Mutual Information Analysis of Brain-Heart Interactions in Epileptic Children

I. Kotiuchyi, R. Pernice, A. Popov, Volodymyr Kharytonov, L. Faes
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Abstract

In this work we apply the network physiology paradigm to retrieve information from central and autonomic nervous systems before focal epileptic seizure, represented respectively by electroencephalogram (EEG) signals and R-R intervals (RRI), and investigate on the presence and strength of brain-heart interactions by computing mutual information (MI) measures. Statistical significance of MI values was tested through surrogate time series generated with the random shuffle approach. Our results suggest that the proposed method for aligning signals representing brain and heart activity measured with different sampling rates, is capable of revealing coupling between RRI representing heart system, and aligned averaged power spectrum of brain processes, measured with EEG, resulting in significant MI. For electrodes C3, Fp2, Cz, and T4 in correspondingly α, β, γ, and total frequency bands, we obtain significantly smaller values of MI in the pre-ictal period in comparison with baseline period, as well as general decrease of significant and all estimated MI values before the focal seizure can be observed.
癫痫患儿脑-心相互作用的互信息分析
在这项工作中,我们应用网络生理学范式检索局灶性癫痫发作前中枢和自主神经系统的信息,分别以脑电图(EEG)信号和R-R间隔(RRI)表示,并通过计算互信息(MI)测量来研究脑-心相互作用的存在和强度。通过随机洗牌方法生成的替代时间序列检验MI值的统计显著性。我们的研究结果表明,将不同采样率测量的代表大脑和心脏活动的信号进行对齐的方法,能够揭示代表心脏系统的RRI与脑电图测量的对齐的脑过程平均功率谱之间的耦合,从而导致显著的MI。对于相应的α, β, γ和总频段的C3, Fp2, Cz和T4电极,我们发现,与基线期相比,癫痫发作前的心肌梗死值明显变小,而且在局灶性癫痫发作前,心肌梗死的所有估计值普遍显著下降。
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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