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A Novel Feature Extraction Method for Epileptic EEG Based on Degree Distribution of Complex Network

机译:基于复杂网络度分布的癫痫脑电特征提取方法

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摘要

Automatic seizure detection is significant in relieving the heavy workload of inspecting prolonged electroencephalograph (EEG). Feature extraction method for automatic epileptic seizure detection has important research significance because the extracted feature seriously affects the detection algorithm performance. Recently complex network theory shows its advantages to analyze the nonlinear and non-stationary signals. In this paper, we propose a novel feature extraction method for epileptic EEG based on a statistical property of complex network. The EEG signal is first converted to complex network and the degree of every node in the network is computed. By analyzing the degree distribution, the weighted mean value of degree distribution is extracted as classification feature. A public dataset was utilized for evaluating the classifying performance of the extracted feature. Experimental results show that the extracted feature achieves not only higher classification accuracy up to 96.50% but also a very fast computation speed, which indicate the extracted feature can clearly distinguish the ictal EEG from interictal EEG and has great potentiality of real-time epileptic seizures detection.
机译:自动癫痫发作检测对于减轻检查长时间脑电图(EEG)的繁重工作非常重要。特征提取方法对癫痫发作的自动检测具有重要的研究意义,因为提取的特征会严重影响检测算法的性能。最近,复杂网络理论显示了其分析非线性和非平稳信号的优势。本文提出了一种基于复杂网络统计特性的癫痫脑电特征提取方法。首先将EEG信号转换为复杂网络,然后计算网络中每个节点的程度。通过分析度分布,提取度分布的加权平均值作为分类特征。利用公共数据集评估提取特征的分类性能。实验结果表明,所提取的特征不仅可以达到高达96.50%的分类精度,而且运算速度非常快,表明所提取的特征可以清楚地区分发作性脑电图和发作性脑电图,具有实时癫痫发作检测的巨大潜力。 。

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