29 results on '"Peeters, Carel F.W."'
Search Results
2. CSF proteins of inflammation, proteolysis and lipid transport define preclinical AD and progression to AD dementia in cognitively unimpaired individuals
- Author
-
del Campo, Marta, Quesada, Carlos, Vermunt, Lisa, Peeters, Carel F.W., Hok-A-Hin, Yanaika S., Trieu, Calvin, den Braber, Anouk, Verberk, Inge M.W., Visser, Pieter J., Tijms, Betty M., van der Flier, Wiesje M., Teunissen, Charlotte E., del Campo, Marta, Quesada, Carlos, Vermunt, Lisa, Peeters, Carel F.W., Hok-A-Hin, Yanaika S., Trieu, Calvin, den Braber, Anouk, Verberk, Inge M.W., Visser, Pieter J., Tijms, Betty M., van der Flier, Wiesje M., and Teunissen, Charlotte E.
- Abstract
This preclinical AD CSF proteome study identified a panel of 12-CSF markers detecting amyloid positivity and clinical progression to AD with high accuracy; some of these CSF proteins related to immune function, neurotrophic processes, energy metabolism and endolysosomal functioning (e.g., ITGB2, CLEC5A, IGFBP-1, CST3) changed before amyloid positivity is established.
- Published
- 2024
3. Leisure time physical activity is associated with improved diastolic heart function and is partly mediated by unsupervised quantified metabolic health
- Author
-
Klarenberg, Hugo, van der Velde, Jeroen H.P.M., Peeters, Carel F.W., Dekkers, Ilona A., de Mutsert, R., Wouter Jukema, J., Rosendaal, Frits R., Leiner, Tim, Froeling, Martijn, Jorstad, Harald, Matthijs Boekholdt, S., Strijkers, Gustav J., Lamb, Hildo J., Klarenberg, Hugo, van der Velde, Jeroen H.P.M., Peeters, Carel F.W., Dekkers, Ilona A., de Mutsert, R., Wouter Jukema, J., Rosendaal, Frits R., Leiner, Tim, Froeling, Martijn, Jorstad, Harald, Matthijs Boekholdt, S., Strijkers, Gustav J., and Lamb, Hildo J.
- Abstract
Objectives To investigate the association between leisure time physical activity (LTPA) and MRI-based diastolic function and the mediating role of metabolic health. Methods This cross-sectional analysis comprised 901 participants (46%women, mean age (SD): 56 (6) years (The Netherlands, 2008–2012)). LTPA was assessed via questionnaire, quantified in metabolic equivalent of tasks (METs)-minutes per week and participants underwent abdominal and cardiovascular MRI. Confirmatory factor analysis was used to construct the metabolic load factor. Piecewise structural equation model with adjustments for confounders was used to determine associations between LTPA and diastolic function and the mediating effect of metabolic load. Results Significant differences in mitral early/late peak filling rate (E/A) ratio per SD of LTPA (men=1999, women=1870 MET-min/week) of 0.18, (95% CI= 0.03 to 0.33, p=0.021) were observed in men, but not in women: −0.01 (−0.01 to 0.34, p=0.058). Difference in deceleration time of mitral early filling (E-DT) was 0.13 (0.01 to 0.24, p=0.030) in men and 0.17 (0.05 to 0.28, p=0.005) in women. Metabolic load, including MRI-based visceral and subcutaneous adipose tissue, fasting glucose, high-density lipoprotein cholesterol and triglycerides, mediated these associations as follows: E/A-ratio of 0.030 (0.000 to 0.067, 19% mediated, p=0.047) in men but not in women: 0.058 (0.027 to 0.089, p<0.001) and E-DT not in men 0.004 (−0.012 to 0.021, p=0.602) but did in women 0.044 (0.013 to 0.057, 27% mediated, p=0.006). Conclusions A larger amount of LTPA was associated with improved diastolic function where confirmatory factor analysis-based metabolic load partly mediated this effect. Future studies should assess whether improving indicators of metabolic load alongside LTPA will benefit healthy diastolic function even more.
- Published
- 2024
4. A guided network estimation approach using multi-omic information
- Author
-
Bartzis, Georgios, Peeters, Carel F.W., Ligterink, Wilco, Van Eeuwijk, Fred A., Bartzis, Georgios, Peeters, Carel F.W., Ligterink, Wilco, and Van Eeuwijk, Fred A.
