181 results on '"Zavaliangos-Petropulu, Artemis"'
Search Results
2. Chronic Stroke Sensorimotor Impairment Is Related to Smaller Hippocampal Volumes: An ENIGMA Analysis
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Zavaliangos‐Petropulu, Artemis, Lo, Bethany, Donnelly, Miranda R, Schweighofer, Nicolas, Lohse, Keith, Jahanshad, Neda, Barisano, Giuseppe, Banaj, Nerisa, Borich, Michael R, Boyd, Lara A, Buetefisch, Cathrin M, Byblow, Winston D, Cassidy, Jessica M, Charalambous, Charalambos C, Conforto, Adriana B, DiCarlo, Julie A, Dula, Adrienne N, Egorova‐Brumley, Natalia, Etherton, Mark R, Feng, Wuwei, Fercho, Kelene A, Geranmayeh, Fatemeh, Hanlon, Colleen A, Hayward, Kathryn S, Hordacre, Brenton, Kautz, Steven A, Khlif, Mohamed Salah, Kim, Hosung, Kuceyeski, Amy, Lin, David J, Liu, Jingchun, Lotze, Martin, MacIntosh, Bradley J, Margetis, John L, Mohamed, Feroze B, Piras, Fabrizio, Ramos‐Murguialday, Ander, Revill, Kate P, Roberts, Pamela S, Robertson, Andrew D, Schambra, Heidi M, Seo, Na Jin, Shiroishi, Mark S, Stinear, Cathy M, Soekadar, Surjo R, Spalletta, Gianfranco, Taga, Myriam, Tang, Wai Kwong, Thielman, Gregory T, Vecchio, Daniela, Ward, Nick S, Westlye, Lars T, Werden, Emilio, Winstein, Carolee, Wittenberg, George F, Wolf, Steven L, Wong, Kristin A, Yu, Chunshui, Brodtmann, Amy, Cramer, Steven C, Thompson, Paul M, and Liew, Sook‐Lei
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Neurosciences ,Stroke ,Aging ,Brain Disorders ,Cross-Sectional Studies ,Female ,Hippocampus ,Humans ,Male ,Quality of Life ,Recovery of Function ,Stroke Rehabilitation ,Upper Extremity ,hippocampus ,MRI ,sensorimotor impairment ,stroke ,Cardiorespiratory Medicine and Haematology - Abstract
Background Persistent sensorimotor impairments after stroke can negatively impact quality of life. The hippocampus is vulnerable to poststroke secondary degeneration and is involved in sensorimotor behavior but has not been widely studied within the context of poststroke upper-limb sensorimotor impairment. We investigated associations between non-lesioned hippocampal volume and upper limb sensorimotor impairment in people with chronic stroke, hypothesizing that smaller ipsilesional hippocampal volumes would be associated with greater sensorimotor impairment. Methods and Results Cross-sectional T1-weighted magnetic resonance images of the brain were pooled from 357 participants with chronic stroke from 18 research cohorts of the ENIGMA (Enhancing NeuoImaging Genetics through Meta-Analysis) Stroke Recovery Working Group. Sensorimotor impairment was estimated from the FMA-UE (Fugl-Meyer Assessment of Upper Extremity). Robust mixed-effects linear models were used to test associations between poststroke sensorimotor impairment and hippocampal volumes (ipsilesional and contralesional separately; Bonferroni-corrected, P
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- 2022
3. A large, curated, open-source stroke neuroimaging dataset to improve lesion segmentation algorithms
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Liew, Sook-Lei, Lo, Bethany P, Donnelly, Miranda R, Zavaliangos-Petropulu, Artemis, Jeong, Jessica N, Barisano, Giuseppe, Hutton, Alexandre, Simon, Julia P, Juliano, Julia M, Suri, Anisha, Wang, Zhizhuo, Abdullah, Aisha, Kim, Jun, Ard, Tyler, Banaj, Nerisa, Borich, Michael R, Boyd, Lara A, Brodtmann, Amy, Buetefisch, Cathrin M, Cao, Lei, Cassidy, Jessica M, Ciullo, Valentina, Conforto, Adriana B, Cramer, Steven C, Dacosta-Aguayo, Rosalia, de la Rosa, Ezequiel, Domin, Martin, Dula, Adrienne N, Feng, Wuwei, Franco, Alexandre R, Geranmayeh, Fatemeh, Gramfort, Alexandre, Gregory, Chris M, Hanlon, Colleen A, Hordacre, Brenton G, Kautz, Steven A, Khlif, Mohamed Salah, Kim, Hosung, Kirschke, Jan S, Liu, Jingchun, Lotze, Martin, MacIntosh, Bradley J, Mataró, Maria, Mohamed, Feroze B, Nordvik, Jan E, Park, Gilsoon, Pienta, Amy, Piras, Fabrizio, Redman, Shane M, Revill, Kate P, Reyes, Mauricio, Robertson, Andrew D, Seo, Na Jin, Soekadar, Surjo R, Spalletta, Gianfranco, Sweet, Alison, Telenczuk, Maria, Thielman, Gregory, Westlye, Lars T, Winstein, Carolee J, Wittenberg, George F, Wong, Kristin A, and Yu, Chunshui
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Biological Sciences ,Bioinformatics and Computational Biology ,Physical Sciences ,Stroke ,Neurosciences ,Bioengineering ,Networking and Information Technology R&D (NITRD) ,Algorithms ,Brain ,Humans ,Image Processing ,Computer-Assisted ,Magnetic Resonance Imaging ,Neuroimaging - Abstract
Accurate lesion segmentation is critical in stroke rehabilitation research for the quantification of lesion burden and accurate image processing. Current automated lesion segmentation methods for T1-weighted (T1w) MRIs, commonly used in stroke research, lack accuracy and reliability. Manual segmentation remains the gold standard, but it is time-consuming, subjective, and requires neuroanatomical expertise. We previously released an open-source dataset of stroke T1w MRIs and manually-segmented lesion masks (ATLAS v1.2, N = 304) to encourage the development of better algorithms. However, many methods developed with ATLAS v1.2 report low accuracy, are not publicly accessible or are improperly validated, limiting their utility to the field. Here we present ATLAS v2.0 (N = 1271), a larger dataset of T1w MRIs and manually segmented lesion masks that includes training (n = 655), test (hidden masks, n = 300), and generalizability (hidden MRIs and masks, n = 316) datasets. Algorithm development using this larger sample should lead to more robust solutions; the hidden datasets allow for unbiased performance evaluation via segmentation challenges. We anticipate that ATLAS v2.0 will lead to improved algorithms, facilitating large-scale stroke research.
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- 2022
4. The ENIGMA Stroke Recovery Working Group: Big data neuroimaging to study brain–behavior relationships after stroke
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Liew, Sook‐Lei, Zavaliangos‐Petropulu, Artemis, Jahanshad, Neda, Lang, Catherine E, Hayward, Kathryn S, Lohse, Keith R, Juliano, Julia M, Assogna, Francesca, Baugh, Lee A, Bhattacharya, Anup K, Bigjahan, Bavrina, Borich, Michael R, Boyd, Lara A, Brodtmann, Amy, Buetefisch, Cathrin M, Byblow, Winston D, Cassidy, Jessica M, Conforto, Adriana B, Craddock, R Cameron, Dimyan, Michael A, Dula, Adrienne N, Ermer, Elsa, Etherton, Mark R, Fercho, Kelene A, Gregory, Chris M, Hadidchi, Shahram, Holguin, Jess A, Hwang, Darryl H, Jung, Simon, Kautz, Steven A, Khlif, Mohamed Salah, Khoshab, Nima, Kim, Bokkyu, Kim, Hosung, Kuceyeski, Amy, Lotze, Martin, MacIntosh, Bradley J, Margetis, John L, Mohamed, Feroze B, Piras, Fabrizio, Ramos‐Murguialday, Ander, Richard, Geneviève, Roberts, Pamela, Robertson, Andrew D, Rondina, Jane M, Rost, Natalia S, Sanossian, Nerses, Schweighofer, Nicolas, Seo, Na Jin, Shiroishi, Mark S, Soekadar, Surjo R, Spalletta, Gianfranco, Stinear, Cathy M, Suri, Anisha, Tang, Wai Kwong W, Thielman, Gregory T, Vecchio, Daniela, Villringer, Arno, Ward, Nick S, Werden, Emilio, Westlye, Lars T, Winstein, Carolee, Wittenberg, George F, Wong, Kristin A, Yu, Chunshui, Cramer, Steven C, and Thompson, Paul M
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Stroke ,Brain Disorders ,Biomedical Imaging ,Neurosciences ,Behavioral and Social Science ,Humans ,Magnetic Resonance Imaging ,Multicenter Studies as Topic ,Neuroimaging ,Stroke Rehabilitation ,big data ,lesions ,MRI ,neuroinformatics ,stroke ,Cognitive Sciences ,Experimental Psychology - Abstract
The goal of the Enhancing Neuroimaging Genetics through Meta-Analysis (ENIGMA) Stroke Recovery working group is to understand brain and behavior relationships using well-powered meta- and mega-analytic approaches. ENIGMA Stroke Recovery has data from over 2,100 stroke patients collected across 39 research studies and 10 countries around the world, comprising the largest multisite retrospective stroke data collaboration to date. This article outlines the efforts taken by the ENIGMA Stroke Recovery working group to develop neuroinformatics protocols and methods to manage multisite stroke brain magnetic resonance imaging, behavioral and demographics data. Specifically, the processes for scalable data intake and preprocessing, multisite data harmonization, and large-scale stroke lesion analysis are described, and challenges unique to this type of big data collaboration in stroke research are discussed. Finally, future directions and limitations, as well as recommendations for improved data harmonization through prospective data collection and data management, are provided.
