Topology-Aware Graph Augmentation for Predicting Clinical Trajectories in Neurocognitive Disorders
Wang, Qianqian, Wang, Wei, Fang, Yuqi, Li, Hong-Jun, Bozoki, Andrea, Liu, Mingxia
–arXiv.org Artificial Intelligence
Brain networks/graphs derived from resting-state functional MRI (fMRI) help study underlying pathophysiology of neurocognitive disorders by measuring neuronal activities in the brain. Some studies utilize learning-based methods for brain network analysis, but typically suffer from low model generalizability caused by scarce labeled fMRI data. As a notable self-supervised strategy, graph contrastive learning helps leverage auxiliary unlabeled data. But existing methods generally arbitrarily perturb graph nodes/edges to generate augmented graphs, without considering essential topology information of brain networks. To this end, we propose a topology-aware graph augmentation (TGA) framework, comprising a pretext model to train a generalizable encoder on large-scale unlabeled fMRI cohorts and a task-specific model to perform downstream tasks on a small target dataset. In the pretext model, we design two novel topology-aware graph augmentation strategies: (1) hub-preserving node dropping that prioritizes preserving brain hub regions according to node importance, and (2) weight-dependent edge removing that focuses on keeping important functional connectivities based on edge weights. Experiments on 1, 688 fMRI scans suggest that TGA outperforms several state-of-the-art methods.
arXiv.org Artificial Intelligence
Oct-31-2024
- Country:
- North America > United States (0.29)
- Genre:
- Research Report (1.00)
- Industry:
- Health & Medicine
- Health Care Technology (1.00)
- Therapeutic Area > Neurology (1.00)
- Health & Medicine
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