- Abstract
Intoduction: In systems biology, an organism is viewed as a system of interconnected molecular entities. To understand the functioning of organisms it is essential to integrate information about the variations in the concentrations of those molecular entities. This information can be structured as a set of networks with interconnections and with some hierarchical relations between them. Few methods exist for the reconstruction of integrative networks. Objective: In this work, we propose an integrative network reconstruction method in which the network organization for a particular type of omics data is guided by the network structure of a related type of omics data upstream in the omic cascade. The structure of these guiding data can be either already known or be estimated from the guiding data themselves. Methods: The method consists of three steps. First a network structure for the guiding data should be provided. Next, responses in the target set are regressed on the full set of predictors in the guiding data with a Lasso penalty to reduce the number of predictors and an L2 penalty on the differences between coefficients for predictors that share edges in the network for the guiding data. Finally, a network is reconstructed on the fitted target responses as functions of the predictors in the guiding data. This way we condition the target network on the network of the guiding data. Conclusions: We illustrate our approach on two examples in Arabidopsis. The method detects groups of metabolites that have a similar genetic or transcriptomic basis.
- Published
- 2024
5. Blood-based metabolic signatures in Alzheimer's disease
- Author
-
de Leeuw, Francisca A., Peeters, Carel F.W., Kester, Maartje I., Harms, Amy C., Struys, Eduard A., Hankemeier, Thomas, van Vlijmen, Herman W.T., van der Lee, Sven J., van Duijn, Cornelia M., Scheltens, Philip, Demirkan, Ayşe, van de Wiel, Mark A., van der Flier, Wiesje M., and Teunissen, Charlotte E.
- Published
- 2017
- Full Text
- View/download PDF
6. Detecting functional decline from normal aging to dementia: Development and validation of a short version of the Amsterdam IADL Questionnaire
- Author
-
Jutten, Roos J., Peeters, Carel F.W., Leijdesdorff, Sophie M.J., Visser, Pieter Jelle, Maier, Andrea B., Terwee, Caroline B., Scheltens, Philip, and Sikkes, Sietske A.M.
- Published
- 2017
- Full Text
- View/download PDF
7. Ridge estimation of inverse covariance matrices from high-dimensional data
- Author
-
van Wieringen, Wessel N. and Peeters, Carel F.W.
- Published
- 2016
- Full Text
- View/download PDF
8. Psychiatric symptoms of frontotemporal dementia and subcortical (co-)pathology burden : new insights
- Author
-
Scarioni, Marta, Gami-Patel, Priya, Peeters, Carel F.W., de Koning, Florianne, Seelaar, Harro, Mol, Merel O., van Swieten, John C., Rozemuller, Annemieke J.M., Hoozemans, Jeroen J.M., Pijnenburg, Yolande A.L., Dijkstra, Anke A., Scarioni, Marta, Gami-Patel, Priya, Peeters, Carel F.W., de Koning, Florianne, Seelaar, Harro, Mol, Merel O., van Swieten, John C., Rozemuller, Annemieke J.M., Hoozemans, Jeroen J.M., Pijnenburg, Yolande A.L., and Dijkstra, Anke A.
- Published
- 2023
9. Psychiatric symptoms of frontotemporal dementia and subcortical (co-)pathology burden:new insights
- Author
-
Scarioni, Marta, Gami-Patel, Priya, Peeters, Carel F.W., de Koning, Florianne, Seelaar, Harro, Mol, Merel O., van Swieten, John C., Rozemuller, Annemieke J.M., Hoozemans, Jeroen J.M., Pijnenburg, Yolande A.L., Dijkstra, Anke A., Scarioni, Marta, Gami-Patel, Priya, Peeters, Carel F.W., de Koning, Florianne, Seelaar, Harro, Mol, Merel O., van Swieten, John C., Rozemuller, Annemieke J.M., Hoozemans, Jeroen J.M., Pijnenburg, Yolande A.L., and Dijkstra, Anke A.
- Published
- 2023
10. CSF proteome profiling reveals biomarkers to discriminate dementia with Lewy bodies from Alzheimer´s disease
- Author
-
del Campo, Marta, Vermunt, Lisa, Peeters, Carel F.W., Sieben, Anne, Hok-A-Hin, Yanaika S., Lleó, Alberto, Alcolea, Daniel, van Nee, Mirrelijn, Engelborghs, Sebastiaan, van Alphen, Juliette L., Arezoumandan, Sanaz, Chen-Plotkin, Alice, Irwin, David J., van der Flier, Wiesje M., Lemstra, Afina W., Teunissen, Charlotte E., del Campo, Marta, Vermunt, Lisa, Peeters, Carel F.W., Sieben, Anne, Hok-A-Hin, Yanaika S., Lleó, Alberto, Alcolea, Daniel, van Nee, Mirrelijn, Engelborghs, Sebastiaan, van Alphen, Juliette L., Arezoumandan, Sanaz, Chen-Plotkin, Alice, Irwin, David J., van der Flier, Wiesje M., Lemstra, Afina W., and Teunissen, Charlotte E.
