Shorter Latency of Real-time Epileptic Seizure Detection via Probabilistic Prediction
Yankun Xu, Jie Yang, Wenjie Ming, Shuang Wang, and Mohamad Sawan

TL;DR
This paper introduces a novel deep learning framework that significantly reduces seizure detection latency by transforming the task into probabilistic prediction, utilizing multiscale features and innovative decision strategies.
Contribution
It is the first to convert seizure detection into probabilistic prediction with soft-labeling and a multiscale feature extraction method, achieving at least 50% shorter detection latency.
Findings
Achieved 2.3s detection latency on CHB-MIT dataset.
Detected 94 out of 99 seizures during crossing period.
Reduced detection latency by at least 50% compared to previous methods.
Abstract
Although recent studies have proposed seizure detection algorithms with good sensitivity performance, there is a remained challenge that they were hard to achieve significantly short detection latency in real-time scenarios. In this manuscript, we propose a novel deep learning framework intended for shortening epileptic seizure detection latency via probabilistic prediction. We are the first to convert the seizure detection task from traditional binary classification to probabilistic prediction by introducing a crossing period from seizure-oriented EEG recording and proposing a labeling rule using soft-label for crossing period samples. And, a novel multiscale STFT-based feature extraction method combined with 3D-CNN architecture is proposed to accurately capture predictive probabilities of samples. Furthermore, we also propose rectified weighting strategy to enhance predictive…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Blind Source Separation Techniques · Advanced Neural Network Applications
Methods3D Convolution · Convolution