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- 2022
5. A meta‐analysis of deep brain structural shape and asymmetry abnormalities in 2,833 individuals with schizophrenia compared with 3,929 healthy volunteers via the ENIGMA Consortium
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Gutman, Boris A, Erp, Theo GM, Alpert, Kathryn, Ching, Christopher RK, Isaev, Dmitry, Ragothaman, Anjani, Jahanshad, Neda, Saremi, Arvin, Zavaliangos‐Petropulu, Artemis, Glahn, David C, Shen, Li, Cong, Shan, Alnæs, Dag, Andreassen, Ole Andreas, Doan, Nhat Trung, Westlye, Lars T, Kochunov, Peter, Satterthwaite, Theodore D, Wolf, Daniel H, Huang, Alexander J, Kessler, Charles, Weideman, Andrea, Nguyen, Dana, Mueller, Bryon A, Faziola, Lawrence, Potkin, Steven G, Preda, Adrian, Mathalon, Daniel H, Bustillo, Juan, Calhoun, Vince, Ford, Judith M, Walton, Esther, Ehrlich, Stefan, Ducci, Giuseppe, Banaj, Nerisa, Piras, Fabrizio, Piras, Federica, Spalletta, Gianfranco, Canales‐Rodríguez, Erick J, Fuentes‐Claramonte, Paola, Pomarol‐Clotet, Edith, Radua, Joaquim, Salvador, Raymond, Sarró, Salvador, Dickie, Erin W, Voineskos, Aristotle, Tordesillas‐Gutiérrez, Diana, Crespo‐Facorro, Benedicto, Setién‐Suero, Esther, Son, Jacqueline Mayoral, Borgwardt, Stefan, Schönborn‐Harrisberger, Fabienne, Morris, Derek, Donohoe, Gary, Holleran, Laurena, Cannon, Dara, McDonald, Colm, Corvin, Aiden, Gill, Michael, Filho, Geraldo Busatto, Rosa, Pedro GP, Serpa, Mauricio H, Zanetti, Marcus V, Lebedeva, Irina, Kaleda, Vasily, Tomyshev, Alexander, Crow, Tim, James, Anthony, Cervenka, Simon, Sellgren, Carl M, Fatouros‐Bergman, Helena, Agartz, Ingrid, Howells, Fleur, Stein, Dan J, Temmingh, Henk, Uhlmann, Anne, Zubicaray, Greig I, McMahon, Katie L, Wright, Margie, Cobia, Derin, Csernansky, John G, Thompson, Paul M, Turner, Jessica A, and Wang, Lei
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Brain Disorders ,Mental Health ,Neurosciences ,Schizophrenia ,Mental health ,Good Health and Well Being ,Amygdala ,Corpus Striatum ,Hippocampus ,Humans ,Multicenter Studies as Topic ,Neuroimaging ,Thalamus ,schizophrenia ,structure ,subcortical shape ,Cognitive Sciences ,Experimental Psychology - Abstract
Schizophrenia is associated with widespread alterations in subcortical brain structure. While analytic methods have enabled more detailed morphometric characterization, findings are often equivocal. In this meta-analysis, we employed the harmonized ENIGMA shape analysis protocols to collaboratively investigate subcortical brain structure shape differences between individuals with schizophrenia and healthy control participants. The study analyzed data from 2,833 individuals with schizophrenia and 3,929 healthy control participants contributed by 21 worldwide research groups participating in the ENIGMA Schizophrenia Working Group. Harmonized shape analysis protocols were applied to each site's data independently for bilateral hippocampus, amygdala, caudate, accumbens, putamen, pallidum, and thalamus obtained from T1-weighted structural MRI scans. Mass univariate meta-analyses revealed more-concave-than-convex shape differences in the hippocampus, amygdala, accumbens, and thalamus in individuals with schizophrenia compared with control participants, more-convex-than-concave shape differences in the putamen and pallidum, and both concave and convex shape differences in the caudate. Patterns of exaggerated asymmetry were observed across the hippocampus, amygdala, and thalamus in individuals with schizophrenia compared to control participants, while diminished asymmetry encompassed ventral striatum and ventral and dorsal thalamus. Our analyses also revealed that higher chlorpromazine dose equivalents and increased positive symptom levels were associated with patterns of contiguous convex shape differences across multiple subcortical structures. Findings from our shape meta-analysis suggest that common neurobiological mechanisms may contribute to gray matter reduction across multiple subcortical regions, thus enhancing our understanding of the nature of network disorganization in schizophrenia.
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- 2022
6. Smaller spared subcortical nuclei are associated with worse post-stroke sensorimotor outcomes in 28 cohorts worldwide
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Liew, Sook-Lei, Zavaliangos-Petropulu, Artemis, Schweighofer, Nicolas, Jahanshad, Neda, Lang, Catherine E, Lohse, Keith R, Banaj, Nerisa, Barisano, Giuseppe, Baugh, Lee A, Bhattacharya, Anup K, Bigjahan, Bavrina, Borich, Michael R, Boyd, Lara A, Brodtmann, Amy, Buetefisch, Cathrin M, Byblow, Winston D, Cassidy, Jessica M, Charalambous, Charalambos C, Ciullo, Valentina, Conforto, Adriana B, Craddock, Richard C, Dula, Adrienne N, Egorova, Natalia, Feng, Wuwei, Fercho, Kelene A, Gregory, Chris M, Hanlon, Colleen A, Hayward, Kathryn S, Holguin, Jess A, Hordacre, Brenton, Hwang, Darryl H, Kautz, Steven A, Khlif, Mohamed Salah, Kim, Bokkyu, Kim, Hosung, Kuceyeski, Amy, Lo, Bethany, Liu, Jingchun, Lin, David, Lotze, Martin, MacIntosh, Bradley J, Margetis, John L, Mohamed, Feroze B, Nordvik, Jan Egil, Petoe, Matthew A, Piras, Fabrizio, Raju, Sharmila, Ramos-Murguialday, Ander, Revill, Kate P, Roberts, Pamela, Robertson, Andrew D, Schambra, Heidi M, Seo, Na Jin, Shiroishi, Mark S, Soekadar, Surjo R, Spalletta, Gianfranco, Stinear, Cathy M, Suri, Anisha, Tang, Wai Kwong, Thielman, Gregory T, Thijs, Vincent N, Vecchio, Daniela, Ward, Nick S, Westlye, Lars T, Winstein, Carolee J, Wittenberg, George F, Wong, Kristin A, Yu, Chunshui, Wolf, Steven L, Cramer, Steven C, Thompson, Paul M, Baugh, Lee, Gallaguet, Adrià Bermudo, Bhattacharya, Anup, Borich, Michael, Boyd, Lara, Brown, Truman, Buetefisch, Cathrin, Byblow, Winston, Cassidy, Jessica, Charalambous, Charalambos, Cloutier, Alison, Cole, James, Conforto, Adriana, Craddock, Richard, Cramer, Steven, Aguayo, Rosalia Dacosta, DiCarlo, Julie, Dimyan, Michael, Domin, Martin, Donnellly, Miranda, Dula, Adrienne, Edwardson, Matthew, and Ermer, Elsa
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Biological Psychology ,Psychology ,Rehabilitation ,Stroke ,Brain Disorders ,Neurosciences ,Aetiology ,2.1 Biological and endogenous factors ,stroke ,rehabilitation ,sensorimotor behaviour ,MRI ,subcortical volumes ,ENIGMA Stroke Recovery Working Group ,Clinical sciences ,Biological psychology - Abstract
Up to two-thirds of stroke survivors experience persistent sensorimotor impairments. Recovery relies on the integrity of spared brain areas to compensate for damaged tissue. Deep grey matter structures play a critical role in the control and regulation of sensorimotor circuits. The goal of this work is to identify associations between volumes of spared subcortical nuclei and sensorimotor behaviour at different timepoints after stroke. We pooled high-resolution T1-weighted MRI brain scans and behavioural data in 828 individuals with unilateral stroke from 28 cohorts worldwide. Cross-sectional analyses using linear mixed-effects models related post-stroke sensorimotor behaviour to non-lesioned subcortical volumes (Bonferroni-corrected, P
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- 2021
7. Neurocognitive effects of subanesthetic serial ketamine infusions in treatment resistant depression
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Zavaliangos-Petropulu, Artemis, McClintock, Shawn M., Khalil, Jacqueline, Joshi, Shantanu H., Taraku, Brandon, Al-Sharif, Noor B., Espinoza, Randall T., and Narr, Katherine L.
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- 2023
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8. Mapping Subcortical Brain Alterations in 22q11.2 Deletion Syndrome: Effects of Deletion Size and Convergence With Idiopathic Neuropsychiatric Illness
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Ching, Christopher RK, Gutman, Boris A, Sun, Daqiang, Villalon Reina, Julio, Ragothaman, Anjanibhargavi, Isaev, Dmitry, Zavaliangos-Petropulu, Artemis, Lin, Amy, Jonas, Rachel K, Kushan, Leila, Pacheco-Hansen, Laura, Vajdi, Ariana, Forsyth, Jennifer K, Jalbrzikowski, Maria, Bakker, Geor, van Amelsvoort, Therese, Antshel, Kevin M, Fremont, Wanda, Kates, Wendy R, Campbell, Linda E, McCabe, Kathryn L, Craig, Michael C, Daly, Eileen, Gudbrandsen, Maria, Murphy, Clodagh M, Murphy, Declan G, Murphy, Kieran C, Fiksinski, Ania, Koops, Sanne, Vorstman, Jacob, Crowley, T Blaine, Emanuel, Beverly S, Gur, Raquel E, McDonald-McGinn, Donna M, Roalf, David R, Ruparel, Kosha, Schmitt, J Eric, Zackai, Elaine H, Durdle, Courtney A, Goodrich-Hunsaker, Naomi J, Simon, Tony J, Bassett, Anne S, Butcher, Nancy J, Chow, Eva WC, Vila-Rodriguez, Fidel, Cunningham, Adam, Doherty, Joanne, Linden, David E, Moss, Hayley, Owen, Michael J, van den Bree, Marianne, Crossley, Nicolas A, Repetto, Gabriela M, Thompson, Paul M, and Bearden, Carrie E
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Clinical Research ,Serious Mental Illness ,Brain Disorders ,Mental Health ,Schizophrenia ,Clinical Trials and Supportive Activities ,Neurosciences ,2.1 Biological and endogenous factors ,Aetiology ,Mental health ,Adolescent ,Adult ,Atrophy ,Brain ,Brain Mapping ,Case-Control Studies ,Child ,DiGeorge Syndrome ,Female ,Humans ,Hypertrophy ,Magnetic Resonance Imaging ,Male ,Mental Disorders ,Middle Aged ,Psychotic Disorders ,Young Adult ,22q11.2 Deletion Syndrome ,Copy Number Variant ,Neuroanatomy ,Neurodevelopment ,Psychosis ,Medical and Health Sciences ,Psychology and Cognitive Sciences ,Psychiatry - Abstract
Objective22q11.2 deletion syndrome (22q11DS) is among the strongest known genetic risk factors for schizophrenia. Previous studies have reported variable alterations in subcortical brain structures in 22q11DS. To better characterize subcortical alterations in 22q11DS, including modulating effects of clinical and genetic heterogeneity, the authors studied a large multicenter neuroimaging cohort from the ENIGMA 22q11.2 Deletion Syndrome Working Group.MethodsSubcortical structures were measured using harmonized protocols for gross volume and subcortical shape morphometry in 533 individuals with 22q11DS and 330 matched healthy control subjects (age range, 6-56 years; 49% female).ResultsCompared with the control group, the 22q11DS group showed lower intracranial volume (ICV) and thalamus, putamen, hippocampus, and amygdala volumes and greater lateral ventricle, caudate, and accumbens volumes (Cohen's d values, -0.90 to 0.93). Shape analysis revealed complex differences in the 22q11DS group across all structures. The larger A-D deletion was associated with more extensive shape alterations compared with the smaller A-B deletion. Participants with 22q11DS with psychosis showed lower ICV and hippocampus, amygdala, and thalamus volumes (Cohen's d values, -0.91 to 0.53) compared with participants with 22q11DS without psychosis. Shape analysis revealed lower thickness and surface area across subregions of these structures. Compared with subcortical findings from other neuropsychiatric disorders studied by the ENIGMA consortium, significant convergence was observed between participants with 22q11DS with psychosis and participants with schizophrenia, bipolar disorder, major depressive disorder, and obsessive-compulsive disorder.ConclusionsIn the largest neuroimaging study of 22q11DS to date, the authors found widespread alterations to subcortical brain structures, which were affected by deletion size and psychotic illness. Findings indicate significant overlap between 22q11DS-associated psychosis, idiopathic schizophrenia, and other severe neuropsychiatric illnesses.
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- 2020
9. Neuroimaging-Derived Biomarkers of the Antidepressant Effects of Ketamine
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Zavaliangos-Petropulu, Artemis, Al-Sharif, Noor B., Taraku, Brandon, Leaver, Amber M., Sahib, Ashish K., Espinoza, Randall T., and Narr, Katherine L.
