EBioMedicine (Sep 2019)

Discriminating schizophrenia using recurrent neural network applied on time courses of multi-site FMRI dataResearch in context

  • Weizheng Yan,
  • Vince Calhoun,
  • Ming Song,
  • Yue Cui,
  • Hao Yan,
  • Shengfeng Liu,
  • Lingzhong Fan,
  • Nianming Zuo,
  • Zhengyi Yang,
  • Kaibin Xu,
  • Jun Yan,
  • Luxian Lv,
  • Jun Chen,
  • Yunchun Chen,
  • Hua Guo,
  • Peng Li,
  • Lin Lu,
  • Ping Wan,
  • Huaning Wang,
  • Huiling Wang,
  • Yongfeng Yang,
  • Hongxing Zhang,
  • Dai Zhang,
  • Tianzi Jiang,
  • Jing Sui

Journal volume & issue
Vol. 47
pp. 543 – 552

Abstract

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Background: Current fMRI-based classification approaches mostly use functional connectivity or spatial maps as input, instead of exploring the dynamic time courses directly, which does not leverage the full temporal information. Methods: Motivated by the ability of recurrent neural networks (RNN) in capturing dynamic information of time sequences, we propose a multi-scale RNN model, which enables classification between 558 schizophrenia and 542 healthy controls by using time courses of fMRI independent components (ICs) directly. To increase interpretability, we also propose a leave-one-IC-out looping strategy for estimating the top contributing ICs. Findings: Accuracies of 83·2% and 80·2% were obtained respectively for the multi-site pooling and leave-one-site-out transfer classification. Subsequently, dorsal striatum and cerebellum components contribute the top two group-discriminative time courses, which is true even when adopting different brain atlases to extract time series. Interpretation: This is the first attempt to apply a multi-scale RNN model directly on fMRI time courses for classification of mental disorders, and shows the potential for multi-scale RNN-based neuroimaging classifications. Fund: Natural Science Foundation of China, the Strategic Priority Research Program of the Chinese Academy of Sciences, National Institutes of Health Grants, National Science Foundation. Keywords: Recurrent neural network (RNN), Schizophrenia, Multi-site classification, fMRI, Striatum, Cerebellum, Deep learning