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Tim Hahn

Showing results (221-230 of 250) with videos related to

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Biological Psychiatry|May 9, 2025
Thalamo-cortical structural co-variation networks are related to familial risk for schizophrenia in the context of lower nuclei volume estimates in patients: an ENIGMA studyAnnalisa Lella, Linda A Antonucci, Roberta Passiatore, et al.
Human Brain Mapping|July 1, 2024
Brain-age prediction: Systematic evaluation of site effects, and sample age range and sizeYuetong Yu, Hao-Qi Cui, Shalaila S Haas, et al.
Molecular Psychiatry|October 3, 2025
Classification of major depressive disorder using vertex-wise brain sulcal depth, curvature, and thickness with a deep and a shallow learning modelRoberto Goya-Maldonado, Tracy Erwin-Grabner, Ling-Li Zeng, et al.
Arxiv|February 20, 2025
Classification of Major Depressive Disorder Using Vertex-Wise Brain Sulcal Depth, Curvature, and Thickness with a Deep and a Shallow Learning ModelRoberto Goya-Maldonado, Tracy Erwin-Grabner, Ling-Li Zeng, et al.
Human Brain Mapping|June 3, 2024
Principal component analysis as an efficient method for capturing multivariate brain signatures of complex disorders-ENIGMA study in people with bipolar disorders and obesitySean R McWhinney, Jaroslav Hlinka, Eduard Bakstein, et al.
Translational Psychiatry|June 23, 2026
Decomposing neuroanatomical heterogeneity in depression: insights from an ENIGMA major depressive disorder working group study in 5146 individualsLukas Sempach, Sarah Ulrich, Stéphanie E E C Bauduin, et al.
Medrxiv : the Preprint Server for Health Sciences|October 24, 2023
Two neurostructural subtypes: results of machine learning on brain images from 4,291 individuals with schizophreniaYuchao Jiang, Cheng Luo, Jijun Wang, et al.
Nature Communications|July 16, 2024
Neurostructural subgroup in 4291 individuals with schizophrenia identified using the subtype and stage inference algorithmYuchao Jiang, Cheng Luo, Jijun Wang, et al.
Journal of Affective Disorders|January 26, 2026
Brain aging in bipolar disorder using a neuroimaging and machine learning-derived metric: Findings from the ENIGMA BD Working GroupHui Xin Ng, Christoph Abé, Martin Alda, et al.
Biological Psychiatry|March 6, 2026
Childhood Maltreatment and Deviations from Normative Brain Structure: A Mega-Analysis of 3,711 Individuals from the ENIGMA MDD and ENIGMA PTSD Working GroupsHaley R Wang, Zhen-Qi Liu, Elena Pozzi, et al.
Pageof 25

Showing results (221-230 of 250) with videos related to

Sort By:
Pageof 25
Biological Psychiatry|May 9, 2025
Thalamo-cortical structural co-variation networks are related to familial risk for schizophrenia in the context of lower nuclei volume estimates in patients: an ENIGMA studyAnnalisa Lella, Linda A Antonucci, Roberta Passiatore, et al.
Human Brain Mapping|July 1, 2024
Brain-age prediction: Systematic evaluation of site effects, and sample age range and sizeYuetong Yu, Hao-Qi Cui, Shalaila S Haas, et al.
Molecular Psychiatry|October 3, 2025
Classification of major depressive disorder using vertex-wise brain sulcal depth, curvature, and thickness with a deep and a shallow learning modelRoberto Goya-Maldonado, Tracy Erwin-Grabner, Ling-Li Zeng, et al.
Arxiv|February 20, 2025
Classification of Major Depressive Disorder Using Vertex-Wise Brain Sulcal Depth, Curvature, and Thickness with a Deep and a Shallow Learning ModelRoberto Goya-Maldonado, Tracy Erwin-Grabner, Ling-Li Zeng, et al.
Human Brain Mapping|June 3, 2024
Principal component analysis as an efficient method for capturing multivariate brain signatures of complex disorders-ENIGMA study in people with bipolar disorders and obesitySean R McWhinney, Jaroslav Hlinka, Eduard Bakstein, et al.
Translational Psychiatry|June 23, 2026
Decomposing neuroanatomical heterogeneity in depression: insights from an ENIGMA major depressive disorder working group study in 5146 individualsLukas Sempach, Sarah Ulrich, Stéphanie E E C Bauduin, et al.
Medrxiv : the Preprint Server for Health Sciences|October 24, 2023
Two neurostructural subtypes: results of machine learning on brain images from 4,291 individuals with schizophreniaYuchao Jiang, Cheng Luo, Jijun Wang, et al.
Nature Communications|July 16, 2024
Neurostructural subgroup in 4291 individuals with schizophrenia identified using the subtype and stage inference algorithmYuchao Jiang, Cheng Luo, Jijun Wang, et al.
Journal of Affective Disorders|January 26, 2026
Brain aging in bipolar disorder using a neuroimaging and machine learning-derived metric: Findings from the ENIGMA BD Working GroupHui Xin Ng, Christoph Abé, Martin Alda, et al.
Biological Psychiatry|March 6, 2026
Childhood Maltreatment and Deviations from Normative Brain Structure: A Mega-Analysis of 3,711 Individuals from the ENIGMA MDD and ENIGMA PTSD Working GroupsHaley R Wang, Zhen-Qi Liu, Elena Pozzi, et al.
Pageof 25