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- 2023
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10. White Matter Integrity and Chronic Poststroke Upper Limb Function: An ENIGMA Stroke Recovery Analysis
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Domin, Martin, Hordacre, Brenton, Hok, Pavel, Boyd, Lara A., Conforto, Adriana B., Andrushko, Justin W., Borich, Michael R., Craddock, Richard C., Donnelly, Miranda R., Dula, Adrienne N., Warach, Steven J., Kautz, Steven A., Lo, Bethany P., Schranz, Christian, Seo, Na Jin, Srivastava, Shraddha, Wong, Kristin A., Zavaliangos-Petropulu, Artemis, Thompson, Paul M., Liew, Sook-Lei, and Lotze, Martin
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- 2023
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11. Deep Learning for Quality Control of Subcortical Brain 3D Shape Models
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Petrov, Dmitry, Kuznetsov, Boris A. Gutman Egor, van Erp, Theo G. M., Turner, Jessica A., Schmaal, Lianne, Veltman, Dick, Wang, Lei, Alpert, Kathryn, Isaev, Dmitry, Zavaliangos-Petropulu, Artemis, Ching, Christopher R. K., Calhoun, Vince, Glahn, David, Satterthwaite, Theodore D., Andreassen, Ole Andreas, Borgwardt, Stefan, Howells, Fleur, Groenewold, Nynke, Voineskos, Aristotle, Radua, Joaquim, Potkin, Steven G., Crespo-Facorro, Benedicto, Tordesillas-Gutierrez, Diana, Shen, Li, Lebedeva, Irina, Spalletta, Gianfranco, Donohoe, Gary, Kochunov, Peter, Rosa, Pedro G. P., James, Anthony, Dannlowski, Udo, Baune, Bernhard T., Aleman, Andre, Gotlib, Ian H., Walter, Henrik, Walter, Martin, Soares, Jair C., Ehrlich, Stefan, Gur, Ruben C., Doan, N. Trung, Agartz, Ingrid, Westlye, Lars T., Harrisberger, Fabienne, Riecher-Rossler, Anita, Uhlmann, Anne, Stein, Dan J., Dickie, Erin W., Pomarol-Clotet, Edith, Fuentes-Claramonte, Paola, Canales-Rodriguez, Erick Jorge, Salvador, Raymond, Huang, Alexander J., Roiz-Santianez, Roberto, Cong, Shan, Tomyshev, Alexander, Piras, Fabrizio, Vecchio, Daniela, Banaj, Nerisa, Ciullo, Valentina, Hong, Elliot, Busatto, Geraldo, Zanetti, Marcus V., Serpa, Mauricio H., Cervenka, Simon, Kelly, Sinead, Grotegerd, Dominik, Sacchet, Matthew D., Veer, Ilya M., Li, Meng, Wu, Mon-Ju, Irungu, Benson, Walton, Esther, and Thompson, Paul M.
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Quantitative Biology - Neurons and Cognition - Abstract
We present several deep learning models for assessing the morphometric fidelity of deep grey matter region models extracted from brain MRI. We test three different convolutional neural net architectures (VGGNet, ResNet and Inception) over 2D maps of geometric features. Further, we present a novel geometry feature augmentation technique based on a parametric spherical mapping. Finally, we present an approach for model decision visualization, allowing human raters to see the areas of subcortical shapes most likely to be deemed of failing quality by the machine. Our training data is comprised of 5200 subjects from the ENIGMA Schizophrenia MRI cohorts, and our test dataset contains 1500 subjects from the ENIGMA Major Depressive Disorder cohorts. Our final models reduce human rater time by 46-70%. ResNet outperforms VGGNet and Inception for all of our predictive tasks., Comment: Accepted to Shape in Medical Imaging (ShapeMI) workshop at MICCAI 2018. arXiv admin note: substantial text overlap with arXiv:1707.06353
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- 2018
12. Diffusion MRI Indices and Their Relation to Cognitive Impairment in Brain Aging: The Updated Multi-protocol Approach in ADNI3
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Zavaliangos-Petropulu, Artemis, Nir, Talia M, Thomopoulos, Sophia I, Reid, Robert I, Bernstein, Matt A, Borowski, Bret, Jack, Clifford R, Weiner, Michael W, Jahanshad, Neda, and Thompson, Paul M
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Biomedical and Clinical Sciences ,Information and Computing Sciences ,Neurosciences ,Applied Computing ,Machine Learning ,Mental Health ,Acquired Cognitive Impairment ,Dementia ,Alzheimer's Disease including Alzheimer's Disease Related Dementias (AD/ADRD) ,Alzheimer's Disease ,Aging ,Neurodegenerative ,Biomedical Imaging ,Clinical Research ,Brain Disorders ,4.2 Evaluation of markers and technologies ,Neurological ,Good Health and Well Being ,Alzheimer's disease ,ADNI3 ,white matter ,DTI ,multi-site ,harmonization ,TDF ,ComBat ,Alzheimer’s disease ,Cognitive Sciences ,Applied computing ,Machine learning - Abstract
Brain imaging with diffusion-weighted MRI (dMRI) is sensitive to microstructural white matter (WM) changes associated with brain aging and neurodegeneration. In its third phase, the Alzheimer's Disease Neuroimaging Initiative (ADNI3) is collecting data across multiple sites and scanners using different dMRI acquisition protocols, to better understand disease effects. It is vital to understand when data can be pooled across scanners, and how the choice of dMRI protocol affects the sensitivity of extracted measures to differences in clinical impairment. Here, we analyzed ADNI3 data from 317 participants (mean age: 75.4 ± 7.9 years; 143 men/174 women), who were each scanned at one of 47 sites with one of six dMRI protocols using scanners from three different manufacturers. We computed four standard diffusion tensor imaging (DTI) indices including fractional anisotropy (FADTI) and mean, radial, and axial diffusivity, and one FA index based on the tensor distribution function (FATDF), in 24 bilaterally averaged WM regions of interest. We found that protocol differences significantly affected dMRI indices, in particular FADTI. We ranked the diffusion indices for their strength of association with four clinical assessments. In addition to diagnosis, we evaluated cognitive impairment as indexed by three commonly used screening tools for detecting dementia and AD: the AD Assessment Scale (ADAS-cog), the Mini-Mental State Examination (MMSE), and the Clinical Dementia Rating scale sum-of-boxes (CDR-sob). Using a nested random-effects regression model to account for protocol and site, we found that across all dMRI indices and clinical measures, the hippocampal-cingulum and fornix (crus)/stria terminalis regions most consistently showed strong associations with clinical impairment. Overall, the greatest effect sizes were detected in the hippocampal-cingulum (CGH) and uncinate fasciculus (UNC) for associations between axial or mean diffusivity and CDR-sob. FATDF detected robust widespread associations with clinical measures, while FADTI was the weakest of the five indices for detecting associations. Ultimately, we were able to successfully pool dMRI data from multiple acquisition protocols from ADNI3 and detect consistent and robust associations with clinical impairment and age.
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- 2019
13. Machine Learning for Large-Scale Quality Control of 3D Shape Models in Neuroimaging
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Petrov, Dmitry, Gutman, Boris A., Shih-Hua, Yu, van Erp, Theo G. M., Turner, Jessica A., Schmaal, Lianne, Veltman, Dick, Wang, Lei, Alpert, Kathryn, Isaev, Dmitry, Zavaliangos-Petropulu, Artemis, Ching, Christopher R. K., Calhoun, Vince, Glahn, David, Satterthwaite, Theodore D., Andreasen, Ole Andreas, Borgwardt, Stefan, Howells, Fleur, Groenewold, Nynke, Voineskos, Aristotle, Radua, Joaquim, Potkin, Steven G., Crespo-Facorro, Benedicto, Tordesillas-Gutierrez, Diana, Shen, Li, Lebedeva, Irina, Spalletta, Gianfranco, Donohoe, Gary, Kochunov, Peter, Rosa, Pedro G. P., James, Anthony, Dannlowski, Udo, Baune, Bernhard T., Aleman, Andre, Gotlib, Ian H., Walter, Henrik, Walter, Martin, Soares, Jair C., Ehrlich, Stefan, Gur, Ruben C., Doan, N. Trung, Agartz, Ingrid, Westlye, Lars T., Harrisberger, Fabienne, Riecher-Rossler, Anita, Uhlmann, Anne, Stein, Dan J., Dickie, Erin W., Pomarol-Clotet, Edith, Fuentes-Claramonte, Paola, Canales-Rodriguez, Erick Jorge, Salvador, Raymond, Huang, Alexander J., Roiz-Santianez, Roberto, Cong, Shan, Tomyshev, Alexander, Piras, Fabrizio, Vecchio, Daniela, Banaj, Nerisa, Ciullo, Valentina, Hong, Elliot, Busatto, Geraldo, Zanetti, Marcus V., Serpa, Mauricio H., Cervenka, Simon, Kelly, Sinead, Grotegerd, Dominik, Sacchet, Matthew D., Veer, Ilya M., Li, Meng, Wu, Mon-Ju, Irungu, Benson, Walton, Esther, and Thompson, Paul M.
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Quantitative Biology - Quantitative Methods - Abstract
As very large studies of complex neuroimaging phenotypes become more common, human quality assessment of MRI-derived data remains one of the last major bottlenecks. Few attempts have so far been made to address this issue with machine learning. In this work, we optimize predictive models of quality for meshes representing deep brain structure shapes. We use standard vertex-wise and global shape features computed homologously across 19 cohorts and over 7500 human-rated subjects, training kernelized Support Vector Machine and Gradient Boosted Decision Trees classifiers to detect meshes of failing quality. Our models generalize across datasets and diseases, reducing human workload by 30-70\%, or equivalently hundreds of human rater hours for datasets of comparable size, with recall rates approaching inter-rater reliability., Comment: Arxiv version of the MICCAI 2017 Machine Learning in Medical Imaging workshop paper
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- 2017
14. Pipeline for Analyzing Lesions After Stroke (PALS)
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Ito, Kaori L, Kumar, Amit, Zavaliangos-Petropulu, Artemis, Cramer, Steven C, and Liew, Sook-Lei
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Information and Computing Sciences ,Applied Computing ,Machine Learning ,Networking and Information Technology R&D (NITRD) ,Neurosciences ,Stroke ,stroke ,big data ,lesion analysis ,lesion load ,MRI imaging ,neuroimaging ,stroke recovery ,Cognitive Sciences ,Applied computing ,Machine learning - Abstract
Lesion analyses are critical for drawing insights about stroke injury and recovery, and their importance is underscored by growing efforts to collect and combine stroke neuroimaging data across research sites. However, while there are numerous processing pipelines for neuroimaging data in general, few can be smoothly applied to stroke data due to complications analyzing the lesioned region. As researchers often use their own tools or manual methods for stroke MRI analysis, this could lead to greater errors and difficulty replicating findings over time and across sites. Rigorous analysis protocols and quality control pipelines are thus urgently needed for stroke neuroimaging. To this end, we created the Pipeline for Analyzing Lesions after Stroke (PALS; DOI: https://doi.org/10.5281/zenodo.1266980), a scalable and user-friendly toolbox to facilitate and ensure quality in stroke research specifically using T1-weighted MRIs. The PALS toolbox offers four modules integrated into a single pipeline, including (1) reorientation to radiological convention, (2) lesion correction for healthy white matter voxels, (3) lesion load calculation, and (4) visual quality control. In the present paper, we discuss each module and provide validation and example cases of our toolbox using multi-site data. Importantly, we also show that lesion correction with PALS significantly improves similarity between manual lesion segmentations by different tracers (z = 3.43, p = 0.0018). PALS can be found online at https://github.com/npnl/PALS. Future work will expand the PALS capabilities to include multimodal stroke imaging. We hope PALS will be a useful tool for the stroke neuroimaging community and foster new clinical insights.
