddc:150 ,methods [Image Processing, Computer-Assisted] ,Image Processing, Computer-Assisted ,Segmentation ,Atrophy ,Volumetry ,Manual segmentation ,Harmonization ,Anatomical landmarks ,Delphi procedure ,Alzheimer's disease ,Medial temporal lobe ,Hippocampal atrophy ,Magnetic resonance ,Neuroimaging ,Standard operational procedures ,Enrichment ,MCI ,Reliability ,computer.programming_language ,medicine.diagnostic_test ,Health Policy ,Magnetic Resonance Imaging ,Hippocampal segmentation ,Psychiatry and Mental health ,Psychology ,methods [Neuroimaging] ,methods [Imaging, Three-Dimensional] ,Consensus ,Quantitative Biology::Tissues and Organs ,anatomy & histology [Hippocampus] ,Article ,Cellular and Molecular Neuroscience ,Imaging, Three-Dimensional ,Developmental Neuroscience ,Alzheimer Disease ,medicine ,Humans ,ddc:610 ,Protocol (science) ,Quantitative Biology::Neurons and Cognition ,business.industry ,Magnetic resonance imaging ,Pattern recognition ,pathology [Hippocampus] ,Neurology (clinical) ,Artificial intelligence ,Geriatrics and Gerontology ,business ,Neuroscience ,computer ,Delphi - Abstract
BackgroundThis study aimed to have international experts converge on a harmonized definition of whole hippocampus boundaries and segmentation procedures, to define standard operating procedures for magnetic resonance (MR)-based manual hippocampal segmentation.MethodsThe panel received a questionnaire regarding whole hippocampus boundaries and segmentation procedures. Quantitative information was supplied to allow evidence-based answers. A recursive and anonymous Delphi procedure was used to achieve convergence. Significance of agreement among panelists was assessed by exact probability on Fisher's and binomial tests.ResultsAgreement was significant on the inclusion of alveus/fimbria (P = .021), whole hippocampal tail (P = .013), medial border of the body according to visible morphology (P = .0006), and on this combined set of features (P = .001). This definition captures 100% of hippocampal tissue, 100% of Alzheimer’s disease-related atrophy, and demonstrated good reliability on preliminary intrarater (0.98) and inter-rater (0.94) estimates.DiscussionConsensus was achieved among international experts with respect to hippocampal segmentation using MR resulting in a harmonized segmentation protocol. published
- Published
- 2013
43. The impact of automated hippocampal volumetry on diagnostic confidence in patients with suspected Alzheimer's disease: A European Alzheimer's Disease Consortium study.
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Bosco, Paolo, Redolfi, Alberto, Bocchetta, Martina, Ferrari, Clarissa, Mega, Anna, Galluzzi, Samantha, Austin, Mark, Chincarini, Andrea, Collins, D. Louis, Duchesne, Simon, Maréchal, Bénédicte, Roche, Alexis, Sensi, Francesco, Wolz, Robin, Alegret, Montserrat, Assal, Frederic, Balasa, Mircea, Bastin, Christine, Bougea, Anastasia, and Emek-Savaş, Derya Durusu
- Abstract
Introduction Hippocampal volume is a core biomarker of Alzheimer's disease (AD). However, its contribution over the standard diagnostic workup is unclear. Methods Three hundred fifty-six patients, under clinical evaluation for cognitive impairment, with suspected AD and Mini–Mental State Examination ≥20, were recruited across 17 European memory clinics. After the traditional diagnostic workup, diagnostic confidence of AD pathology (DCAD) was estimated by the physicians in charge. The latter were provided with the results of automated hippocampal volumetry in standardized format and DCAD was reassessed. Results An increment of one interquartile range in hippocampal volume was associated with a mean change of DCAD of −8.0% (95% credible interval: [−11.5, −5.0]). Automated hippocampal volumetry showed a statistically significant impact on DCAD beyond the contributions of neuropsychology, 18 F-fluorodeoxyglucose positron emission tomography/single-photon emission computed tomography, and cerebrospinal fluid markers (−8.5, CrI: [−11.5, −5.6]; −14.1, CrI: [−19.3, −8.8]; −10.6, CrI: [−14.6, −6.1], respectively). Discussion There is a measurable effect of hippocampal volume on DCAD even when used on top of the traditional diagnostic workup. [ABSTRACT FROM AUTHOR]
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- 2017
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44. Neuroimaging Feature Terminology: A Controlled Terminology for the Annotation of Brain Imaging Features.