- Abstract
Diagnosis of dementia with Lewy bodies (DLB) is challenging and specific biofluid biomarkers are highly needed. We employed proximity extension-based assays to measure 665 proteins in the cerebrospinal fluid (CSF) from patients with DLB (n = 109), Alzheimer´s disease (AD, n = 235) and cognitively unimpaired controls (n = 190). We identified over 50 CSF proteins dysregulated in DLB, enriched in myelination processes among others. The dopamine biosynthesis enzyme DDC was the strongest dysregulated protein, and could efficiently discriminate DLB from controls and AD (AUC:0.91 and 0.81 respectively). Classification modeling unveiled a 7-CSF biomarker panel that better discriminate DLB from AD (AUC:0.93). A custom multiplex panel for six of these markers (DDC, CRH, MMP-3, ABL1, MMP-10, THOP1) was developed and validated in independent cohorts, including an AD and DLB autopsy cohort. This DLB CSF proteome study identifies DLB-specific protein changes and translates these findings to a practicable biomarker panel that accurately identifies DLB patients, providing promising diagnostic and clinical trial testing opportunities.
- Published
- 2023
11. CSF proteome profiling identifies novel biomarkers for Frontotemporal Dementia and its pathological subtypes
- Author
-
Hok‐A‐Hin, Yanaika S., Vermunt, Lisa, Peeters, Carel F.W., Van der ende, Emma L., De boer, Sterre C.M., Meeter, Lieke H., Van swieten, John C., Hu, William T., Lleó, Alberto, Alcolea, Daniel, Engelborghs, Sebastiaan, Sieben, Anne, Chen‐plotkin, Alice, Irwin, David J., Van der Flier, Wiesje M., Pijnenburg, Yolande A.L., Teunissen, Charlotte E., Del Campo, Marta, Hok‐A‐Hin, Yanaika S., Vermunt, Lisa, Peeters, Carel F.W., Van der ende, Emma L., De boer, Sterre C.M., Meeter, Lieke H., Van swieten, John C., Hu, William T., Lleó, Alberto, Alcolea, Daniel, Engelborghs, Sebastiaan, Sieben, Anne, Chen‐plotkin, Alice, Irwin, David J., Van der Flier, Wiesje M., Pijnenburg, Yolande A.L., Teunissen, Charlotte E., and Del Campo, Marta
- Abstract
BackgroundFrontotemporal dementia (FTD) is caused by frontotemporal lobar degeneration (FTLD) and the most common forms are characterized by either tau (FTLD-Tau) or TDP43 (FTLD-TDP) brain aggregates. However, FTD-specific fluid biomarkers are lacking. Furthermore, the pathological subtypes are not distinct in their presentation, hampering accurate subtyping at clinical diagnosis. Therefore, there is a strong need to identify fluid biomarkers that could aid in FTD diagnosis and to discriminate the pathological subtypes.MethodWe employed an antibody-based proteomic technology to analyze >600 proteins in a large multicenter cohort including cerebrospinal fluid (CSF) samples from FTD (n = 189), AD (n = 235) and cognitively unimpaired individuals (n = 196). For a subset of cases the underlying neuropathology was known or could be predicted (FTLD-Tau = 85 and FTLD-TDP = 57). Differences in protein expression profiles were analyzed by nested linear models. Penalized generalized linear modeling was used to identify classification protein panels. Protein panels were then validated in independent clinical cohorts (cohort 1: n = 157; cohort 2: n = 165) and a neuropathology cohort (n = 100) using customized assays.ResultWe observed 65 differentially regulated proteins in FTD versus controls and AD patients, associated with axonogenesis, synapse assembly, or locomotory behavior pathways. We identified panels of 14 and 13 proteins that could discriminate FTD from controls (AUC = 0.96, 95%CI:0.91-0.99) and AD patients (AUC = 0.91, 95%CI:0.85-0.96), respectively. Most of these proteins (21 out of 27) were translated into customized panels, which discriminated between groups with high accuracy for all three cohorts (FTDvsCon: AUCs > 0.96, FTDvsAD: AUCs > 0.88). When comparing the FTLD-Tau and FTLD-TDP subtypes, we observed that 86 proteins were increased in FTLD-Tau, and associated with developmental and cellular processes and locomotion pathways. A panel of 8 proteins could discri
- Published
- 2023
12. rags2ridges: A One-Stop-ℓ2-Shop for Graphical Modeling of High-Dimensional Precision Matrices
- Author
-
Peeters, Carel F.W., Bilgrau, Anders Ellern, van Wieringen, Wessel N., Epidemiology and Data Science, and APH - Methodology
- Subjects
regularization ,high-dimensional data ,graphical modeling ,networks ,Mathematical and Statistical Methods - Biometris ,Wiskundige en Statistische Methoden - Biometris - Abstract
A graphical model is an undirected network representing the conditional independence properties between random variables. Graphical modeling has become part and parcel of systems or network approaches to multivariate data, in particular when the variable dimension exceeds the observation dimension. rags2ridges is an R package for graphical modeling of high-dimensional precision matrices through ridge (ℓ2) penalties. It provides a modular framework for the extraction, visualization, and analysis of Gaussian graphical models from high-dimensional data. Moreover, it can handle the incorporation of prior information as well as multiple heterogeneous data classes. As such, it provides a one-stop-ℓ2-shop for graphical modeling of high-dimensional precision matrices. The functionality of the package is illustrated with an example dataset pertaining to blood-based metabolite measurements in persons suffering from Alzheimer’s disease.