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- 2018
15. Fractional anisotropy derived from the diffusion tensor distribution function boosts power to detect Alzheimer's disease deficits
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Nir, Talia M, Jahanshad, Neda, Villalon‐Reina, Julio E, Isaev, Dmitry, Zavaliangos‐Petropulu, Artemis, Zhan, Liang, Leow, Alex D, Jack, Clifford R, Weiner, Michael W, Thompson, Paul M, and Initiative, for the Alzheimer's Diseaase Neuroimaginng
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Engineering ,Biomedical Engineering ,Aging ,Dementia ,Alzheimer's Disease ,Neurosciences ,Clinical Research ,Acquired Cognitive Impairment ,Biomedical Imaging ,Alzheimer's Disease including Alzheimer's Disease Related Dementias (AD/ADRD) ,Neurodegenerative ,Bioengineering ,Brain Disorders ,Neurological ,Aged ,Alzheimer Disease ,Anisotropy ,Brain ,Brain Mapping ,Cognition Disorders ,Diffusion Magnetic Resonance Imaging ,Female ,Hippocampus ,Humans ,Image Processing ,Computer-Assisted ,Longitudinal Studies ,Male ,Memory ,Memory Disorders ,Middle Aged ,Reproducibility of Results ,White Matter ,Alzheimer's disease ,white matter ,diffusion-weighted imaging ,fractional anisotropy ,tensor distribution function ,Alzheimer's Diseaase Neuroimaginng Initiative ,Nuclear Medicine & Medical Imaging ,Biomedical engineering - Abstract
PurposeIn diffusion MRI (dMRI), fractional anisotropy derived from the single-tensor model (FADTI ) is the most widely used metric to characterize white matter (WM) microarchitecture, despite known limitations in regions with crossing fibers. Due to time constraints when scanning patients in clinical settings, high angular resolution diffusion imaging acquisition protocols, often used to overcome these limitations, are still rare in clinical population studies. However, the tensor distribution function (TDF) may be used to model multiple underlying fibers by representing the diffusion profile as a probabilistic mixture of tensors.MethodsWe compared the ability of standard FADTI and TDF-derived FA (FATDF ), calculated from a range of dMRI angular resolutions (41, 30, 15, and 7 gradient directions), to profile WM deficits in 251 individuals from the Alzheimer's Disease Neuroimaging Initiative and to detect associations with 1) Alzheimer's disease diagnosis, 2) Clinical Dementia Rating scores, and 3) average hippocampal volume.ResultsAcross angular resolutions and statistical tests, FATDF showed larger effect sizes than FADTI , particularly in regions preferentially affected by Alzheimer's disease, and was less susceptible to crossing fiber anomalies.ConclusionThe TDF "corrected" form of FA may be a more sensitive and accurate alternative to the commonly used FADTI , even in clinical quality dMRI data. Magn Reson Med 78:2322-2333, 2017. © 2017 International Society for Magnetic Resonance in Medicine.
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- 2017
16. 182. Transcriptional Profiling of Antidepressant Ketamine Treatment
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Zavaliangos-Petropulu, Artemis, primary, Boltz, Toni, additional, Zhan, Lingyu, additional, Al-Sharif, Noor, additional, Taraku, Brandon, additional, Congdon, Eliza, additional, Espinoza, Randall, additional, Narr, Katherine, additional, and Ophoff, Roel, additional
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- 2024
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17. 187. Ketamine Modulates Functional Brain Network Dynamics in Major Depression
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Taraku, Brandon, primary, Nomi, Jason, additional, Zavaliangos-Petropulu, Artemis, additional, Al-Sharif, Noor, additional, Pfeiffer, Paloma, additional, Espinoza, Randall, additional, and Narr, Katherine, additional
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- 2024
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18. Modulation of habenular and nucleus accumbens functional connectivity by ketamine in major depression.
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Taraku, Brandon, Loureiro, Joana R., Sahib, Ashish K., Zavaliangos‐Petropulu, Artemis, Al‐Sharif, Noor, Leaver, Amber M., Wade, Benjamin, Joshi, Shantanu, Woods, Roger P., Espinoza, Randall, and Narr, Katherine L.
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- 2024
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19. Ketamine treatment modulates habenular and nucleus accumbens static and dynamic functional connectivity in major depression
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Taraku, Brandon, primary, Loureiro, Joana R., additional, Sahib, Ashish K., additional, Zavaliangos-Petropulu, Artemis, additional, Al-Sharif, Noor, additional, Leaver, Amber, additional, Wade, Benjamin, additional, Joshi, Shantanu, additional, Woods, Roger P., additional, Espinoza, Randall, additional, and Narr, Katherine L., additional
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- 2023
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20. Feature Selection Improves the Accuracy of Classifying Alzheimer Disease Using Diffusion Tensor Images
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Demirhan, Ayşe, Nir, Talia M, Zavaliangos-Petropulu, Artemis, Jack, Clifford R, Weiner, Michael W, Bernstein, Matt A, Thompson, Paul M, and Jahanshad, Neda
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Biological Psychology ,Information and Computing Sciences ,Psychology ,Biomedical Imaging ,Neurodegenerative ,Neurosciences ,Aging ,Dementia ,Alzheimer's Disease ,Acquired Cognitive Impairment ,Alzheimer's Disease including Alzheimer's Disease Related Dementias (AD/ADRD) ,Clinical Research ,Bioengineering ,Brain Disorders ,2.1 Biological and endogenous factors ,Aetiology ,Neurological ,diffusion tensor imaging ,fractional anisotropy ,Alzheimer's disease ,voxel-based analysis ,support vector machines ,Alzheimer’s Disease Neuroimaging Initiative ,Alzheimer’s disease - Abstract
Diffusion tensor imaging (DTI) has recently been added to several large-scale studies of Alzheimer's disease (AD), such as the Alzheimer's Disease Neuroimaging Initiative (ADNI), to investigate white matter (WM) abnormalities not detectable on standard anatomical MRI. Disease effects can be widespread, and the profile of WM abnormalities across tracts is still not fully understood. Here we analyzed image-wide measures from DTI fractional anisotropy (FA) maps to classify AD patients (n=43), mild cognitive impairment (n=114) and cognitively healthy elderly controls (n=70). We used voxelwise maps of FA along with averages in WM regions of interest (ROI) to drive a Support Vector Machine. We further used the ReliefF algorithm to select the most discriminative WM voxels for classification. This improved accuracy for all classification tasks by up to 15%. We found several clusters formed by the ReliefF algorithm, highlighting specific pathways affected in AD but not always captured when analyzing ROIs.
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- 2015
21. White matter hyperintensities modify relationships between corticospinal tract damage and motor outcomes after stroke
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Ferris, Jennifer K., primary, Lo, Bethany P., additional, Barisano, Giuseppe, additional, Brodtmann, Amy, additional, Buetefisch, Cathrin M., additional, Conforto, Adriana B., additional, Donnelly, Miranda H., additional, Egorova-Brumley, Natalia, additional, Hayward, Kathryn S., additional, Khlif, Mohamed Salah, additional, Revill, Kate P., additional, Zavaliangos-Petropulu, Artemis, additional, Boyd, Lara A., additional, and Liew, Sook-Lei, additional
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- 2023
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22. Hippocampal subfield volumes in treatment resistant depression and serial ketamine treatment
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Zavaliangos-Petropulu, Artemis, primary, McClintock, Shawn M., additional, Joshi, Shantanu H., additional, Taraku, Brandon, additional, Al-Sharif, Noor B., additional, Espinoza, Randall T., additional, and Narr, Katherine L., additional
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- 2023
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23. W37. CHANGES IN PERIPHERAL GENE EXPRESSION FOLLOWING ANTIDEPRESSANT KETAMINE TREATMENT
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Zavaliangos-Petropulu, Artemis, primary, Boltz, Toni, additional, Al-Sharif, Noor, additional, Taraku, Brandon, additional, Congdon, Eliza, additional, Espinoza, Randall, additional, Narr, Katherine, additional, and Ophoff, Roel, additional
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- 2023
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24. White matter microstructural perturbations after total sleep deprivation in depression
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Taraku, Brandon, primary, Zavaliangos-Petropulu, Artemis, additional, Loureiro, Joana R., additional, Al-Sharif, Noor B., additional, Kubicki, Antoni, additional, Joshi, Shantanu H., additional, Woods, Roger P., additional, Espinoza, Randall, additional, Narr, Katherine L., additional, and Sahib, Ashish K., additional
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- 2023
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25. Hippocampal subfield volumes in treatment resistant depression and serial ketamine treatment.
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Zavaliangos-Petropulu, Artemis, McClintock, Shawn M., Joshi, Shantanu H., Taraku, Brandon, Al-Sharif, Noor B., Espinoza, Randall T., and Narr, Katherine L.
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HAMILTON Depression Inventory ,KETAMINE ,HIPPOCAMPUS (Brain) - Abstract
Introduction: Subanesthetic ketamine is a rapidly acting antidepressant that has also been found to improve neurocognitive performance in adult patients with treatment resistant depression (TRD). Provisional evidence suggests that ketamine may induce change in hippocampal volume and that larger pre-treatment volumes might be related to positive clinical outcomes. Here, we examine the effects of serial ketamine treatment on hippocampal subfield volumes and relationships between pre-treatment subfield volumes and changes in depressive symptoms and neurocognitive performance. Methods: Patients with TRD (N = 66; 31M/35F; age = 39.5 ± 11.1 years) received four ketamine infusions (0.5 mg/kg) over 2 weeks. Structural MRI scans, the National Institutes of Health Toolbox (NIHT) Cognition Battery, and Hamilton Depression Rating Scale (HDRS) were collected at baseline, 24 h after the first and fourth ketamine infusion, and 5 weeks post-treatment. The same data was collected for 32 age and sex matched healthy controls (HC; 17M/15F; age = 35.03 ± 12.2 years) at one timepoint. Subfield (CA1/CA3/CA4/subiculum/molecular layer/GC-ML-DG) volumes corrected for whole hippocampal volume were compared across time, between treatment remitters/non-remitters, and patients and HCs using linear regression models. Relationships between pre-treatment subfield volumes and clinical and cognitive outcomes were also tested. All analyses included Bonferroni correction. Results: Patients had smaller pre-treatment left CA4 (p = 0.004) and GC.ML. DG (p = 0.004) volumes compared to HC, but subfield volumes remained stable following ketamine treatment (all p > 0.05). Pre-treatment or change in hippocampal subfield volumes over time showed no variation by remission status nor correlated with depressive symptoms (p > 0.05). Pre-treatment left CA4 was negatively correlated with improved processing speed after single (p = 0.0003) and serial ketamine infusion (p = 0.005). Left GC.ML.DG also negatively correlated with improved processing speed after single infusion (p = 0.001). Right pretreatment CA3 positively correlated with changes in list sorting working memory at follow-up (p = 0.0007). Discussion: These results provide new evidence to suggest that hippocampal subfield volumes at baseline may present a biomarker for neurocognitive improvement following ketamine treatment in TRD. In contrast, pre-treatment subfield volumes and changes in subfield volumes showed negligible relationships with ketamine-related improvements in depressive symptoms. [ABSTRACT FROM AUTHOR]