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Iyappan, Anandhi, Younesi, Erfan, Redolfi, Alberto, Vrooman, Henri, Khanna, Shashank, Frisoni, Giovanni B., Hofmann-Apitius, Martin, and Alzheimer’s Disease Neuroimaging Initiative
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TERMS & phrases ,BRAIN imaging ,ONTOLOGY ,IMAGING systems ,CALIBRATION ,ALGORITHMS ,ALZHEIMER'S disease ,BRAIN ,DIGITAL image processing ,NATURAL language processing ,NEURORADIOLOGY ,RESEARCH funding ,BIOINFORMATICS ,BIBLIOGRAPHIC databases - Abstract
Ontologies and terminologies are used for interoperability of knowledge and data in a standard manner among interdisciplinary research groups. Existing imaging ontologies capture general aspects of the imaging domain as a whole such as methodological concepts or calibrations of imaging instruments. However, none of the existing ontologies covers the diagnostic features measured by imaging technologies in the context of neurodegenerative diseases. Therefore, the Neuro-Imaging Feature Terminology (NIFT) was developed to organize the knowledge domain of measured brain features in association with neurodegenerative diseases by imaging technologies. The purpose is to identify quantitative imaging biomarkers that can be extracted from multi-modal brain imaging data. This terminology attempts to cover measured features and parameters in brain scans relevant to disease progression. In this paper, we demonstrate the systematic retrieval of measured indices from literature and how the extracted knowledge can be further used for disease modeling that integrates neuroimaging features with molecular processes. [ABSTRACT FROM AUTHOR]
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- 2017
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45. Multiple RF classifier for the hippocampus segmentation: Method and validation on EADC-ADNI Harmonized Hippocampal Protocol.
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Inglese, P., Amoroso, N., Boccardi, M., Bocchetta, M., Bruno, S., Chincarini, A., Errico, R., Frisoni, G.B., Maglietta, R., Redolfi, A., Sensi, F., Tangaro, S., Tateo, A., and Bellotti, R.
- Abstract
The hippocampus has a key role in a number of neurodegenerative diseases, such as Alzheimer's Disease. Here we present a novel method for the automated segmentation of the hippocampus from structural magnetic resonance images (MRI), based on a combination of multiple classifiers. The method is validated on a cohort of 50 T1 MRI scans, comprehending healthy control, mild cognitive impairment, and Alzheimer's Disease subjects. The preliminary release of the EADC-ADNI Harmonized Protocol training labels is used as gold standard. The fully automated pipeline consists of a registration using an affine transformation, the extraction of a local bounding box, and the classification of each voxel in two classes (background and hippocampus). The classification is performed slice-by-slice along each of the three orthogonal directions of the 3D-MRI using a Random Forest (RF) classifier, followed by a fusion of the three full segmentations. Dice coefficients obtained by multiple RF (0.87 ± 0.03) are larger than those obtained by a single monolithic RF applied to the entire bounding box, and are comparable to state-of-the-art. A test on an external cohort of 50 T1 MRI scans shows that the presented method is robust and reliable. Additionally, a comparison of local changes in the morphology of the hippocampi between the three subject groups is performed. Our work showed that a multiple classification approach can be implemented for the segmentation for the measurement of volume and shape changes of the hippocampus with diagnostic purposes. [ABSTRACT FROM AUTHOR]
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- 2015
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46. Head-to-Head Comparison of Two Popular Cortical Thickness Extraction Algorithms: A Cross-Sectional and Longitudinal Study.
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Redolfi, Alberto, Manset, David, Barkhof, Frederik, Wahlund, Lars-Olof, Glatard, Tristan, Mangin, Jean-François, Frisoni, Giovanni B., and null, null
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CEREBRAL cortex , *ALZHEIMER'S disease , *BIOMARKERS , *DISEASE progression , *OCCIPITAL lobe , *CROSS-sectional method - Abstract
Background and Purpose: The measurement of cortical shrinkage is a candidate marker of disease progression in Alzheimer’s. This study evaluated the performance of two pipelines: Civet-CLASP (v1.1.9) and Freesurfer (v5.3.0). Methods: Images from 185 ADNI1 cases (69 elderly controls (CTR), 37 stable MCI (sMCI), 27 progressive MCI (pMCI), and 52 Alzheimer (AD) patients) scanned at baseline, month 12, and month 24 were processed using the two pipelines and two interconnected e-infrastructures: neuGRID () and VIP (). The vertex-by-vertex cross-algorithm comparison was made possible applying the 3D gradient vector flow (GVF) and closest point search (CPS) techniques. Results: The cortical thickness measured with Freesurfer was systematically lower by one third if compared to Civet’s. Cross-sectionally, Freesurfer’s effect size was significantly different in the posterior division of the temporal fusiform cortex. Both pipelines were weakly or mildly correlated with the Mini Mental State Examination score (MMSE) and the hippocampal volumetry. Civet differed significantly from Freesurfer in large frontal, parietal, temporal and occipital regions (p<0.05). In a discriminant analysis with cortical ROIs having effect size larger than 0.8, both pipelines gave no significant differences in area under the curve (AUC). Longitudinally, effect sizes were not significantly different in any of the 28 ROIs tested. Both pipelines weakly correlated with MMSE decay, showing no significant differences. Freesurfer mildly correlated with hippocampal thinning rate and differed in the supramarginal gyrus, temporal gyrus, and in the lateral occipital cortex compared to Civet (p<0.05). In a discriminant analysis with ROIs having effect size larger than 0.6, both pipelines yielded no significant differences in the AUC. Conclusions: Civet appears slightly more sensitive to the typical AD atrophic pattern at the MCI stage, but both pipelines can accurately characterize the topography of cortical thinning at the dementia stage. [ABSTRACT FROM AUTHOR]
- Published
- 2015
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47. Operationalizing protocol differences for EADC-ADNI manual hippocampal segmentation.