- Published
- 2022
- Full Text
- View/download PDF
13. Psychoneurological Symptoms and Biomarkers of Stress and Inflammation in Newly Diagnosed Head and Neck Cancer Patients : A Network Analysis
- Author
-
Santoso, Angelina M.M., Jansen, Femke, Peeters, Carel F.W., Baatenburg de Jong, Robert J., Brakenhoff, Ruud H., Langendijk, Johannes A., Leemans, C.R., Takes, Robert P., Terhaard, Chris H.J., van Straten, Annemieke, Verdonck-de Leeuw, Irma M., Santoso, Angelina M.M., Jansen, Femke, Peeters, Carel F.W., Baatenburg de Jong, Robert J., Brakenhoff, Ruud H., Langendijk, Johannes A., Leemans, C.R., Takes, Robert P., Terhaard, Chris H.J., van Straten, Annemieke, and Verdonck-de Leeuw, Irma M.
- Published
- 2022
14. Psychoneurological Symptoms and Biomarkers of Stress and Inflammation in Newly Diagnosed Head and Neck Cancer Patients:A Network Analysis
- Author
-
Santoso, Angelina M.M., Jansen, Femke, Peeters, Carel F.W., Baatenburg de Jong, Robert J., Brakenhoff, Ruud H., Langendijk, Johannes A., Leemans, C. René, Takes, Robert P., Terhaard, Chris H.J., van Straten, Annemieke, Verdonck-de Leeuw, Irma M., Santoso, Angelina M.M., Jansen, Femke, Peeters, Carel F.W., Baatenburg de Jong, Robert J., Brakenhoff, Ruud H., Langendijk, Johannes A., Leemans, C. René, Takes, Robert P., Terhaard, Chris H.J., van Straten, Annemieke, and Verdonck-de Leeuw, Irma M.
- Published
- 2022
15. Semi-supervised empirical Bayes group-regularized factor regression
- Author
-
Münch, Magnus M. (author), van de Wiel, Mark A. (author), van der Vaart, A.W. (author), Peeters, Carel F.W. (author), Münch, Magnus M. (author), van de Wiel, Mark A. (author), van der Vaart, A.W. (author), and Peeters, Carel F.W. (author)
- Abstract
The features in a high-dimensional biomedical prediction problem are often well described by low-dimensional latent variables (or factors). We use this to include unlabeled features and additional information on the features when building a prediction model. Such additional feature information is often available in biomedical applications. Examples are annotation of genes, metabolites, or p-values from a previous study. We employ a Bayesian factor regression model that jointly models the features and the outcome using Gaussian latent variables. We fit the model using a computationally efficient variational Bayes method, which scales to high dimensions. We use the extra information to set up a prior model for the features in terms of hyperparameters, which are then estimated through empirical Bayes. The method is demonstrated in simulations and two applications. One application considers influenza vaccine efficacy prediction based on microarray data. The second application predicts oral cancer metastasis from RNAseq data., Statistics, Education and Student Affairs
- Published
- 2022
- Full Text
- View/download PDF
16. Psychoneurological Symptoms and Biomarkers of Stress and Inflammation in Newly Diagnosed Head and Neck Cancer Patients: A Network Analysis
- Author
-
Santoso, Angelina M. M., Jansen, F., Peeters, Carel F.W., Baatenburg de Jong, Robert J., Brakenhoff, Ruud H., Langendijk, Johannes A., Takes, R.P., Straten, Annemieke van, Verdonck-de Leeuw, Irma M., Santoso, Angelina M. M., Jansen, F., Peeters, Carel F.W., Baatenburg de Jong, Robert J., Brakenhoff, Ruud H., Langendijk, Johannes A., Takes, R.P., Straten, Annemieke van, and Verdonck-de Leeuw, Irma M.
