Enhanced Atrial Fibrillation Prediction in ESUS Patients with Hypergraph-based Pre-training
arXiv cs.LG / 3/17/2026
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Key Points
- The paper introduces supervised and unsupervised hypergraph-based pre-training to improve AF prediction in ESUS patients by addressing small cohorts and high-dimensional features.
- It pre-trains hypergraph-based patient embeddings on a large stroke cohort (7,780 patients) and transfers them to a smaller ESUS cohort (510 patients) to reduce dimensionality while preserving clinically meaningful information.
- The pre-trained embeddings enable effective AF risk prediction with lightweight models, with experiments showing improvements in accuracy and robustness over traditional models trained on raw data.
- The approach offers a scalable framework for AF risk prediction after stroke by leveraging higher-order interactions captured by hypergraphs.
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