A New Approach to Sample Entropy of Multi-channel Signals: Application to EEG Signals

M. H. Jomaa, P. Bogaert, N. Jrad, M. A. Colominas, A. Humeau-Heurtier
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引用次数: 1

Abstract

In this paper, we propose a new algorithm to calculate sample entropy of multivariate data. Over the existing method, the one proposed here has the advantage of maintaining good results as the number of channels increases. The new and already-existing algorithms were applied on multivariate white Gaussian noise signals, pink noise signals, and mixtures of both. For high number of channels, the existing method failed to show that white noise is always the most irregular whereas the proposed method always had the entropy of white noise the highest. Application of both algorithms on MIX process signals also confirmed the ability of the proposed method to handle larger number of channels without risking erroneous results. We also applied the proposed algorithm on EEG data from epileptic patients before and after treatments. The results showed an increase in entropy values after treatment in the regions where the focus was localized. This goes in the same way as the medical point of view that indicated a better health state for these patients.
多通道信号样本熵的一种新方法——在脑电信号中的应用
本文提出了一种计算多元数据样本熵的新算法。与现有方法相比,本文提出的方法具有随着信道数量的增加而保持良好效果的优点。将新的和已有的算法应用于多元高斯白噪声信号、粉红噪声信号以及两者的混合。当信道数较大时,现有方法无法显示白噪声总是最不规则的,而新方法的白噪声熵总是最大的。两种算法在MIX处理信号上的应用也证实了所提出的方法能够处理更多的通道而不会有错误结果的风险。我们还将该算法应用于癫痫患者治疗前后的脑电图数据。结果表明,病灶所在区域经过处理后熵值有所增加。这与医学上认为这些病人的健康状况会更好的观点是一样的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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