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Epileptic Activity Detection in EEG Signals using Linear and Non-linear Feature Extraction Methods

机译:使用线性和非线性特征提取方法检测脑电信号中的癫痫活动

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The aim of this study is to obtain an automated medical diagnosis-support system about epilepsy by classifying EEG signal epochs as ictal, inter-ictal and normal. EEG signals were analyzed in their sub-bands obtained via discrete wavelet transform. Linear and non-linear methods are used for extracting features of normal, ictal and inter-ictal states. Support vector machine classification is realized by using time domain features which are autoregressive coefficients and linear prediction error energy; and information theory based features which are Shannon entropy and approximate entropy. In order to improve accuracy, linear and non-linear features are combined and then SVM trained by these features. By the proposed method, 99.0%, 96.0%, 100% accuracy, sensitivity and specificity are obtained for epileptic and non-epileptic classification, while accuracy, sensitivity and specificity of 98.2%, 95.0 and 99.0% are obtained for normal, ictal, and inter-ictal activity classification, respectively.
机译:这项研究的目的是通过将EEG信号时期分为发作期,发作期和正常期来获得有关癫痫症的自动化医学诊断支持系统。通过离散小波变换对脑电信号的子带进行分析。线性和非线性方法用于提取正常,ictal和ictal状态的特征。支持向量机分类是通过使用时域特征实现的,这些时域特征是自回归系数和线性预测误差能量。以及基于信息论的特征,即香农熵和近似熵。为了提高准确性,将线性和非线性特征进行组合,然后通过这些特征对SVM进行训练。通过所提出的方法,对于癫痫和非癫痫分类的准确度,敏感性和特异性分别为99.0%,96.0%,100%,而对于正常,发作性和非癫痫分类的准确度,敏感性和特异性分别为98.2%,95.0和99.0%。发作间活动分类。

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