- Abstract
Contains fulltext : 283883.pdf (Publisher’s version ) (Open Access)
- Published
- 2022
17. Plasma proteome profiling identifies changes associated to AD but not to FTD
- Author
-
Babapour Mofrad, R., Campo, M. del, Peeters, Carel F.W., Meeter, L.H.H., Seelaar, H., Koel-Simmelink, M., Claassen, J.A.H.R., Pijnenburg, Yolande A. L., Teunissen, Charlotte E., Babapour Mofrad, R., Campo, M. del, Peeters, Carel F.W., Meeter, L.H.H., Seelaar, H., Koel-Simmelink, M., Claassen, J.A.H.R., Pijnenburg, Yolande A. L., and Teunissen, Charlotte E.
- Abstract
Contains fulltext : 283875.pdf (Publisher’s version ) (Open Access)
- Published
- 2022
18. Semi-supervised empirical Bayes group-regularized factor regression
- Author
-
Münch, Magnus M., van de Wiel, Mark A., van der Vaart, Aad W., Peeters, Carel F.W., Münch, Magnus M., van de Wiel, Mark A., van der Vaart, Aad W., and Peeters, Carel F.W.
- Abstract
The features in a high-dimensional biomedical prediction problem are often well described by low-dimensional latent variables (or factors). We use this to include unlabeled features and additional information on the features when building a prediction model. Such additional feature information is often available in biomedical applications. Examples are annotation of genes, metabolites, or p-values from a previous study. We employ a Bayesian factor regression model that jointly models the features and the outcome using Gaussian latent variables. We fit the model using a computationally efficient variational Bayes method, which scales to high dimensions. We use the extra information to set up a prior model for the features in terms of hyperparameters, which are then estimated through empirical Bayes. The method is demonstrated in simulations and two applications. One application considers influenza vaccine efficacy prediction based on microarray data. The second application predicts oral cancer metastasis from RNAseq data.
- Published
- 2022
19. Effect of eight-week online cognitive training in Parkinson's disease : A double-blind, randomized, controlled trial
- Author
-
van Balkom, Tim D., Berendse, Henk W., van der Werf, Ysbrand D., Twisk, Jos W.R., Peeters, Carel F.W., Hoogendoorn, Adriaan W., Hagen, Rob H., Berk, Tanja, van den Heuvel, Odile A., Vriend, Chris, van Balkom, Tim D., Berendse, Henk W., van der Werf, Ysbrand D., Twisk, Jos W.R., Peeters, Carel F.W., Hoogendoorn, Adriaan W., Hagen, Rob H., Berk, Tanja, van den Heuvel, Odile A., and Vriend, Chris
- Abstract
Introduction: Cognitive training (CT) has been proposed as a treatment option for cognitive impairment in Parkinson's disease (PD). We aimed to assess the efficacy of adaptive, computerized CT on cognitive function in PD. Methods: In this double-blind, randomized controlled trial we enrolled PD patients that experienced substantial subjective cognitive complaints. Over a period of eight weeks, participants underwent 24 sessions of computerized multi-domain CT or an active control intervention for 45 min each (randomized 1:1). The primary outcome was the accuracy on the Tower of London task; secondary outcomes included effects on other neuropsychological outcomes and subjective cognitive complaints. Outcomes were assessed before and after training and at six-months follow-up, and analyzed with multivariate mixed-model analyses. Results: The intention-to-treat population consisted of 136 participants (n = 68 vs. n = 68, age M: 62.9y, female: 39.7%). Multivariate mixed-model analyses showed no group difference on the Tower of London accuracy corrected for baseline performance (n = 130): B: −0.06, 95% CI: −0.27 to 0.15, p = 0.562. Participants in the CT group were on average 0.30 SD (i.e., 1.5 s) faster on difficulty load 4 of this task (secondary outcome): 95% CI: −0.55 to −0.06, p = 0.015. CT did not reduce subjective cognitive complaints. At follow-up, no group differences were found. Conclusions: This study shows no beneficial effect of eight-week computerized CT on the primary outcome (i.e., planning accuracy) and only minor improvements on secondary outcomes (i.e., processing speed) with limited clinical impact. Personalized or ecologically valid multi-modal intervention methods could be considered to achieve clinically meaningful and lasting effects.
