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Analysis of alcoholic EEG signals based on horizontal visibility graph entropy

机译:基于水平能见度图熵的酒精性脑电信号分析

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This paper proposes a novel horizontal visibility graph entropy (HVGE) approach to evaluate EEG signals from alcoholic subjects and controlled drinkers and compare with a sample entropy (SaE) method. Firstly, HVGEs and SaEs are extracted from 1,200 recordings of biomedical signals, respectively. A statistical analysis method is employed to choose the optimal channels to identify the abnormalities in alcoholics. Five group channels are selected and forwarded to a K-Nearest Neighbour (K-NN) and a support vector machine (SVM) to conduct classification, respectively. The experimental results show that the HVGEs associated with left hemisphere, (C) 1, (C) 3 and FC 5 electrodes, of alcoholics are significantly abnormal. The accuracy of classification with 10-fold cross-validation is 87.5 (%) with about three HVGE features. By using just optimal 13-dimension HVGE features, the accuracy is 95.8 (%) . In contrast, SaE features associated cannot identify the left hemisphere disorder for alcoholism and the maximum classification ratio based on SaE is just 95.2 (%) even using all channel signals. These results demonstrate that the HVGE method is a promising approach for alcoholism identification by EEG signals. Keywords Multi-channel EEG Alcoholism Graph entropy Slow waves Classification.
机译:本文提出了一种新颖的水平能见度图熵(HVGE)方法,用于评估酒精对象和控制饮酒者的脑电信号,并与样本熵(SaE)方法进行比较。首先,分别从1200个生物医学信号记录中提取HVGE和SaE。采用统计分析方法选择最佳渠道,以识别酗酒者的异常情况。选择五个组通道,并分别转发到K最近邻居(K-NN)和支持向量机(SVM)进行分类。实验结果表明,与酗酒者的左半球相关的HVGE,(C )1,(C )3和FC 5电极明显异常。带有10倍交叉验证的分类准确性为87.5 (%),具有大约三个HVGE特征。通过仅使用最佳的13维HVGE功能,精度为95.8 (%)。相反,相关的SaE功能无法识别出酒精中毒的左半球疾病,即使使用所有通道信号,基于SaE的最大分类比率也仅为95.2 (%)。这些结果表明,HVGE方法是一种通过脑电信号识别酒精中毒的有前途的方法。关键词多通道脑电图酒精中毒图熵慢波分类。

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