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基于时间序列复杂网络的癫痫脑电分类研究

杨晓利 杨彬 李振伟 吴晓琴

计算机与数字工程2023,Vol.51Issue(12):2814-2820,7.
计算机与数字工程2023,Vol.51Issue(12):2814-2820,7.DOI:10.3969/j.issn.1672-9722.2023.12.009

基于时间序列复杂网络的癫痫脑电分类研究

Research on Epilepsy EEG Classification Based on Time Series Complex Network

杨晓利 1杨彬 1李振伟 1吴晓琴1

作者信息

  • 1. 河南科技大学医学技术与工程学院 洛阳 471000
  • 折叠

摘要

Abstract

The brain is a highly complex system,and the EEG signal has a strong noise background and weak signal.The tra-ditional EEG signal feature extraction method cannot fully reflect the feature information of the EEG signal.Therefore,an epilepsy EEG classification method combining with complex network theory and constructing complex networks based on time series is pro-posed.First,the time series of epilepsy EEG signals is processed in segments,and each segment is used as a node in the network.The relationship between nodes through Pearson correlation is calculated to construct the connection matrix of the network,and then the network feature parameters is calculated through the connection matrix,and statistical analysis on the feature parameters is per-formed to construct the feature vector.Finally,classifiers such as SVM,logistic regression and K-NN are used for classification re-search.The results show that the classification accuracy of this method for data sets A-E,AB-CDE and ABCD-E reached 96.67%,94.00% and 94.33%,respectively.Experimental results show that,as an alternative to traditional time and frequency analysis,this method can be used for pattern recognition and classification of EEG signals,and can effectively classify and recognize epileptic EEG signals.

关键词

复杂网络/时间序列/癫痫/脑电/分类

Key words

complex network/time series/epilepsy/EEG/classification

分类

信息技术与安全科学

引用本文复制引用

杨晓利,杨彬,李振伟,吴晓琴..基于时间序列复杂网络的癫痫脑电分类研究[J].计算机与数字工程,2023,51(12):2814-2820,7.

基金项目

河南省重点研发与推广专项(编号:202102310534)资助. (编号:202102310534)

计算机与数字工程

OACSTPCD

1672-9722

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