- Published
- 2022
20. psBLUP : incorporating marker proximity for improving genomic prediction accuracy
- Author
-
Bartzis, Georgios, Peeters, Carel F.W., van Eeuwijk, Fred, Bartzis, Georgios, Peeters, Carel F.W., and van Eeuwijk, Fred
- Abstract
Genomic selection entails the estimation of phenotypic traits of interest for plants without phenotype based on the association between single-nucleotide polymorphisms (SNPs) and phenotypic traits for plants with phenotype. Typically, the number of SNPs far exceeds the number of samples (high-dimensionality) and, therefore, usage of regularization methods is common. The most common approach to estimate marker-trait associations uses the genomic best linear unbiased predictor (GBLUP) method, where a mixed model is fitted to the data. GBLUP has also been alternatively parameterized as a ridge regression model (RRBLUP). GBLUP/RRBLUP is based on the assumption of independence between predictor variables. However, it is to be expected that variables will be associated due to their genetic proximity. Here, we propose a regularized linear model (namely psBLUP: proximity smoothed BLUP) that explicitly models the dependence between predictor effects. We show that psBLUP can improve accuracy compared to the standard methods on both Arabidopsis thaliana data and Barley data.
- Published
- 2022
21. Neuroanatomy of FTD: Whole-brain correlations between symptoms and pathologies
- Author
-
Scarioni, Marta, Gami-Patel, Priya, Peeters, Carel F.W., de Koning, Florianne, Seelaar, Harro, van Swieten, John C., Rozemuller, Annemieke J.M., Hoozemans, Jeroen J., Pijnenburg, Yolande A.L., Dijkstra, Anke A., Epidemiology and Data Science, Human genetics, Pathology, Amsterdam Neuroscience - Neurodegeneration, and Neurology
- Subjects
SDG 3 - Good Health and Well-being ,mental disorders ,Life Science ,Mathematical and Statistical Methods - Biometris ,Wiskundige en Statistische Methoden - Biometris ,nervous system diseases - Abstract
BACKGROUND: Distinct pathologies accumulate in multiple brain regions (BR) and shape the heterogeneous clinical presentation of frontotemporal dementia (FTD). It is unknown how regional pathological burden links to symptoms, what the role of co-occurring pathologies is, and whether the localization of pathology might be a bigger contributor to symptoms than the type of pathology. Our aim is to investigate how early FTD symptoms correlate to the burden of multiple pathologies throughout the brain. METHOD: Post-mortem brain tissue of frontotemporal lobar degeneration (FTLD) donors from the Netherlands brain bank was dissected into twenty standard BR and stained for TAR DNA-binding protein 43 (TDP-43), tau, fused-in-sarcoma (FUS), amyloid-beta (Aβ), and alpha-synuclein. The burden of each pathological protein in each BR was quantified. All clinical records were reviewed to assess psychiatric, behavioral, language, and motor symptoms in the first three years from disease onset. Whole-brain clinico-pathological partial correlations were assessed using the heterogeneous correlation function (R 3.6.1). The local false discovery rate threshold was set at 0.01. RESULT: Eighty-eight FTLD brain donors were studied, including 46 TDP-43, 35 tau, and 7 FUS. Significant positive partial correlations (p < 0.01) were found between hippocampal TDP-43 pathology and hallucinations (R = 0.23), perseverative-compulsive behavior (R = 0.25), depression (R = 0.28), and mania (R = 0.32). Tau pathology in the substantia nigra and locus coeruleus was linked to depression (R = 0.25, R = 0.24). Both TDP-43 and Aβ in the subthalamus were associated with severe disinhibition (R = 0.23, R = 0.25), while apathy correlated with both TDP-43 and tau burden in the parietal lobe (R = 0.27, R = 0.24). Parkinsonism was linked to TDP-43 burden in the substantia nigra (R = 0.33). CONCLUSION: Neuropsychiatric symptoms of FTD are linked to pathology burden in BR beyond the frontal lobes, including subcortical structures such as the hippocampus, the substantia nigra and locus coeruleus. Co-occurring pathologies are not simple bystanders, but could play a role in configuring FTD clinical phenotype. Different pathologies in the same BR correlate with the same symptoms.
- Published
- 2021
- Full Text
- View/download PDF
22. Neuroanatomy of FTD:Whole-brain correlations between symptoms and pathologies
- Author
-
Scarioni, Marta, Gami-Patel, Priya, Peeters, Carel F.W., de Koning, Florianne, Seelaar, Harro, van Swieten, John C., Rozemuller, Annemieke J.M., Hoozemans, Jeroen J., Pijnenburg, Yolande A.L., Dijkstra, Anke A., Scarioni, Marta, Gami-Patel, Priya, Peeters, Carel F.W., de Koning, Florianne, Seelaar, Harro, van Swieten, John C., Rozemuller, Annemieke J.M., Hoozemans, Jeroen J., Pijnenburg, Yolande A.L., and Dijkstra, Anke A.
