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Uncovering Latent Communication Patterns in Brain Networks via Adaptive Flow Routing

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Unraveling how macroscopic cognitive phenotypes emerge from microscopic neuronal connectivity remains one of the core pursuits of neuroscience. To this end, researchers typically leverage multi-modal information from structural connectivity (SC) and functional connectivity (FC) to complete downstream tasks. Recent methodologies explore the intricate coupling mechanisms between SC and FC, attempting to fuse their representations at the regional level. However, lacking fundamental neuroscientific insight, these approaches fail to uncover the latent interactions between neural regions underlying these connectomes, and thus cannot explain why SC and FC exhibit dynamic states of both coupling and heterogeneity. In this paper, we formulate multi-modal fusion through the lens of neural communication dynamics and propose the Adaptive Flow Routing Network (AFR-Net), a physics-informed framework that models how structural constraints (SC) give rise to functional communication patterns (FC), enabling interpretable discovery of critical neural pathways. Extensive experiments demonstrate that AFR-Net significantly outperforms state-of-the-art baselines. The code is available at https://anonymous.4open.science/r/DIAL-F0D1.

Tianhao Huang, Guanghui Min, Zhenyu Lei, Aiying Zhang, Chen Chen• 2026

Related benchmarks

TaskDatasetResultRank
Brain Network ClassificationABCD-OCD
F1 Score70.62
30
Brain Network ClassificationABCD-ADHD
F1 Score65.5
15
Brain Network ClassificationABCD-Anx
F1 Score62.15
15
Brain Network ClassificationPPMI
F1 Score83.7
15
ClassificationABCD-ADHD
Accuracy63.75
15
ClassificationPPMI
Accuracy82.69
15
ClassificationABCD-Anx
Accuracy58.16
15
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