基于遗传算法和小波变换的脑电信号半自动癫痫峰检测

Zainab Haydari, Yanqing Zhang, H. Soltanian-Zadeh
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引用次数: 14

摘要

提出了一种自动识别脑电图信号中癫痫特征的新算法。该算法基于遗传算法和小波变换的结合。首先利用遗传算法设计了适应脑电信号尖峰的最优小波基函数。然后将它们作为匹配滤波器,利用小波变换和基于阈值的估计方法从EEG记录中识别与癫痫发作活动相关的峰值。该方法可以快速、实时地估计出脑电图信号中癫痫峰的数量和位置。因此,适合对癫痫患者脑电图记录进行数据挖掘,用于癫痫的基础研究、癫痫发作的预测以及癫痫的治疗。我们使用不同样本的癫痫患者临床真实脑电图数据对该方法进行了应用和评估,结果表明该方法具有很高的灵敏度(90%以上)和选择性(90%以上)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-automatic epilepsy spike detection from EEG signal using Genetic Algorithm and Wavelet transform
A novel algorithm is proposed for identifying epileptic features in electroencephalograph (EEG) signals automatically. The proposed algorithm is based on the combination of the Genetic Algorithm (GA) and the Wavelet transform. Optimal Wavelet basis functions that adapt the spikes of the EEG signal are first designed using GA. Then they are used as matched filters to identify the spikes related to seizure activity from the EEG recordings using Wavelet transform and a threshold-based estimation method. The method can estimate the number and the location of epileptic spikes in an EEG signal very fast and almost in real time. Hence, it is suitable for data mining of EEG recordings of epileptic patients for fundamental studies of epilepsy, prediction of seizures, and treatment of epilepsy. We have applied and evaluated the method using different samples of real clinical EEG data of epileptic patients, where it has shown a very high sensitivity (more than 90%) and selectivity (more than 90%).
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