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- 2024
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26. 339. Changes in Neurocognitive Function Following Sub-Anesthetic Single and Serial Ketamine Infusions in Treatment Resistant Depression
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Zavaliangos-Petropulu, Artemis, primary, McClintock, Shawn, additional, Joshi, Shantanu, additional, Taraku, Brandon, additional, Al-Sharif, Noor, additional, Espinoza, Randall, additional, and Narr, Katherine, additional
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- 2023
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27. 113. Static and Dynamic Functional Connectivity Changes From the Lateral Habenula Associate With Therapeutic Response to Ketamine Treatment in Major Depression
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Taraku, Brandon, primary, Loureiro, Joana, additional, Sahib, Ashish, additional, Espinoza, Randall, additional, Zavaliangos-Petropulu, Artemis, additional, Al-Sharif, Noor, additional, and Narr, Katherine, additional
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- 2023
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28. 342. Pretreatment Hippocampal Subfield Volumes Predict Improved Neurocognitive Function Following Ketamine Treatment in Major Depression
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Zavaliangos-Petropulu, Artemis, primary, McClintock, Shawn, additional, Joshi, Shantanu, additional, Taraku, Brandon, additional, Al-Sharif, Noor, additional, Espinoza, Randall, additional, and Narr, Katherine, additional
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- 2023
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29. Association of Brain Age, Lesion Volume, and Functional Outcome in Patients With Stroke
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Liew, Sook-Lei, primary, Schweighofer, Nicolas, additional, Cole, James H., additional, Zavaliangos-Petropulu, Artemis, additional, Lo, Bethany P., additional, Han, Laura K.M., additional, Hahn, Tim, additional, Schmaal, Lianne, additional, Donnelly, Miranda R., additional, Jeong, Jessica N., additional, Wang, Zhizhuo, additional, Abdullah, Aisha, additional, Kim, Jun H., additional, Hutton, Alexandre, additional, Barisano, Giuseppe, additional, Borich, Michael R., additional, Boyd, Lara A., additional, Brodtmann, Amy, additional, Buetefisch, Cathrin M., additional, Byblow, Winston D., additional, Cassidy, Jessica M., additional, Charalambous, Charalambos C., additional, Ciullo, Valentina, additional, Conforto, Adriana Bastos, additional, Dacosta-Aguayo, Rosalia, additional, DiCarlo, Julie A., additional, Domin, Martin, additional, Dula, Adrienne N., additional, Egorova-Brumley, Natalia, additional, Feng, Wuwei, additional, Geranmayeh, Fatemeh, additional, Gregory, Chris M., additional, Hanlon, Colleen A., additional, Hayward, Kathryn, additional, Holguin, Jess A., additional, Hordacre, Brenton, additional, Jahanshad, Neda, additional, Kautz, Steven A., additional, Khlif, Mohamed Salah, additional, Kim, Hosung, additional, Kuceyeski, Amy, additional, Lin, David J., additional, Liu, Jingchun, additional, Lotze, Martin, additional, MacIntosh, Bradley J., additional, Margetis, John L., additional, Mataro, Maria, additional, Mohamed, Feroze B., additional, Olafson, Emily R., additional, Park, Gilsoon, additional, Piras, Fabrizio, additional, Revill, Kate P., additional, Roberts, Pamela, additional, Robertson, Andrew D., additional, Sanossian, Nerses, additional, Schambra, Heidi M., additional, Seo, Na Jin, additional, Soekadar, Surjo R., additional, Spalletta, Gianfranco, additional, Stinear, Cathy M., additional, Taga, Myriam, additional, Tang, Wai Kwong, additional, Thielman, Greg T., additional, Vecchio, Daniela, additional, Ward, Nick S., additional, Westlye, Lars T., additional, Winstein, Carolee J., additional, Wittenberg, George F., additional, Wolf, Steven L., additional, Wong, Kristin A., additional, Yu, Chunshui, additional, Cramer, Steven C., additional, and Thompson, Paul M., additional
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- 2023
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30. Deep Learning for Quality Control of Subcortical Brain 3D Shape Models
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Petrov, Dmitry, primary, Gutman, Boris A., additional, Kuznetsov, Egor, additional, Ching, Christopher R. K., additional, Alpert, Kathryn, additional, Zavaliangos-Petropulu, Artemis, additional, Isaev, Dmitry, additional, Turner, Jessica A., additional, van Erp, Theo G. M., additional, Wang, Lei, additional, Schmaal, Lianne, additional, Veltman, Dick, additional, and Thompson, Paul M., additional
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- 2018
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31. Changes in white matter microstructure following serial ketamine infusions in treatment resistant depression
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Taraku, Brandon, primary, Woods, Roger P., additional, Boucher, Michael, additional, Espinoza, Randall, additional, Jog, Mayank, additional, Al‐Sharif, Noor, additional, Narr, Katherine L., additional, and Zavaliangos‐Petropulu, Artemis, additional
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- 2023
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32. The impact of individual stroke lesions on tDCS current flow compared to neurotypical age-matched controls
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Lee, Jenn, primary, Johnstone, Ainslie, additional, Evans, Carys, additional, Zich, Catharina, additional, Lo, Bethany, additional, Borich, Michael, additional, Boyd, Lara, additional, Cassidy, Jessica, additional, Cramer, Steven, additional, Donnelly, Miranda, additional, Hanlon, Colleen, additional, Hordacre, Brenton, additional, Kautz, Steven, additional, Liu, Jingchun, additional, Schranz, Christian, additional, Seo, Na Jin, additional, Soekadar, Surjo, additional, Shraddha, Srivastava, additional, Winstein, Carolee, additional, Yu, Chunshui, additional, Zavaliangos-Petropulu, Artemis, additional, Liew, Sook-Lei, additional, Ward, Nick, additional, and Bestmann, Sven, additional
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- 2023
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33. Subcortical shape alterations in major depressive disorder
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Ho, Tiffany C, Gutman, Boris, Grotegerd, Dominik, Redlich, Ronny, Jansen, Andreas, Kircher, Tilo, Krug, Axel, Meinert, Susanne, Nenadic, Igor, Opel, Nils, Dinga, Richard, Veltman, Dick J, Pozzi, Elena, Schnell, Knut, Veer, Ilya, Psychiatry, Brain Research Department of, Walter, Henrik, Gotlib, Ian H, Sacchet, Matthew D, Aleman, André, Groenewold, Nynke A, Stein, Dan J, Li, Meng, Grabe, Hans J, Walter, Martin, Ching, Christopher R K, Jahanshad, Neda, Ragothaman, Anjanibhargavi, Isaev, Dmitry, Zavaliangos-Petropulu, Artemis, Thompson, Paul M, Sämann, Philipp G, Schmaal, Lianne, Hosten, Norbert, Wittfeld, Katharina, Völzke, Henry, Baune, Bernhard, Dannlowski, Udo, Förster, Katharina, Academic Medical Center, Ontwikkelingspsychologie (Psychologie, FMG), Psychiatry, Amsterdam Neuroscience - Mood, Anxiety, Psychosis, Stress & Sleep, Amsterdam Neuroscience - Compulsivity, Impulsivity & Attention, Amsterdam Neuroscience - Brain Imaging, Clinical Cognitive Neuropsychiatry Research Program (CCNP), and Clinical Neuropsychology
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pathology [Corpus Striatum] ,CORTEX ,diagnostic imaging [Corpus Striatum] ,STRESS ,hippocampus ,nucleus accumbens ,MODELS ,shape analysis ,Neuroimaging ,diagnostic imaging [Depressive Disorder, Major] ,behavioral disciplines and activities ,pathology [Thalamus] ,Thalamus ,mental disorders ,Humans ,Multicenter Studies as Topic ,HIPPOCAMPAL SUBFIELDS ,Radiology, Nuclear Medicine and imaging ,ddc:610 ,diagnostic imaging [Amygdala] ,BRAIN ,NEURONS ,Research Articles ,METAANALYSIS ,diagnostic imaging [Hippocampus] ,pathology [Depressive Disorder, Major] ,diagnostic imaging [Thalamus] ,Depressive Disorder, Major ,Radiological and Ultrasound Technology ,major depressive disorder (MDD) ,ABNORMALITIES ,ENIGMA ,BIPOLAR DISORDER ,amygdala ,Corpus Striatum ,AMYGDALA VOLUME ,pathology [Hippocampus] ,Neurology ,nervous system ,pathology [Amygdala] ,Neurology (clinical) ,Anatomy ,Research Article - Abstract
Alterations in regional subcortical brain volumes have been investigated as part of the efforts of an international consortium, ENIGMA, to identify reliable neural correlates of major depressive disorder (MDD). Given that subcortical structures are comprised of distinct subfields, we sought to build significantly from prior work by precisely mapping localized MDD-related differences in subcortical regions using shape analysis. In this meta-analysis of subcortical shape from the ENIGMA-MDD working group, we compared 1,781 patients with MDD and 2,953 healthy controls (CTL) on individual measures of shape metrics (thickness and surface area) on the surface of seven bilateral subcortical structures: nucleus accumbens, amygdala, caudate, hippocampus, pallidum, putamen, and thalamus. Harmonized data processing and statistical analyses were conducted locally at each site, and findings were aggregated by meta-analysis. Relative to CTL, patients with adolescent-onset MDD (≤ 21 years) had lower thickness and surface area of the subiculum, cornu ammonis (CA) 1 of the hippocampus and basolateral amygdala (Cohen's d = −0.164 to −0.180). Relative to first-episode MDD, recurrent MDD patients had lower thickness and surface area in the CA1 of the hippocampus and the basolateral amygdala (Cohen's d = −0.173 to −0.184). Our results suggest that previously reported MDD-associated volumetric differences may be localized to specific subfields of these structures that have been shown to be sensitive to the effects of stress, with important implications for mapping treatments to patients based on specific neural targets and key clinical features.