- Published
- 2021
23. Profound Pathogen-Specific Alterations in Intestinal Microbiota Composition Precede Late-Onset Sepsis in Preterm Infants: A Longitudinal, Multicenter, Case-Control Study
- Author
-
Hassani, Sofia el Manouni el, Niemarkt, Hendrik J., Berkhout, D.J., Peeters, Carel F.W., Hulzebos, C.V., Kaam, Anton H. van, Boode, W.P. de, Boer, N.K. de, Meij, Tim G. J. de, Hassani, Sofia el Manouni el, Niemarkt, Hendrik J., Berkhout, D.J., Peeters, Carel F.W., Hulzebos, C.V., Kaam, Anton H. van, Boode, W.P. de, Boer, N.K. de, and Meij, Tim G. J. de
- Abstract
Contains fulltext : 239291.pdf (Publisher’s version ) (Closed access)
- Published
- 2021
24. Symptom clusters among cancer survivors : what can machine learning techniques tell us?
- Author
-
Neijenhuijs, Koen I., Peeters, Carel F.W., van Weert, Henk, Cuijpers, Pim, Verdonck deLeeuw, Irma, Neijenhuijs, Koen I., Peeters, Carel F.W., van Weert, Henk, Cuijpers, Pim, and Verdonck deLeeuw, Irma
- Abstract
Purpose: Knowledge regarding symptom clusters may inform targeted interventions. The current study investigated symptom clusters among cancer survivors, using machine learning techniques on a large data set. Methods: Data consisted of self-reports of cancer survivors who used a fully automated online application ‘Oncokompas’ that supports them in their self-management. This is done by 1) monitoring their symptoms through patient reported outcome measures (PROMs); and 2) providing a personalized overview of supportive care options tailored to their scores, aiming to reduce symptom burden and improve health-related quality of life. In the present study, data on 26 generic symptoms (physical and psychosocial) were used. Results of the PROM of each symptom are presented to the user as a no well-being risk, moderate well-being risk, or high well-being risk score. Data of 1032 cancer survivors were analysed using Hierarchical Density-Based Spatial Clustering of Applications with Noise (HDBSCAN) on high risk scores and moderate-to-high risk scores separately. Results: When analyzing the high risk scores, seven clusters were extracted: one main cluster which contained most frequently occurring physical and psychosocial symptoms, and six subclusters with different combinations of these symptoms. When analyzing moderate-to-high risk scores, three clusters were extracted: two main clusters were identified, which separated physical symptoms (and their consequences) and psycho-social symptoms, and one subcluster with only body weight issues. Conclusion: There appears to be an inherent difference on the co-occurrence of symptoms dependent on symptom severity. Among survivors with high risk scores, the data showed a clustering of more connections between physical and psycho-social symptoms in separate subclusters. Among survivors with moderate-to-high risk scores, we observed less connections in the clustering between physical and psycho-social symptoms.
- Published
- 2021
25. Outcome prediction of head and neck squamous cell carcinoma by MRI radiomic signatures
- Author
-
Mes, Steven W., van Velden, Floris H.P., Peltenburg, Boris, Peeters, Carel F.W., te Beest, Dennis E., van de Wiel, Mark A., Mekke, Joost, Mulder, Doriene C., Martens, Roland M., Castelijns, Jonas A., Pameijer, Frank A., de Bree, Remco, Boellaard, Ronald, Leemans, C.R., Brakenhoff, Ruud H., de Graaf, Pim, Mes, Steven W., van Velden, Floris H.P., Peltenburg, Boris, Peeters, Carel F.W., te Beest, Dennis E., van de Wiel, Mark A., Mekke, Joost, Mulder, Doriene C., Martens, Roland M., Castelijns, Jonas A., Pameijer, Frank A., de Bree, Remco, Boellaard, Ronald, Leemans, C.R., Brakenhoff, Ruud H., and de Graaf, Pim
- Abstract
Objectives: Head and neck squamous cell carcinoma (HNSCC) shows a remarkable heterogeneity between tumors, which may be captured by a variety of quantitative features extracted from diagnostic images, termed radiomics. The aim of this study was to develop and validate MRI-based radiomic prognostic models in oral and oropharyngeal cancer. Materials and Methods: Native T1-weighted images of four independent, retrospective (2005–2013), patient cohorts (n = 102, n = 76, n = 89, and n = 56) were used to delineate primary tumors, and to extract 545 quantitative features from. Subsequently, redundancy filtering and factor analysis were performed to handle collinearity in the data. Next, radiomic prognostic models were trained and validated to predict overall survival (OS) and relapse-free