利用脑电图和异常检测预测癫痫患者的发作

Erfan Mirzaei, M. Shamsollahi
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摘要

癫痫是一种神经系统疾病,大脑活动异常,导致癫痫发作。癫痫发作可能包括抽搐和意识丧失,并可能伤害患者及其周围的人。许多病人都有耐药性,药物治疗并不能改善他们的状况。预测癫痫发作的发作可能会提高他们的生活质量。为此,许多研究利用了脑电图信号,它反映了大脑的电活动。本文提出了一种新的基于异常检测和一类支持向量机的癫痫发作预测方法。平均灵敏度为94%,误报率为0.89 / h。与其他方法(如分类方法)相比,该方法的优点是网络需要的训练数据少得多,因为每个患者只使用了8小时的训练数据。与其他研究相比,计算复杂度低,易于使用,适合于实时预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Seizure Prediction in Epileptic Patients Using EEG and Anomaly Detection
Epilepsy is a neurological disorder in which abnormal brain activity occurs, causing seizures. Seizures may involve convulsions and loss of consciousness and can harm patients and the people around them. Many patients are drug-resistant, and medication does not improve their situation. Predicting the onset of epileptic seizures may improve their quality of life. For this purpose, many studies have utilized EEG signal, which reflects the brain's electrical activity. This paper contains a new seizure prediction method based on Anomaly Detection and with the help of One-Class SVM. The average sensitivity and False Alarms Rate were 94% and 0.89 per hour. The advantage of this method over other methods, such as classification approaches, is that the network needs much less data for training, as only 8 hours of training data have been used for each patient. Low computational complexity and ease of use make it suitable for real-time prediction compared to other studies.
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