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The neoteric feature extraction method of epilepsy EEG based on the vertex strength distribution of weighted complex network

机译:基于加权复合网络顶点强度分布的癫痫脑脑电图的新特征提取方法

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The study of epilepsy detection has great clinical significance. The focus of this study is feature extraction method, which has significant impacts on the performance of epilepsy detection. Recently, the statistic properties of complex network show ability to describe the dynamics of nonlinear time series. In this paper, a feature extraction method of epileptic EEG, based on statistical properties of weighted complex network, is proposed. The weighted network of epileptic EEG is first constructed and the vertex strength distribution of the converted network is studied. Then the weighted mean value of the vertex strength distribution is defined and extracted as the classification feature. Experimental results indicate that the extracted feature can clearly reflect the difference between ictal EEGs and interictal EEGs and the single feature classification based on extracted feature gets higher classification accuracy up to 95.50%.
机译:癫痫检测的研究具有很大的临床意义。本研究的重点是特征提取方法,对癫痫检测的性能产生显着影响。最近,复杂网络的统计属性表明了描述非线性时间序列动态的能力。本文提出了一种基于加权复合网络统计特性的癫痫eeg的特征提取方法。首先构建癫痫蜗杆的加权网络,研究了转换网络的顶点强度分布。然后定义顶点强度分布的加权平均值并作为分类特征提取。实验结果表明,提取的特征可以清楚地反映ICTAL脑电图和嵌入脑电图之间的差异,基于提取特征的单个特征分类越高,分类精度高达95.50%。

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