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- 2022
34. Effects of Dementia and MCI on Diffusion Tensor Metrics Using the Updated ADNI3 DTI Preprocessing Pipeline
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Thomopoulos, Sophia I, primary, Nir, Talia M, additional, Reina, Julio E Villalon, additional, Zavaliangos‐Petropulu, Artemis, additional, Maiti, Piyush, additional, Nourollahimoghadam, Elnaz, additional, Zheng, Hong, additional, Jahanshad, Neda, additional, and Thompson, Paul M, additional
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- 2022
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35. Neuroimaging-Derived Biomarkers of the Antidepressant Effects of Ketamine
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Zavaliangos-Petropulu, Artemis, primary, Al-Sharif, Noor B., additional, Taraku, Brandon, additional, Leaver, Amber M., additional, Sahib, Ashish K., additional, Espinoza, Randall T., additional, and Narr, Katherine L., additional
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- 2022
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36. Smaller spared subcortical nuclei are associated with worse post-stroke sensorimotor outcomes in 28 cohorts worldwide
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Liew, Sook-Lei, Zavaliangos-Petropulu, Artemis, Schweighofer, Nicolas, Jahanshad, Neda, Lang, Catherine E, Lohse, Keith R, Banaj, Nerisa, Barisano, Giuseppe, Baugh, Lee A, Bhattacharya, Anup K, Bigjahan, Bavrina, Borich, Michael R, Boyd, Lara A, Brodtmann, Amy, Buetefisch, Cathrin M, Byblow, Winston D, Cassidy, Jessica M, Charalambous, Charalambos C, Ciullo, Valentina, Conforto, Adriana B, Craddock, Richard C, Dula, Adrienne N, Egorova, Natalia, Feng, Wuwei, Fercho, Kelene A, Gregory, Chris M, Hanlon, Colleen A, Hayward, Kathryn S, Holguin, Jess A, Hordacre, Brenton, Hwang, Darryl H, Kautz, Steven A, Khlif, Mohamed Salah, Kim, Bokkyu, Kim, Hosung, Kuceyeski, Amy, Lo, Bethany, Liu, Jingchun, Lin, David, Lotze, Martin, MacIntosh, Bradley J, Margetis, John L, Mohamed, Feroze B, Nordvik, Jan Egil, Petoe, Matthew A, Piras, Fabrizio, Raju, Sharmila, Ramos-Murguialday, Ander, Revill, Kate P, Roberts, Pamela, Robertson, Andrew D, Schambra, Heidi M, Seo, Na Jin, Shiroishi, Mark S, Soekadar, Surjo R, Spalletta, Gianfranco, Stinear, Cathy M, Suri, Anisha, Tang, Wai Kwong, Thielman, Gregory T, Thijs, Vincent N, Vecchio, Daniela, Ward, Nick S, Westlye, Lars T, Winstein, Carolee J, Wittenberg, George F, Wong, Kristin A, Yu, Chunshui, Wolf, Steven L, Cramer, Steven C, Thompson, Paul M, Baugh, Lee, Gallaguet, Adrià Bermudo, Bhattacharya, Anup, Borich, Michael, Boyd, Lara, Brown, Truman, Buetefisch, Cathrin, Byblow, Winston, Cassidy, Jessica, Charalambous, Charalambos, Cloutier, Alison, Cole, James, Conforto, Adriana, Craddock, Richard, Cramer, Steven, Aguayo, Rosalia Dacosta, DiCarlo, Julie, Dimyan, Michael, Domin, Martin, Donnellly, Miranda, Dula, Adrienne, Edwardson, Matthew, Ermer, Elsa, Etherton, Mark, Fercho, Kelene, Ferris, Jennifer, Geranmayeh, Fatemeh, Gregory, Chris, Hadidchi, Shahram, Hanlon, Colleen, Hayes, Leticia, Hayward, Kathryn, Holguin, Jess, Hwang, Darryl, Jamison, Keith, Juliano, Julia, Kautz, Steven, Lang, Catherine, Lee, Jenny, Lohse, Keith, MacIntosh, Bradley, Margetis, John, Margulies, Daniel, Mataro, Maria, McGregor, Keith, Mohamed, Feroze, Nordvik, Jan, Olafson, Emily, Perera-LLuna, Alexandre, Petoe, Matthew, Phillips, Aaron, Revill, Kate, Robertson, Andrew, Rondina, Jane, Rost, Natalia, Sanossian, Nerses, Schambra, Heidi, Schranz, Christian, Sepehrband, Farshid, Shiroishi, Mark, Simon, Julia, Soekadar, Surjo, Srivastava, Shraddha, Stewart, Jill, Stinear, Cathy, Taga, Myriam, Thielman, Gregory, Thijs, Vincent, Thomopoulos, Sophia, Thompson, Paul, Warach, Steven, Ward, Nick, Werden, Emilio, Westlye, Lars, Wiest, Roland, Winstein, Carolee, Wittenberg, George, Wolf, Steven, Wong, Kristin, Liew, Sook-Lei, Zavaliangos-Petropulu, Artemis, Schweighofer, Nicolas, Jahanshad, Neda, Hordacre, Brenton, and Thompson, Paul M
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medicine.medical_specialty ,Thalamus ,Grey matter ,Nucleus accumbens ,rehabilitation ,Physical medicine and rehabilitation ,sensorimotor behaviour ,Medicine ,Mri brain ,Stroke survivor ,Chronic stroke ,Stroke ,subcortical volumes ,business.industry ,AcademicSubjects/SCI01870 ,Putamen ,General Engineering ,medicine.disease ,stroke ,Behavioral data ,medicine.anatomical_structure ,Ventricle ,Post stroke ,Original Article ,AcademicSubjects/MED00310 ,business ,MRI - Abstract
Up to two-thirds of stroke survivors experience persistent sensorimotor impairments. Recovery relies on the integrity of spared brain areas to compensate for damaged tissue. Deep grey matter structures play a critical role in the control and regulation of sensorimotor circuits. The goal of this work is to identify associations between volumes of spared subcortical nuclei and sensorimotor behaviour at different timepoints after stroke. We pooled high-resolution T1-weighted MRI brain scans and behavioural data in 828 individuals with unilateral stroke from 28 cohorts worldwide. Cross-sectional analyses using linear mixed-effects models related post-stroke sensorimotor behaviour to non-lesioned subcortical volumes (Bonferroni-corrected, P, Liew et al. report the first large-scale examination using high-resolution neuroimaging of subcortical nuclei and sensorimotor behaviour in 828 stroke patients from 28 cohorts worldwide. They discovered novel associations between post-stroke sensorimotor behaviour and specific subcortical nuclei, providing new insight for stroke rehabilitation., Graphical Abstract Graphical Abstract
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- 2022
37. Machine Learning for Large-Scale Quality Control of 3D Shape Models in Neuroimaging
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Petrov, Dmitry, primary, Gutman, Boris A., additional, Yu, Shih-Hua, additional, Alpert, Kathryn, additional, Zavaliangos-Petropulu, Artemis, additional, Isaev, Dmitry, additional, Turner, Jessica A., additional, van Erp, Theo G. M., additional, Wang, Lei, additional, Schmaal, Lianne, additional, Veltman, Dick, additional, and Thompson, Paul M., additional
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- 2017
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38. Chronic Stroke Sensorimotor Impairment Is Related to Smaller Hippocampal Volumes: An ENIGMA Analysis
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Zavaliangos-Petropulu, Artemis, Lo, Bethany, Donnelly, Miranda R, Schweighofer, Nicolas, Lohse, Keith, Jahanshad, Neda, Barisano, Giuseppe, Banaj, Nerisa, Borich, Michael R, Boyd, Lara A, Buetefisch, Cathrin M, Byblow, Winston D, Cassidy, Jessica M, Charalambous, Charalambos C, Conforto, Adriana B, DiCarlo, Julie A, Dula, Adrienne N, Egorova-Brumley, Natalia, Etherton, Mark R, Feng, Wuwei, Fercho, Kelene A, Geranmayeh, Fatemeh, Hanlon, Colleen A, Hayward, Kathryn S, Hordacre, Brenton, Kautz, Steven A, Khlif, Mohamed Salah, Kim, Hosung, Kuceyeski, Amy, Lin, David J, Liu, Jingchun, Lotze, Martin, MacIntosh, Bradley J, Margetis, John L, Mohamed, Feroze B, Piras, Fabrizio, Ramos-Murguialday, Ander, Revill, Kate P, Roberts, Pamela S, Robertson, Andrew D, Schambra, Heidi M, Seo, Na Jin, Shiroishi, Mark S, Stinear, Cathy M, Soekadar, Surjo R, Spalletta, Gianfranco, Taga, Myriam, Tang, Wai Kwong, Thielman, Gregory T, Vecchio, Daniela, Ward, Nick S, Westlye, Lars T, Werden, Emilio, Winstein, Carolee, Wittenberg, George F, Wolf, Steven L, Wong, Kristin A, Yu, Chunshui, Brodtmann, Amy, Cramer, Steven C, Thompson, Paul M, and Liew, Sook-Lei
- Subjects
Male ,Aging ,hippocampus ,sensorimotor impairment ,Stroke Rehabilitation ,Neurosciences ,Recovery of Function ,Cardiorespiratory Medicine and Haematology ,Hippocampus ,stroke ,Brain Disorders ,Upper Extremity ,Stroke ,Cross-Sectional Studies ,Quality of Life ,Humans ,Female ,MRI - Abstract
Background Persistent sensorimotor impairments after stroke can negatively impact quality of life. The hippocampus is vulnerable to poststroke secondary degeneration and is involved in sensorimotor behavior but has not been widely studied within the context of poststroke upper-limb sensorimotor impairment. We investigated associations between non-lesioned hippocampal volume and upper limb sensorimotor impairment in people with chronic stroke, hypothesizing that smaller ipsilesional hippocampal volumes would be associated with greater sensorimotor impairment. Methods and Results Cross-sectional T1-weighted magnetic resonance images of the brain were pooled from 357 participants with chronic stroke from 18 research cohorts of the ENIGMA (Enhancing NeuoImaging Genetics through Meta-Analysis) Stroke Recovery Working Group. Sensorimotor impairment was estimated from the FMA-UE (Fugl-Meyer Assessment of Upper Extremity). Robust mixed-effects linear models were used to test associations between poststroke sensorimotor impairment and hippocampal volumes (ipsilesional and contralesional separately; Bonferroni-corrected, P
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- 2022
39. The ENIGMA Stroke Recovery Working Group: Big data neuroimaging to study brain-behavior relationships after stroke.
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Liew, Sook-Lei, Liew, Sook-Lei, Zavaliangos-Petropulu, Artemis, Jahanshad, Neda, Lang, Catherine E, Hayward, Kathryn S, Lohse, Keith R, Juliano, Julia M, Assogna, Francesca, Baugh, Lee A, Bhattacharya, Anup K, Bigjahan, Bavrina, Borich, Michael R, Boyd, Lara A, Brodtmann, Amy, Buetefisch, Cathrin M, Byblow, Winston D, Cassidy, Jessica M, Conforto, Adriana B, Craddock, R Cameron, Dimyan, Michael A, Dula, Adrienne N, Ermer, Elsa, Etherton, Mark R, Fercho, Kelene A, Gregory, Chris M, Hadidchi, Shahram, Holguin, Jess A, Hwang, Darryl H, Jung, Simon, Kautz, Steven A, Khlif, Mohamed Salah, Khoshab, Nima, Kim, Bokkyu, Kim, Hosung, Kuceyeski, Amy, Lotze, Martin, MacIntosh, Bradley J, Margetis, John L, Mohamed, Feroze B, Piras, Fabrizio, Ramos-Murguialday, Ander, Richard, Geneviève, Roberts, Pamela, Robertson, Andrew D, Rondina, Jane M, Rost, Natalia S, Sanossian, Nerses, Schweighofer, Nicolas, Seo, Na Jin, Shiroishi, Mark S, Soekadar, Surjo R, Spalletta, Gianfranco, Stinear, Cathy M, Suri, Anisha, Tang, Wai Kwong W, Thielman, Gregory T, Vecchio, Daniela, Villringer, Arno, Ward, Nick S, Werden, Emilio, Westlye, Lars T, Winstein, Carolee, Wittenberg, George F, Wong, Kristin A, Yu, Chunshui, Cramer, Steven C, Thompson, Paul M, Liew, Sook-Lei, Liew, Sook-Lei, Zavaliangos-Petropulu, Artemis, Jahanshad, Neda, Lang, Catherine E, Hayward, Kathryn S, Lohse, Keith R, Juliano, Julia M, Assogna, Francesca, Baugh, Lee A, Bhattacharya, Anup K, Bigjahan, Bavrina, Borich, Michael R, Boyd, Lara A, Brodtmann, Amy, Buetefisch, Cathrin M, Byblow, Winston D, Cassidy, Jessica M, Conforto, Adriana B, Craddock, R Cameron, Dimyan, Michael A, Dula, Adrienne N, Ermer, Elsa, Etherton, Mark R, Fercho, Kelene A, Gregory, Chris M, Hadidchi, Shahram, Holguin, Jess A, Hwang, Darryl H, Jung, Simon, Kautz, Steven A, Khlif, Mohamed Salah, Khoshab, Nima, Kim, Bokkyu, Kim, Hosung, Kuceyeski, Amy, Lotze, Martin, MacIntosh, Bradley J, Margetis, John L, Mohamed, Feroze B, Piras, Fabrizio, Ramos-Murguialday, Ander, Richard, Geneviève, Roberts, Pamela, Robertson, Andrew D, Rondina, Jane M, Rost, Natalia S, Sanossian, Nerses, Schweighofer, Nicolas, Seo, Na Jin, Shiroishi, Mark S, Soekadar, Surjo R, Spalletta, Gianfranco, Stinear, Cathy M, Suri, Anisha, Tang, Wai Kwong W, Thielman, Gregory T, Vecchio, Daniela, Villringer, Arno, Ward, Nick S, Werden, Emilio, Westlye, Lars T, Winstein, Carolee, Wittenberg, George F, Wong, Kristin A, Yu, Chunshui, Cramer, Steven C, and Thompson, Paul M
- Abstract
The goal of the Enhancing Neuroimaging Genetics through Meta-Analysis (ENIGMA) Stroke Recovery working group is to understand brain and behavior relationships using well-powered meta- and mega-analytic approaches. ENIGMA Stroke Recovery has data from over 2,100 stroke patients collected across 39 research studies and 10 countries around the world, comprising the largest multisite retrospective stroke data collaboration to date. This article outlines the efforts taken by the ENIGMA Stroke Recovery working group to develop neuroinformatics protocols and methods to manage multisite stroke brain magnetic resonance imaging, behavioral and demographics data. Specifically, the processes for scalable data intake and preprocessing, multisite data harmonization, and large-scale stroke lesion analysis are described, and challenges unique to this type of big data collaboration in stroke research are discussed. Finally, future directions and limitations, as well as recommendations for improved data harmonization through prospective data collection and data management, are provided.
