Author:
Yan Weizheng,Yu Linzhen,Liu Dandan,Sui Jing,Calhoun Vince D.,Lin Zheng
Abstract
BackgroundAccurate classification based on affordable objective neuroimaging biomarkers are important steps toward designing individualized treatment.MethodsIn this work, we investigated a deep learning classification model, multi-scale convolutional recurrent neural network (MCRNN), to explore psychiatric disorder-related biomarkers by leveraging the spatiotemporal information of resting-state EEG (rsEEG) using a multiple psychiatric disorder database containing 327 individuals diagnosed with schizophrenia, bipolar, major depressive disorders, and healthy controls. All subjects were mapped to a shared low-dimensional subspace for intuitively interpreting the inter-relationship and separation of psychiatric disorders.ResultsPsychiatric disorders were identified using rsEEG with high accuracy ranged from 78.6 to 91.3% in patient vs. controls two-class classification, and 68.2% in four-class classification. The control-to-schizophrenia trajectory interpretated by the model was consistent with the disease severity in clinical observation.ConclusionThe MsRNN demonstrated a capability in extracting discriminative rsEEG biomarkers for psychiatric disorder classification, indicating its potential to facilitate our understanding of psychiatric disorders and monitoring interventions.
Funder
Chinese National Science Foundation
National Institutes of Health
National Science Foundation
Subject
Psychiatry and Mental health