Paper ID: 2503.14655 • Published Mar 18, 2025
Core-Periphery Principle Guided State Space Model for Functional Connectome Classification
TL;DR
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Understanding the organization of human brain networks has become a central
focus in neuroscience, particularly in the study of functional connectivity,
which plays a crucial role in diagnosing neurological disorders. Advances in
functional magnetic resonance imaging and machine learning techniques have
significantly improved brain network analysis. However, traditional machine
learning approaches struggle to capture the complex relationships between brain
regions, while deep learning methods, particularly Transformer-based models,
face computational challenges due to their quadratic complexity in
long-sequence modeling. To address these limitations, we propose a
Core-Periphery State-Space Model (CP-SSM), an innovative framework for
functional connectome classification. Specifically, we introduce Mamba, a
selective state-space model with linear complexity, to effectively capture
long-range dependencies in functional brain networks. Furthermore, inspired by
the core-periphery (CP) organization, a fundamental characteristic of brain
networks that enhances efficient information transmission, we design CP-MoE, a
CP-guided Mixture-of-Experts that improves the representation learning of brain
connectivity patterns. We evaluate CP-SSM on two benchmark fMRI datasets: ABIDE
and ADNI. Experimental results demonstrate that CP-SSM surpasses
Transformer-based models in classification performance while significantly
reducing computational complexity. These findings highlight the effectiveness
and efficiency of CP-SSM in modeling brain functional connectivity, offering a
promising direction for neuroimaging-based neurological disease diagnosis.
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