CVMar 10

BrainSTR: Spatio-Temporal Contrastive Learning for Interpretable Dynamic Brain Network Modeling

arXiv:2603.09825v18.1h-index: 16
Predicted impact top 75% in CV · last 90 daysOriginality Incremental advance
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This work addresses the problem of identifying subtle and sparsely distributed diagnostic signals in dynamic brain networks for neuropsychiatric conditions, offering an incremental improvement in interpretability.

The paper tackled the challenge of achieving reliable interpretability in dynamic functional connectivity for neuropsychiatric diagnosis by proposing BrainSTR, a spatio-temporal contrastive learning framework, which validated its effectiveness on ASD, BD, and MDD datasets and provided interpretable evidence consistent with prior findings.

Dynamic functional connectivity captures time-varying brain states for better neuropsychiatric diagnosis and spatio-temporal interpretability, i.e., identifying when discriminative disease signatures emerge and where they reside in the connectivity topology. Reliable interpretability faces major challenges: diagnostic signals are often subtle and sparsely distributed across both time and topology, while nuisance fluctuations and non-diagnostic connectivities are pervasive. To address these issues, we propose BrainSTR, a spatio-temporal contrastive learning framework for interpretable dynamic brain network modeling. BrainSTR learns state-consistent phase boundaries via a data-driven Adaptive Phase Partition module, identifies diagnostically critical phases with attention, and extracts disease-related connectivity within each phase using an Incremental Graph Structure Generator regularized by binarization, temporal smoothness, and sparsity. Then, we introduce a spatio-temporal supervised contrastive learning approach that leverages diagnosis-relevant spatio-temporal patterns to refine the similarity metric between samples and capture more discriminative spatio-temporal features, thereby constructing a well-structured semantic space for coherent and interpretable representations. Experiments on ASD, BD, and MDD validate the effectiveness of BrainSTR, and the discovered critical phases and subnetworks provide interpretable evidence consistent with prior neuroimaging findings. Our code: https://anonymous.4open.science/r/BrainSTR1.

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