survival (RFS). Radiomic features were compared to and combined with prognostic models based on standard clinical parameters. Performance was assessed by integrated area under the curve (iAUC). Results: In oral cancer, the radiomic model showed an iAUC of 0.69 (OS) and 0.70 (RFS) in the validation cohort, whereas the iAUC in the oropharyngeal cancer validation cohort was 0.71 (OS) and 0.74 (RFS). By integration of radiomic and clinical variables, the most accurate models were defined (iAUC oral cavity, 0.72 (OS) and 0.74 (RFS); iAUC oropharynx, 0.81 (OS) and 0.78 (RFS)), and these combined models outperformed prognostic models based on standard clinical variables only (p < 0.001). Conclusions: MRI radiomics is feasible in HNSCC despite the known variability in MRI vendors and acquisition protocols, and radiomic features added information to prognostic models based on clinical parameters. Key Points: • MRI radiomics can predict overall survival and relapse-free survival in oral and HPV-negative oropharyngeal cancer. • MRI radiomics provides additional prognostic information to known clinical variables, with the best performance of the combined models. • Variation in MRI vendors and acquisi
- Published
- 2020
26. Identification and Validation of a 3-Gene Methylation Classifier for HPV-Based Cervical Screening on Self-Samples
- Author
-
Verlaat, Wina, primary, Snoek, Barbara C., additional, Heideman, Daniëlle A.M., additional, Wilting, Saskia M., additional, Snijders, Peter J.F., additional, Novianti, Putri W., additional, van Splunter, Annina P., additional, Peeters, Carel F.W., additional, van Trommel, Nienke E., additional, Massuger, Leon F.A.G., additional, Bekkers, Ruud L.M., additional, Melchers, Willem J.G., additional, van Kemenade, Folkert J., additional, Berkhof, Johannes, additional, van de Wiel, Mark A., additional, Meijer, Chris J.L.M., additional, and Steenbergen, Renske D.M., additional
- Published
- 2018
- Full Text
- View/download PDF
27. Testing for pathway (in)activation by using Gaussian graphical models
- Author
-
van Wieringen, Wessel N., Peeters, Carel F.W., de Menezes, Renee X., van de Wiel, Mark A., van Wieringen, Wessel N., Peeters, Carel F.W., de Menezes, Renee X., and van de Wiel, Mark A.
- Abstract
Genes work together in sets known as pathways to contribute to cellular processes, such as apoptosis and cell proliferation. Pathway activation, or inactivation, may be reflected in varying partial correlations between the levels of expression of the genes that constitute the pathway. Here we present a method to identify pathway activation status from two-sample studies. By modelling the levels of expression in each group by using a Gaussian graphical model, their partial correlations are proportional, differing by a common multiplier that reflects the activation status. We estimate model parameters by means of penalized maximum likelihood and evaluate the estimation procedure performance in a simulation study. A permutation scheme to test for pathway activation status is proposed. A reanalysis of publicly available data on the hedgehog pathway in normal and cancer prostate tissue shows its activation in the disease group: an indication that this pathway is involved in oncogenesis. Extensive diagnostics employed in the reanalysis complete the methodology proposed.
- Published
- 2018
- Full Text
- View/download PDF
28. [P3-226]: PROFILING PERIPHERAL METABOLIC DYSREGULATION IN ALZHEIMER's DISEASE: THE ADDED VALUE OF MULTIPLE SIGNATURES
- Author
-
de Leeuw, Francisca A., primary, Peeters, Carel F.W., additional, Kester, Maartje I., additional, Harms, Amy C., additional, Hankemeier, Thomas, additional, Struys, Eduard A., additional, Demirkan, Ayşe, additional, Scheltens, Philip, additional, van Vlijmen, Herman W.T., additional, van de Wiel, Mark A., additional, van Duijn, Cornelia M., additional, van der Flier, Wiesje M., additional, and Teunissen, Charlotte E., additional
- Published
- 2017
- Full Text
- View/download PDF
29. PROFILING PERIPHERAL METABOLIC DYSREGULATION IN ALZHEIMER’S DISEASE: THE ADDED VALUE OF MULTIPLE SIGNATURES
- Author
-
de Leeuw, Francisca A., Peeters, Carel F.W., Kester, Maartje I., Harms, Amy C., Hankemeier, Thomas, Struys, Eduard A., Demirkan, Ayşe, Scheltens, Philip, van Vlijmen, Herman W.T., van de Wiel, Mark A., van Duijn, Cornelia M., van der Flier, Wiesje M., and Teunissen, Charlotte E.
- Published
- 2017
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.