Abstract

Schizophrenia is a chronic neuropsychiatric disorder that causes distinct structural alterations within the brain. We hypothesize that deep learning applied to a structural neuroimaging dataset could detect disease-related alteration and improve classification and diagnostic accuracy. We tested this hypothesis using a single, widely available, and conventional T1-weighted MRI scan, from which we extracted the 3D whole-brain structure using standard post-processing methods. A deep learning model was then developed, optimized, and evaluated on three open datasets with T1-weighted MRI scans of patients with schizophrenia. Our proposed model outperformed the benchmark model, which was also trained with structural MR images using a 3D CNN architecture. Our model is capable of almost perfectly (area under the ROC curve = 0.987) distinguishing schizophrenia patients from healthy controls on unseen structural MRI scans. Regional analysis localized subcortical regions and ventricles as the most predictive brain regions. Subcortical structures serve a pivotal role in cognitive, affective, and social functions in humans, and structural abnormalities of these regions have been associated with schizophrenia. Our finding corroborates that schizophrenia is associated with widespread alterations in subcortical brain structure and the subcortical structural information provides prominent features in diagnostic classification. Together, these results further demonstrate the potential of deep learning to improve schizophrenia diagnosis and identify its structural neuroimaging signatures from a single, standard T1-weighted brain MRI.

Details

Title
Detecting schizophrenia with 3D structural brain MRI using deep learning
Author
Zhang, Junhao 1 ; Rao, Vishwanatha M. 1 ; Tian, Ye 1 ; Yang, Yanting 1 ; Acosta, Nicolas 1 ; Wan, Zihan 2 ; Lee, Pin-Yu 1 ; Zhang, Chloe 3 ; Kegeles, Lawrence S. 4 ; Small, Scott A. 5 ; Guo, Jia 6 

 Columbia University, Department of Biomedical Engineering, New York, USA (GRID:grid.21729.3f) (ISNI:0000000419368729) 
 Columbia University, Department of Applied Mathematics, New York, USA (GRID:grid.21729.3f) (ISNI:0000000419368729) 
 Jericho High School, Jericho, USA (GRID:grid.21729.3f) 
 Columbia University, Department of Psychiatry, New York, USA (GRID:grid.21729.3f) (ISNI:0000000419368729); Columbia University, Department of Radiology, New York, USA (GRID:grid.21729.3f) (ISNI:0000000419368729) 
 Columbia University, Department of Neurology, Radiology, and Psychiatry, New York, USA (GRID:grid.21729.3f) (ISNI:0000000419368729); Columbia University, The Taub Institute for Research on Alzheimer’s Disease and the Aging Brain, New York, USA (GRID:grid.21729.3f) (ISNI:0000000419368729) 
 Columbia University, Department of Psychiatry, New York, USA (GRID:grid.21729.3f) (ISNI:0000000419368729); Columbia University, The Mortimer B. Zuckerman Mind Brain Behavior Institute, New York, USA (GRID:grid.21729.3f) (ISNI:0000000419368729) 
Pages
14433
Publication year
2023
Publication date
2023
Publisher
Nature Publishing Group
e-ISSN
20452322
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2859997856
Copyright
© Springer Nature Limited 2023. This work is published under http://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.