期刊
HUMAN BRAIN MAPPING
卷 44, 期 2, 页码 509-522出版社
WILEY
DOI: 10.1002/hbm.26077
关键词
functional network connectivity; multimodal deep learning; resting-state functional and structural MRI; saliency; schizophrenia classification; single nucleotide polymorphism
Characterizing neuropsychiatric disorders is challenging, but combining structural and functional neuroimaging with genomic data in a multimodal classification framework can improve the classification of disorders and explore underlying neural and biological mechanisms. By developing neural networks for feature learning and implementing an adaptive control unit for fusion, we achieved high accuracy in schizophrenia prediction and identified critical neural features and genes/biological pathways associated with the disorder.
Characterizing neuropsychiatric disorders is challenging due to heterogeneity in the population. We propose combining structural and functional neuroimaging and genomic data in a multimodal classification framework to leverage their complementary information. Our objectives are two-fold (i) to improve the classification of disorders and (ii) to introspect the concepts learned to explore underlying neural and biological mechanisms linked to mental disorders. Previous multimodal studies have focused on naive neural networks, mostly perceptron, to learn modality-wise features and often assume equal contribution from each modality. Our focus is on the development of neural networks for feature learning and implementing an adaptive control unit for the fusion phase. Our mid fusion with attention model includes a multilayer feed-forward network, an autoencoder, a bi-directional long short-term memory unit with attention as the features extractor, and a linear attention module for controlling modality-specific influence. The proposed model acquired 92% (p < .0001) accuracy in schizophrenia prediction, outperforming several other state-of-the-art models applied to unimodal or multimodal data. Post hoc feature analyses uncovered critical neural features and genes/biological pathways associated with schizophrenia. The proposed model effectively combines multimodal neuroimaging and genomics data for predicting mental disorders. Interpreting salient features identified by the model may advance our understanding of their underlying etiological mechanisms.
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