Dweiri Yazan M, Al-Omary Taqwa K
Department of Biomedical Engineering, Faculty of Engineering, Jordan University of Science and Technology, P.O. Box 3030, Irbid 22110, Jordan.
NeuroSci. 2024 Feb 29;5(1):59-70. doi: 10.3390/neurosci5010004. eCollection 2024 Mar.
There is a need for seizure classification based on EEG signals that can be implemented with a portable device for in-home continuous minoring of epilepsy. In this study, we developed a novel machine learning algorithm for seizure detection suitable for wearable systems. Extreme gradient boosting (XGBoost) was implemented to classify seizures from single-channel EEG obtained from an open-source CHB-MIT database. The results of classifying 1-s EEG segments are shown to be sufficient to obtain the information needed for seizure detection and achieve a high seizure sensitivity of up to 89% with low computational cost. This algorithm can be impeded in single-channel EEG systems that use in- or around-the-ear electrodes for continuous seizure monitoring at home.
需要基于脑电图信号进行癫痫发作分类,以便能够通过便携式设备在家中对癫痫进行连续监测。在本研究中,我们开发了一种适用于可穿戴系统的新型癫痫发作检测机器学习算法。采用极端梯度提升(XGBoost)对从开源CHB-MIT数据库获得的单通道脑电图进行癫痫发作分类。对1秒脑电图片段进行分类的结果表明,足以获取癫痫发作检测所需的信息,并以低计算成本实现高达89%的高癫痫发作敏感性。该算法可应用于使用耳内或耳周电极在家中进行连续癫痫发作监测的单通道脑电图系统。