EEG-DIF: Early Warning of Epileptic Seizures through Generative Diffusion Model-based Multi-channel EEG Signals Forecasting
Zekun Jiang, Wei Dai, Qu Wei, Ziyuan Qin, Kang Li, Le Zhang

TL;DR
This paper introduces EEG-DIF, a generative diffusion model-based method that predicts future multi-channel EEG signals and provides early warning for epileptic seizures with high accuracy, enhancing clinical diagnosis.
Contribution
The study presents a novel diffusion model approach transforming EEG forecasting into image completion, capturing spatio-temporal correlations for seizure prediction.
Findings
Accurately predicts future EEG trends
Early seizure warning accuracy reaches 0.89
Demonstrates effectiveness on public EEG dataset
Abstract
Multi-channel EEG signals are commonly used for the diagnosis and assessment of diseases such as epilepsy. Currently, various EEG diagnostic algorithms based on deep learning have been developed. However, most research efforts focus solely on diagnosing and classifying current signal data but do not consider the prediction of future trends for early warning. Additionally, since multi-channel EEG can be essentially regarded as the spatio-temporal signal data received by detectors at different locations in the brain, how to construct spatio-temporal information representations of EEG signals to facilitate future trend prediction for multi-channel EEG becomes an important problem. This study proposes a multi-signal prediction algorithm based on generative diffusion models (EEG-DIF), which transforms the multi-signal forecasting task into an image completion task, allowing for comprehensive…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces
MethodsDiffusion · Focus
