Analysis and Prediction of Epilepsy Based on Visibility Graph

Chongqing Hao, Zhijun Chen, Zhe Zhao
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引用次数: 8

Abstract

To classify and predict epilepsy seizure, visibility graph method is applied to analyze epileptic EEG. This stragety transform EEG time series to a complex network, and then EEG time series is analyzed from network topology and statistical characteristics. This paper devotes to classify epileptic EEG in ictal and interictal period and predict epilepsy seizure using visibility graph with sliding window. The results show that clustering coefficient is statistically higher in ictal period than in interictal period, and there is no obvious difference for their average path length. Clustering coefficient can be regarded as a new marker of epiletic seizure and is used to predict seizure. The EEG analysis method provides a new idea for epilepsy diagnosis and prediction.
基于可视性图的癫痫分析与预测
为了对癫痫发作进行分类和预测,应用可见图法对癫痫脑电图进行分析。该策略将脑电时间序列转化为一个复杂的网络,然后从网络拓扑和统计特征两方面对脑电时间序列进行分析。本文研究了癫痫发作初期和间歇期脑电图的分类,并利用带滑动窗口的可见性图预测癫痫发作。结果表明:突发期的聚类系数显著高于间歇期,平均路径长度差异不显著;聚类系数可作为癫痫发作的新标志,用于癫痫发作的预测。脑电图分析方法为癫痫的诊断和预测提供了新的思路。
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