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- 2022
40. A meta-analysis of deep brain structural shape and asymmetry abnormalities in 2,833 individuals with schizophrenia compared with 3,929 healthy volunteers via the ENIGMA Consortium
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US Department of Veterans Affairs, Conselho Nacional de Desenvolvimento Científico e Tecnológico (Brasil), Swedish Research Council for Health, Working Life and Welfare, Fundação Amazônia de Amparo a Estudos e Pesquisas, Instituto de Salud Carlos III, National Health and Medical Research Council (Australia), National Institutes of Health (US), National Science Foundation (US), Research Council of Norway, Science Foundation Ireland, Wellcome Trust, Gutman, Boris A., van Erp, Theo G. M., Alpert, Kathryn I., Ching, Christopher R. K., Isaev, Dmitry, Ragothaman, Anjani, Jahanshad, Neda, Saremi, Arvin, Zavaliangos-Petropulu, Artemis, Glahn, David C., Shen, Li, Cong, Shan, Alnæs, Dag, Andreassen, Ole A., DoanNhat Trung, Westlye, Lars T., Kochunov, Peter, Satterthwaite, Theodore D., Wolf, Daniel H., Huang, Alexander J., Kessler, Charles, Weideman, Andrea, Nguyen, Dana, Mueller, Bryon A., Faziola, Lawrence, Potkin, Steven G., Preda Adrian, Mathalon, Daniel H., Bustillo Juan, Calhoun, Vincent, Ford, Judith M., Walton, Esther, Ehrlich, Stefan, Ducci, Giuseppe, Banaj, Nerisa, Piras, Fabrizio, Piras, Federica, Spalletta, Gianfranco, Canales-Rodríguez, Erick J., Fuentes-Claramonte, Paola, Pomarol-Clotet, Edith, Radua, Joaquim, Salvador, Raymond, Sarró, Salvador, Dickie, Erin W., Voineskos, Aristotle, Tordesillas-Gutiérrez, Diana, Crespo-Facorro, Benedicto, Setién-Suero, Esther, Mayoral-van Son, Jacqueline, Borgwardt, Stefan, Schönborn-Harrisberger, Fabienne, Morris, Derek, Donohoe, Gary, Holleran, Laurena, Cannon, Dara M., McDonald, Colm, Corvin, Aiden, Gill, Michael, Busatto, Geraldo F., Rosa, Pedro G. P., Serpa, Mauricio H., Zanetti, Marcus V., Lebedeva, Irina, Kaleda, Vasiliy G., Tomyshev, Alexander S., Crow, Tim, James, Anthony, Cervenka, Simon, Sellgren, Carl M., Fatouros-Bergman, Helena, Agartz, Ingrid, Howells, Fleur M., Stein, Dan J., Temmingh, Henk S., Uhlmann, Anne, Zubicaray, Greig I. de, McMahon, Katie L., Wright, Margaret J., Cobia, Derin, Csernansky, John G., Thompson, Paul M., Turner, Jessica A., Wang, Lei, US Department of Veterans Affairs, Conselho Nacional de Desenvolvimento Científico e Tecnológico (Brasil), Swedish Research Council for Health, Working Life and Welfare, Fundação Amazônia de Amparo a Estudos e Pesquisas, Instituto de Salud Carlos III, National Health and Medical Research Council (Australia), National Institutes of Health (US), National Science Foundation (US), Research Council of Norway, Science Foundation Ireland, Wellcome Trust, Gutman, Boris A., van Erp, Theo G. M., Alpert, Kathryn I., Ching, Christopher R. K., Isaev, Dmitry, Ragothaman, Anjani, Jahanshad, Neda, Saremi, Arvin, Zavaliangos-Petropulu, Artemis, Glahn, David C., Shen, Li, Cong, Shan, Alnæs, Dag, Andreassen, Ole A., DoanNhat Trung, Westlye, Lars T., Kochunov, Peter, Satterthwaite, Theodore D., Wolf, Daniel H., Huang, Alexander J., Kessler, Charles, Weideman, Andrea, Nguyen, Dana, Mueller, Bryon A., Faziola, Lawrence, Potkin, Steven G., Preda Adrian, Mathalon, Daniel H., Bustillo Juan, Calhoun, Vincent, Ford, Judith M., Walton, Esther, Ehrlich, Stefan, Ducci, Giuseppe, Banaj, Nerisa, Piras, Fabrizio, Piras, Federica, Spalletta, Gianfranco, Canales-Rodríguez, Erick J., Fuentes-Claramonte, Paola, Pomarol-Clotet, Edith, Radua, Joaquim, Salvador, Raymond, Sarró, Salvador, Dickie, Erin W., Voineskos, Aristotle, Tordesillas-Gutiérrez, Diana, Crespo-Facorro, Benedicto, Setién-Suero, Esther, Mayoral-van Son, Jacqueline, Borgwardt, Stefan, Schönborn-Harrisberger, Fabienne, Morris, Derek, Donohoe, Gary, Holleran, Laurena, Cannon, Dara M., McDonald, Colm, Corvin, Aiden, Gill, Michael, Busatto, Geraldo F., Rosa, Pedro G. P., Serpa, Mauricio H., Zanetti, Marcus V., Lebedeva, Irina, Kaleda, Vasiliy G., Tomyshev, Alexander S., Crow, Tim, James, Anthony, Cervenka, Simon, Sellgren, Carl M., Fatouros-Bergman, Helena, Agartz, Ingrid, Howells, Fleur M., Stein, Dan J., Temmingh, Henk S., Uhlmann, Anne, Zubicaray, Greig I. de, McMahon, Katie L., Wright, Margaret J., Cobia, Derin, Csernansky, John G., Thompson, Paul M., Turner, Jessica A., and Wang, Lei
- Abstract
Schizophrenia is associated with widespread alterations in subcortical brain structure. While analytic methods have enabled more detailed morphometric characterization, findings are often equivocal. In this meta-analysis, we employed the harmonized ENIGMA shape analysis protocols to collaboratively investigate subcortical brain structure shape differences between individuals with schizophrenia and healthy control participants. The study analyzed data from 2,833 individuals with schizophrenia and 3,929 healthy control participants contributed by 21 worldwide research groups participating in the ENIGMA Schizophrenia Working Group. Harmonized shape analysis protocols were applied to each site's data independently for bilateral hippocampus, amygdala, caudate, accumbens, putamen, pallidum, and thalamus obtained from T1-weighted structural MRI scans. Mass univariate meta-analyses revealed more-concave-than-convex shape differences in the hippocampus, amygdala, accumbens, and thalamus in individuals with schizophrenia compared with control participants, more-convex-than-concave shape differences in the putamen and pallidum, and both concave and convex shape differences in the caudate. Patterns of exaggerated asymmetry were observed across the hippocampus, amygdala, and thalamus in individuals with schizophrenia compared to control participants, while diminished asymmetry encompassed ventral striatum and ventral and dorsal thalamus. Our analyses also revealed that higher chlorpromazine dose equivalents and increased positive symptom levels were associated with patterns of contiguous convex shape differences across multiple subcortical structures. Findings from our shape meta-analysis suggest that common neurobiological mechanisms may contribute to gray matter reduction across multiple subcortical regions, thus enhancing our understanding of the nature of network disorganization in schizophrenia.
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- 2022
41. Global brain health modulates the impact of lesion damage on post-stroke sensorimotor outcomes
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Liew, Sook-Lei, primary, Schweighofer, Nicolas, additional, Cole, James H., additional, Zavaliangos-Petropulu, Artemis, additional, Lo, Bethany P., additional, Han, Laura K.M., additional, Hahn, Tim, additional, Schmaal, Lianne, additional, Donnelly, Miranda R., additional, Jeong, Jessica N., additional, Wang, Zhizhuo, additional, Abdullah, Aisha, additional, Kim, Jun H., additional, Hutton, Alexandre, additional, Barisano, Giuseppe, additional, Borich, Michael R., additional, Boyd, Lara A., additional, Brodtmann, Amy, additional, Buetefisch, Cathrin M., additional, Byblow, Winston D., additional, Cassidy, Jessica M., additional, Charalambous, Charalambos C., additional, Ciullo, Valentina, additional, Conforto, Adriana B., additional, Dacosta-Aguayo, Rosalia, additional, DiCarlo, Julie A., additional, Domin, Martin, additional, Dula, Adrienne N., additional, Egorova-Brumley, Natalia, additional, Feng, Wuwei, additional, Geranmayeh, Fatemeh, additional, Gregory, Chris M., additional, Hanlon, Colleen A., additional, Holguin, Jess A., additional, Hordacre, Brenton, additional, Jahanshad, Neda, additional, Kautz, Steven A., additional, Khlif, Mohamed Salah, additional, Kim, Hosung, additional, Kuceyeski, Amy, additional, Lin, David J., additional, Liu, Jingchun, additional, Lotze, Martin, additional, MacIntosh, Bradley J., additional, Margetis, John L., additional, Mataro, Maria, additional, Mohamed, Feroze B., additional, Olafson, Emily R., additional, Park, Gilsoon, additional, Piras, Fabrizio, additional, Revill, Kate P., additional, Roberts, Pamela, additional, Robertson, Andrew D., additional, Sanossian, Nerses, additional, Schambra, Heidi M., additional, Seo, Na Jin, additional, Soekadar, Surjo R., additional, Spalletta, Gianfranco, additional, Stinear, Cathy M., additional, Taga, Myriam, additional, Tang, Wai Kwong, additional, Thielman, Greg T., additional, Vecchio, Daniela, additional, Ward, Nick S., additional, Westlye, Lars T., additional, Winstein, Carolee J., additional, Wittenberg, George F., additional, Wolf, Steven L., additional, Wong, Kristin A., additional, Yu, Chunshui, additional, Cramer, Steven C., additional, and Thompson, Paul M., additional
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- 2022
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42. A large, curated, open-source stroke neuroimaging dataset to improve lesion segmentation algorithms
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Liew, Sook-Lei, primary, Lo, Bethany, additional, Donnelly, Miranda R., additional, Zavaliangos-Petropulu, Artemis, additional, Jeong, Jessica N., additional, Barisano, Giuseppe, additional, Hutton, Alexandre, additional, Simon, Julia P., additional, Juliano, Julia M., additional, Suri, Anisha, additional, Ard, Tyler, additional, Banaj, Nerisa, additional, Borich, Michael R., additional, Boyd, Lara A., additional, Brodtmann, Amy, additional, Buetefisch, Cathrin M., additional, Cao, Lei, additional, Cassidy, Jessica M., additional, Ciullo, Valentina, additional, Conforto, Adriana B., additional, Cramer, Steven C., additional, Dacosta-Aguayo, Rosalia, additional, Rosa, Ezequiel de la, additional, Domin, Martin, additional, Dula, Adrienne N., additional, Feng, Wuwei, additional, Franco, Alexandre R., additional, Geranmayeh, Fatemeh, additional, Gramfort, Alexandre, additional, Gregory, Chris M., additional, Hanlon, Colleen A., additional, Hordacre, Brenton G., additional, Kautz, Steven A., additional, Khlif, Mohamed Salah, additional, Kim, Hosung, additional, Kirschke, Jan S., additional, Liu, Jingchun, additional, Lotze, Martin, additional, MacIntosh, Bradley J., additional, Mataró, Maria, additional, Mohamed, Feroze B., additional, Nordvik, Jan E., additional, Park, Gilsoon, additional, Pienta, Amy, additional, Piras, Fabrizio, additional, Redman, Shane M., additional, Revill, Kate P., additional, Reyes, Mauricio, additional, Robertson, Andrew D., additional, Seo, Na Jin, additional, Soekadar, Surjo R., additional, Spalletta, Gianfranco, additional, Sweet, Alison, additional, Telenczuk, Maria, additional, Thielman, Gregory, additional, Westlye, Lars T., additional, Winstein, Carolee J., additional, Wittenberg, George F., additional, Wong, Kristin A., additional, and Yu, Chunshui, additional
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- 2021
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43. Diffusion MRI metrics and their relation to dementia severity: effects of harmonization approaches
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Thomopoulos, Sophia I, primary, Nir, Talia M., additional, Villalon-Reina, Julio E., additional, Zavaliangos-Petropulu, Artemis, additional, Maiti, Piyush, additional, Zheng, Hong, additional, Nourollahimoghadam, Elnaz, additional, Jahanshad, Neda, additional, and Thompson, Paul M., additional