- Author
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Boccardi, Marina, Bocchetta, Martina, Ganzola, Rossana, Robitaille, Nicolas, Redolfi, Alberto, Duchesne, Simon, Jr.Jack, Clifford R., and Frisoni, Giovanni B.
- Abstract
Background Hippocampal volumetry on magnetic resonance imaging is recognized as an Alzheimer's disease (AD) biomarker, and manual segmentation is the gold standard for measurement. However, a standard procedure is lacking. We operationalize and quantitate landmark differences to help a Delphi panel converge on a set of landmarks. Methods One hundred percent of anatomic landmark variability across 12 different protocols for manual segmentation was reduced into four segmentation units (the minimum hippocampus, the alveus/fimbria, the tail, and the subiculum), which were segmented on magnetic resonance images by expert raters to estimate reliability and AD-related atrophy. Results Intra- and interrater reliability were more than 0.96 and 0.92, respectively, except for the alveus/fimbria, which were 0.86 and 0.77, respectively. Of all AD-related atrophy, the minimum hippocampus contributed to 67%; tail, 24%; alveus/fimbria, 4%; and the subiculum, 5%. Conclusions Anatomic landmark variability in available protocols can be reduced to four discrete and measurable segmentation units. Their quantitative assessment will help a Delphi panel to define a set of landmarks for a harmonized protocol. [ABSTRACT FROM AUTHOR]
- Published
- 2015
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48. The Italian Alzheimer's Disease Neuroimaging Initiative (I-ADNI): Validation of Structural MR Imaging.
- Author
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Cavedo, Enrica, Redolfi, Alberto, Angeloni, Francesco, Babiloni, Claudio, Lizio, Roberta, Chiapparini, Luisa, Bruzzone, Maria G., Aquino, Domenico, Sabatini, Umberto, Alesiani, Marcella, Cherubini, Andrea, Salvatore, Elena, Soricelli, Andrea, Vernieri, Fabrizio, Scrascia, Federica, Sinforiani, Elena, Chiarati, Patrizia, Bastianello, Stefano, Montella, Patrizia, and Corbo, Daniele
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GENETICS of Alzheimer's disease , *COGNITION disorders research , *HIPPOCAMPUS physiology , *BIOMARKERS , *FRONTOTEMPORAL dementia - Abstract
Background: The North American Alzheimer's Disease Neuroimaging Initiative (NA-ADNI) was the first program to develop standardized procedures for Alzheimer's disease (AD) imaging biomarker collection. Objective: We describe the validation of acquisition and processing of structural magnetic resonance imaging (MRI) in different Italian academic AD clinics following NA-ADNI procedures. Methods: 373 patients with subjective memory impairment (n = 12), mild cognitive impairment (n = 92), Alzheimer's dementia (n = 253), and frontotemporal dementia (n = 16) were enrolled in 9 Italian centers. 22 cognitively healthy elderly controls were also included. MRI site qualification and MP-RAGE quality assessment was applied following the NA-ADNI procedures. Indices of validity were: (i) NA-ADNI phantom's signal-to-noise and contrast-to-noise ratio, (ii) proportion of images passing quality control, (iii) comparability of automated intracranial volume (ICV) estimates across scanners, and (iv) known-group validity of manual hippocampal volumetry. Results: Results on Phantom and Volunteers scans showed that I-ADNI acquisition parameters were comparable with those one of the ranked-A ADNI scans. Eighty-seven percent of I-ADNI MPRAGE images were ranked of high quality in comparison of 69% of NA-ADNI. ICV showed homogeneous variances across scanners except for Siemens scanners at 3.0 Tesla (p = 0.039). A significant difference in hippocampal volume was found between AD and controls on 1.5 Tesla scans (p < 0.001), confirming known group validity test. Conclusion: This study has provided standardization of MRI acquisition and imaging marker collection across different Italian clinical units and equipment. This is a mandatory step to the implementation of imaging biomarkers in clinical routine for early and differential diagnosis. [ABSTRACT FROM AUTHOR]
- Published
- 2014
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49. Virtual imaging laboratories for marker discovery in neurodegenerative diseases.
