Download PDFOpen PDF in browserRevisiting SUDEP Risk Prediction via Data Augmentation8 pages•Published: April 19, 2026AbstractSudden unexpected death in epilepsy (SUDEP) is the leading cause of epilepsy-related mortality. Low-cost and noninvasive interictal biomarkers of SUDEP risk can help clinicians identify high-risk patients and initiate preventive actions. However, the small sample size in SUDEP patients remains a bottleneck for discriminatory analysis or biomarker discovery. Machine-driven data augmentation (DA) techniques can potentially alleviate the sample insufficiency or imbalance problem using synthetic data. Here we revisit an old SUDEP risk prediction problem from a new DA and generative artificial intelligence (AI) perspective, using a multicenter cohort study consisting of multichannel interictal electroencephalography (EEG) and electrocardiography (ECG) data from SUDEP patients and age-matched living epilepsy patient controls. Our results show that DA strategies can not only significantly improve the cross-validated prediction accuracy but also generalize well in newly collected held-out data samples.Keyphrases: data augmentation, eeg, generative ai, sudep risk In: Jernej Masnec, Hamid Reza Karimian, Parisa Kordjamshidi and Yan Li (editors). Proceedings of AI for Accelerated Research Symposium, vol 3, pages 57-64.
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