基于加权可见性图的病灶脑电信号检测

Sudip Modak, Sayanjit Singha Roy, Kaniska Samanta, S. Chatterjee, Sayantan Dey, Ronjoy Bhowmik, R. Bose
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引用次数: 3

摘要

局灶性癫痫是一种神经系统疾病,起源于人类大脑的特定区域,即癫痫灶。局灶性癫痫的诊断通常通过脑电图分析完成。本文利用加权可见性图理论,提出了一种区分脑电信号焦点和非焦点类别的新方法。可见性图提供任何信号的拓扑表示,同时保留其时间特征。本文采用加权可见性算法将焦点和非焦点脑电信号转换为复杂网络。从变换后的信号中提取若干特征参数,并采用单因素方差分析检验其统计显著性。最后,将这些特征作为支持向量机分类器的输入进行分类。对加权可见性图的两个重要参数渗透率和尺度因子进行了变化,研究了它们对SVM分类器性能的影响。可以观察到,前面提到的这两个参数直接影响分类器的性能。在本工作中,对脑电信号的焦点和非焦点的分类准确率达到了92.5%。该方法可以实现对病灶脑电信号的实时检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Focal EEG Signals Employing Weighted Visibility Graph
Focal epilepsy is a neurological disease, stem from a specific region of human brain, which is known as epileptogenic focus. Diagnosis of focal seizures is usually done using EEG analysis. In this paper, a novel technique to discriminate EEG signals into focal and nonfocal categories is proposed employing weighted visibility graph theory. Visibility graph provides a topological representation of any signal while preserving its temporal characteristics. In this present contribution, the EEG signals of focal and nonfocal categories are transformed into complex networks employing weighted visibility algorithm. From the transformed signals, several feature parameters were extracted and their statistical significance was examined using one-way analysis of variance test. Finally, the features were served as inputs to a support vector machines classifier for the purpose of classification. Two important parameters of weighted visibility graph i.e. penetrability and scale factor have been varied to investigate their effect on the performance of SVM classifier. It has been observed that both of these two previously mentioned parameters directly influence the classifier performance. In the present work, highest classification accuracy of 92.5% has been obtained in discriminating focal and nonfocal EEG signals. The proposed method can be potentially implemented for real-time detection of focal EEG signals.
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