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Frisoni, Giovanni B., Redolfi, Alberto, Manset, David, Rousseau, Marc-Étienne, Toga, Arthur, Evans, Alan C., and Rousseau, Marc-Étienne
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NEURODEGENERATION , *MEDICAL imaging systems , *ALZHEIMER'S disease , *WEB browsers , *NEUROSCIENCES , *PATIENTS , *DIGITAL image processing , *DATABASES , *RESEARCH , *RESEARCH methodology , *LABORATORIES , *MEDICAL cooperation , *EVALUATION research , *DIAGNOSTIC imaging , *COMPARATIVE studies , *IMPACT of Event Scale ,RESEARCH evaluation - Abstract
The unprecedented growth, availability and accessibility of imaging data from people with neurodegenerative conditions has led to the development of computational infrastructures, which offer scientists access to large image databases and e-Science services such as sophisticated image analysis algorithm pipelines and powerful computational resources, as well as three-dimensional visualization and statistical tools. Scientific e-infrastructures have been and are being developed in Europe and North America that offer a suite of services for computational neuroscientists. The convergence of these initiatives represents a worldwide infrastructure that will constitute a global virtual imaging laboratory. This will provide computational neuroscientists with a virtual space that is accessible through an ordinary web browser, where image data sets and related clinical variables, algorithm pipelines, computational resources, and statistical and visualization tools will be transparently accessible to users irrespective of their physical location. Such an experimental environment will be instrumental to the success of ambitious scientific initiatives with high societal impact, such as the prevention of Alzheimer disease. In this article, we provide an overview of the currently available e-infrastructures and consider how computational neuroscience in neurodegenerative disease might evolve in the future. [ABSTRACT FROM AUTHOR]
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- 2011
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50. Disease Tracking Markers for Alzheimer's Disease at the Prodromal (MCI) Stage.
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Ashford, Rosen, Adamson, Bayley, Sabri, Furst, Black, Weiner, Drago, Valeria, Pievani, Michela, Venturi, Luca, Redolfi, Alberto, Frisoni, Giovanni B., Caroli, Anna, Forloni, Gianluigi, Blin, Olivier, Irving, Elaine, Davis, Ceri, Hårdemark, Hans-goran, and Babiloni, Claudio
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ALZHEIMER'S disease research ,MILD cognitive impairment ,NEUROPSYCHOLOGICAL tests ,CEREBRAL atrophy ,MAGNETIC resonance imaging ,CEREBROSPINAL fluid - Abstract
Older persons with Mild Cognitive Impairment (MCI) feature neurobiological Alzheimer's Disease (AD) in 50% to 70% of the cases and develop dementia within the next 5 to 7 years. Current evidence suggests that biochemical, neuroimaging, electrophysiological, and neuropsychological markers can track the disease over time since the MCI stage (also called prodromal AD). The amount of evidence supporting their validity is of variable strength. We have reviewed the current literature and categorized evidence of validity into three classes: Class A, availability of multiple serial studies; Class B a single serial study or multiple cross sectional studies of patients with increasing disease severity from MCI to probable AD; and class C, multiple cross sectional studies of patients in the dementia stage, not including the MCI stage. Several Class A studies suggest that episodic memory and semantic fluency are the most reliable neuropsychological markers of progression. Hippocampal atrophy, ventricular volume and whole brain atrophy are structural MRI markers with class A evidence. Resting-state fMRI and connectivity, and diffusion MR markers in the medial temporal white matter (parahippocampus and posterior cingulum) and hippocampus are promising but require further validation. Change in amyloid load in MCI patients warrant further investigations, e.g. over longer period of time, to assess its value as marker of disease progression. Several spectral markers of resting state EEG rhythms that might reflect neurodegenerative processes in the prodromal stage of AD (EEG power density, functional coupling, spectral coherence, and synchronization) suffer from lack of appropriately designed studies. Although serial studies on late event-related potentials (ERPs) in healthy elders or MCI patients are inconclusive, others tracking disease progression and effects of cholinesterase inhibiting drugs in AD, and cross-sectional including MCI or predicting development of AD offer preliminary evidence of validity as a marker of disease progression from the MCI stage. CSF Markers, such as Aβ
1-42 , t-tau and p-tau are valuable markers which support the clinical diagnosis of Alzheimer's disease. However, these markers are not sensitive to disease progression and cannot be used to monitor the severity of Alzheimer's disease. For Isoprostane F2 some evidence exists that its increase correlates with the progression and the severity of AD. [ABSTRACT FROM AUTHOR]- Published
- 2011
- Full Text
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