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- 2021
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44. Repetitive Peripheral Sensory Stimulation as an Add-On Intervention for Upper Limb Rehabilitation in Stroke: A Randomized Trial
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Conforto, Adriana B., primary, Machado, André G., additional, Ribeiro, Nathalia H. V., additional, Plow, Ela B., additional, Liew, Sook-Lei, additional, da Costa Leite, Claudia, additional, Zavaliangos-Petropulu, Artemis, additional, Menezes, Isabella, additional, dos Anjos, Sarah M., additional, Luccas, Rafael, additional, Peckham, Paul Hunter, additional, and Cohen, Leonardo G., additional
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- 2021
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45. A meta‐analysis of deep brain structural shape and asymmetry abnormalities in 2,833 individuals with schizophrenia compared with 3,929 healthy volunteers via the ENIGMA Consortium
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Gutman, Boris A., primary, Erp, Theo G.M., additional, Alpert, Kathryn, additional, Ching, Christopher R. K., additional, Isaev, Dmitry, additional, Ragothaman, Anjani, additional, Jahanshad, Neda, additional, Saremi, Arvin, additional, Zavaliangos‐Petropulu, Artemis, additional, Glahn, David C., additional, Shen, Li, additional, Cong, Shan, additional, Alnæs, Dag, additional, Andreassen, Ole Andreas, additional, Doan, Nhat Trung, additional, Westlye, Lars T., additional, Kochunov, Peter, additional, Satterthwaite, Theodore D., additional, Wolf, Daniel H., additional, Huang, Alexander J., additional, Kessler, Charles, additional, Weideman, Andrea, additional, Nguyen, Dana, additional, Mueller, Bryon A., additional, Faziola, Lawrence, additional, Potkin, Steven G., additional, Preda, Adrian, additional, Mathalon, Daniel H., additional, Bustillo, Juan, additional, Calhoun, Vince, additional, Ford, Judith M., additional, Walton, Esther, additional, Ehrlich, Stefan, additional, Ducci, Giuseppe, additional, Banaj, Nerisa, additional, Piras, Fabrizio, additional, Piras, Federica, additional, Spalletta, Gianfranco, additional, Canales‐Rodríguez, Erick J., additional, Fuentes‐Claramonte, Paola, additional, Pomarol‐Clotet, Edith, additional, Radua, Joaquim, additional, Salvador, Raymond, additional, Sarró, Salvador, additional, Dickie, Erin W., additional, Voineskos, Aristotle, additional, Tordesillas‐Gutiérrez, Diana, additional, Crespo‐Facorro, Benedicto, additional, Setién‐Suero, Esther, additional, Son, Jacqueline Mayoral, additional, Borgwardt, Stefan, additional, Schönborn‐Harrisberger, Fabienne, additional, Morris, Derek, additional, Donohoe, Gary, additional, Holleran, Laurena, additional, Cannon, Dara, additional, McDonald, Colm, additional, Corvin, Aiden, additional, Gill, Michael, additional, Filho, Geraldo Busatto, additional, Rosa, Pedro G. P., additional, Serpa, Mauricio H., additional, Zanetti, Marcus V., additional, Lebedeva, Irina, additional, Kaleda, Vasily, additional, Tomyshev, Alexander, additional, Crow, Tim, additional, James, Anthony, additional, Cervenka, Simon, additional, Sellgren, Carl M, additional, Fatouros‐Bergman, Helena, additional, Agartz, Ingrid, additional, Howells, Fleur, additional, Stein, Dan J., additional, Temmingh, Henk, additional, Uhlmann, Anne, additional, Zubicaray, Greig I., additional, McMahon, Katie L., additional, Wright, Margie, additional, Cobia, Derin, additional, Csernansky, John G., additional, Thompson, Paul M., additional, Turner, Jessica A., additional, and Wang, Lei, additional
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- 2021
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46. sj-pdf-1-nnr-10.1177_15459683211046259 – Supplemental Material for Repetitive Peripheral Sensory Stimulation as an Add-On Intervention for Upper Limb Rehabilitation in Stroke: A Randomized Trial
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Conforto, Adriana B., Machado, André G., Ribeiro, Nathalia H. V., Plow, Ela B., Liew, Sook-Lei, da Costa Leite, Claudia, Zavaliangos-Petropulu, Artemis, Menezes, Isabella, dos Anjos, Sarah M., Luccas, Rafael, Peckham, Paul Hunter, and Cohen, Leonardo G.
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FOS: Clinical medicine ,110308 Geriatrics and Gerontology ,110904 Neurology and Neuromuscular Diseases ,Neuroscience - Abstract
Supplemental Material, sj-pdf-1-nnr-10.1177_15459683211046259 for Repetitive Peripheral Sensory Stimulation as an Add-On Intervention for Upper Limb Rehabilitation in Stroke: A Randomized Trial by Adriana B. Conforto, André G. Machado, Nathalia H. V. Ribeiro, Ela B. Plow, Sook-Lei Liew, Claudia da Costa Leite, Artemis Zavaliangos-Petropulu, Isabella Menezes, Sarah M. dos Anjos, Rafael Luccas, Paul Hunter Peckham and Leonardo G. Cohen in Neurorehabilitation and Neural Repair
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- 2021
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47. Smaller spared subcortical nuclei are associated with worse post-stroke sensorimotor outcomes in 28 cohorts worldwide
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Liew, Sook-Lei, primary, Zavaliangos-Petropulu, Artemis, additional, Schweighofer, Nicolas, additional, Jahanshad, Neda, additional, Lang, Catherine E., additional, Lohse, Keith R., additional, Banaj, Nerisa, additional, Barisano, Giuseppe, additional, Baugh, Lee A., additional, Bhattacharya, Anup K., additional, Bigjahan, Bavrina, additional, Borich, Michael R., additional, Boyd, Lara A., additional, Brodtmann, Amy, additional, Buetefisch, Cathrin M., additional, Byblow, Winston D., additional, Cassidy, Jessica M., additional, Ciullo, Valentina, additional, Conforto, Adriana B., additional, Craddock, Richard C., additional, Dula, Adrienne N., additional, Egorova, Natalia, additional, Feng, Wuwei, additional, Fercho, Kelene A., additional, Gregory, Chris M., additional, Hanlon, Colleen A., additional, Hayward, Kathryn S., additional, Holguin, Jess A., additional, Hordacre, Brenton, additional, Hwang, Darryl H., additional, Kautz, Steven A., additional, Khlif, Mohamed Salah, additional, Kim, Bokkyu, additional, Kim, Hosung, additional, Kuceyeski, Amy, additional, Lo, Bethany, additional, Liu, Jingchun, additional, Lin, David, additional, Lotze, Martin, additional, MacIntosh, Bradley J., additional, Margetis, John L., additional, Mohamed, Feroze B., additional, Nordvik, Jan Egil, additional, Petoe, Matthew A., additional, Piras, Fabrizio, additional, Raju, Sharmila, additional, Ramos-Murguialday, Ander, additional, Revill, Kate P., additional, Roberts, Pamela, additional, Robertson, Andrew D., additional, Schambra, Heidi M., additional, Seo, Na Jin, additional, Shiroishi, Mark S., additional, Soekadar, Surjo R., additional, Spalletta, Gianfranco, additional, Stinear, Cathy M., additional, Suri, Anisha, additional, Tang, Wai Kwong, additional, Thielman, Gregory T., additional, Thijs, Vincent N., additional, Vecchio, Daniela, additional, Wang, Junping, additional, Ward, Nick S., additional, Westlye, Lars T., additional, Winstein, Carolee J., additional, Wittenberg, George F., additional, Wong, Kristin A., additional, Yu, Chunshui, additional, Wolf, Steven L., additional, Cramer, Steven C., additional, and Thompson, Paul M., additional
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- 2020
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48. Testing a convolutional neural network‐based hippocampal segmentation method in a stroke population
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Zavaliangos‐Petropulu, Artemis, primary, Tubi, Meral A., additional, Haddad, Elizabeth, additional, Zhu, Alyssa, additional, Braskie, Meredith N., additional, Jahanshad, Neda, additional, Thompson, Paul M., additional, and Liew, Sook‐Lei, additional
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- 2020
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49. A White Matter Connection of Schizophrenia and Alzheimer’s Disease
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Kochunov, Peter, primary, Zavaliangos-Petropulu, Artemis, additional, Jahanshad, Neda, additional, Thompson, Paul M, additional, Ryan, Meghann C, additional, Chiappelli, Joshua, additional, Chen, Shuo, additional, Du, Xiaoming, additional, Hatch, Kathryn, additional, Adhikari, Bhim, additional, Sampath, Hemalatha, additional, Hare, Stephanie, additional, Kvarta, Mark, additional, Goldwaser, Eric, additional, Yang, Fude, additional, Olvera, Rene L, additional, Fox, Peter T, additional, Curran, Joanne E, additional, Blangero, John, additional, Glahn, David C, additional, Tan, Yunlong, additional, and Hong, L Elliot, additional
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- 2020
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50. The ENIGMA Stroke Recovery Working Group: Big data neuroimaging to study brain–behavior relationships after stroke
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Liew, Sook‐Lei, primary, Zavaliangos‐Petropulu, Artemis, additional, Jahanshad, Neda, additional, Lang, Catherine E., additional, Hayward, Kathryn S., additional, Lohse, Keith R., additional, Juliano, Julia M., additional, Assogna, Francesca, additional, Baugh, Lee A., additional, Bhattacharya, Anup K., additional, Bigjahan, Bavrina, additional, Borich, Michael R., additional, Boyd, Lara A., additional, Brodtmann, Amy, additional, Buetefisch, Cathrin M., additional, Byblow, Winston D., additional, Cassidy, Jessica M., additional, Conforto, Adriana B., additional, Craddock, R. Cameron, additional, Dimyan, Michael A., additional, Dula, Adrienne N., additional, Ermer, Elsa, additional, Etherton, Mark R., additional, Fercho, Kelene A., additional, Gregory, Chris M., additional, Hadidchi, Shahram, additional, Holguin, Jess A., additional, Hwang, Darryl H., additional, Jung, Simon, additional, Kautz, Steven A., additional, Khlif, Mohamed Salah, additional, Khoshab, Nima, additional, Kim, Bokkyu, additional, Kim, Hosung, additional, Kuceyeski, Amy, additional, Lotze, Martin, additional, MacIntosh, Bradley J., additional, Margetis, John L., additional, Mohamed, Feroze B., additional, Piras, Fabrizio, additional, Ramos‐Murguialday, Ander, additional, Richard, Geneviève, additional, Roberts, Pamela, additional, Robertson, Andrew D., additional, Rondina, Jane M., additional, Rost, Natalia S., additional, Sanossian, Nerses, additional, Schweighofer, Nicolas, additional, Seo, Na Jin, additional, Shiroishi, Mark S., additional, Soekadar, Surjo R., additional, Spalletta, Gianfranco, additional, Stinear, Cathy M., additional, Suri, Anisha, additional, Tang, Wai Kwong W., additional, Thielman, Gregory T., additional, Vecchio, Daniela, additional, Villringer, Arno, additional, Ward, Nick S., additional, Werden, Emilio, additional, Westlye, Lars T., additional, Winstein, Carolee, additional, Wittenberg, George F., additional, Wong, Kristin A., additional, Yu, Chunshui, additional, Cramer, Steven C., additional, and Thompson, Paul M., additional
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- 2020
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