BPI-GNN: Interpretable brain network-based psychiatric diagnosis and subtyping
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https://hdl.handle.net/10037/34558Date
2024-04-01Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Converging evidence increasingly suggests that psychiatric disorders, such as major depressive disorder (MDD)
and autism spectrum disorder (ASD), are not unitary diseases, but rather heterogeneous syndromes that
involve diverse, co-occurring symptoms and divergent responses to treatment. This clinical heterogeneity has
hindered the progress of precision diagnosis and treatment effectiveness in psychiatric disorders. In this study,
we propose BPI-GNN, a new interpretable graph neural network (GNN) framework for analyzing functional
magnetic resonance images (fMRI), by leveraging the famed prototype learning. In addition, we introduce
a novel generation process of prototype subgraph to discover essential edges of distinct prototypes and
employ total correlation (TC) to ensure the independence of distinct prototype subgraph patterns. BPI-GNN
can effectively discriminate psychiatric patients and healthy controls (HC), and identify biological meaningful
subtypes of psychiatric disorders. We evaluate the performance of BPI-GNN against 11 popular brain network
classification methods on three psychiatric datasets and observe that our BPI-GNN always achieves the highest
diagnosis accuracy. More importantly, we examine differences in clinical symptom profiles and gene expression
profiles among identified subtypes and observe that our identified brain-based subtypes have the clinical
relevance. It also discovers the subtype biomarkers that align with current neuro-scientific knowledge.
Publisher
ElsevierCitation
Zheng, Yu, Chen, Dang, Chen. BPI-GNN: Interpretable brain network-based psychiatric diagnosis and subtyping. NeuroImage. 2024;292Metadata
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Copyright 2024 The Author(s)