SDE-Driven Spatio-Temporal Hypergraph Neural Networks for Irregular Longitudinal fMRI Connectome Modeling in Alzheimer's Disease
arXiv cs.LG / 3/24/2026
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Key Points
- The paper introduces SDE-HGNN, an SDE-driven spatio-temporal hypergraph neural network designed to model Alzheimer’s disease progression from irregular longitudinal fMRI connectome data.
- It uses an SDE-based reconstruction module to infer continuous latent trajectories from irregular and missing scan observations.
- The method builds dynamic hypergraphs to capture higher-order interactions among brain regions and evolves hypergraph convolution parameters via SDE-controlled recurrent dynamics conditioned on inter-scan intervals.
- An added sparsity-based importance learning component identifies salient brain regions and discriminative connectivity patterns relevant to disease staging.
- Experiments on the OASIS-3 and ADNI cohorts report consistent performance gains over prior graph and hypergraph baselines for AD progression prediction, and the authors provide source code.
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