An interpretable cross-attentive multi-modal MRI fusion framework for schizophrenia identification

Ziyu Zhou; Anton Orlichenko; Gang Qu; Zening Fu; Zhengming Ding; Julia Stephen; Tony Wilson; Vince Calhoun; Yu-Ping Wang
Published in Neuroimage Rep,

Abstract

Functional MRI (fMRI) and structural MRI (sMRI) offer complementary insights into brain function and anatomy, but their integration for schizophrenia identification remains challenging due to modality heterogeneity. Many existing methods fall short of effective modeling of the interaction between two modalities. We propose CAMF, a Cross-Attentive Multi-modal Fusion framework that employs self-attention to capture intra-modal patterns and cross-attention to learn inter-modal relationships. In addition, we introduce the gradient-guided score-class activation map to enhance interpretability by highlighting salient features. Our approach significantly improves the accuracy in classifying schizophrenia, as demonstrated by the evaluation of multi-modal brain imaging datasets from four cohorts of schizophrenia studies. Furthermore, the model identifies functional networks and anatomical regions aligned with established biomarkers. CAMF provides an accurate and interpretable framework for multimodal brain imaging analysis, offering new insights into schizophrenia-related alterations.

  • Published Article

    The article of record on the publisher's website. DOI: 10.1016/j.ynirp.2026.100338

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