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Higher-Order Spectrum in Understanding Nonlinearity in EEG Rhythms

机译:了解脑电节律非线性中的高阶谱

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摘要

The fundamental nature of the brain's electrical activities recorded as electroencephalogram (EEG) remains unknown. Linear stochastic models and spectral estimates are the most common methods for the analysis of EEG because of their robustness, simplicity of interpretation, and apparent association with rhythmic behavioral patterns in nature. In this paper, we extend the use of higher-order spectrum in order to indicate the hidden characteristics of EEG signals that simply do not arise from random processes. The higher-order spectrum is an extension Fourier spectrum that uses higher moments for spectral estimates. This essentially nullifies all Gaussian random effects, therefore, can reveal non-Gaussian and nonlinear characteristics in the complex patterns of EEG time series. The paper demonstrates the distinguishing features of bispectral analysis for chaotic systems, filtered noises, and normal background EEG activity. The bispectrum analysis detects nonlinear interactions; however, it does not quantify the coupling strength. The squared bicoherence in the nonredundant region has been estimated to demonstrate nonlinear coupling. The bicoherence values are minimal for white Gaussian noises (WGNs) and filtered noises. Higher bicoherence values in chaotic time series and normal background EEG activities are indicative of nonlinear coupling in these systems. The paper shows utility of bispectral methods as an analytical tool in understanding neural process underlying human EEG patterns.
机译:记录为脑电图(EEG)的大脑电活动的基本性质仍然未知。线性随机模型和频谱估计是脑电图分析的最常用方法,因为它们的鲁棒性,解释的简单性以及与自然的节奏行为模式的明显联系。在本文中,我们扩展了高阶频谱的使用范围,以表明脑电信号的隐藏特征,这些特征根本不是随机过程产生的。高阶频谱是傅立叶频谱的扩展,它使用更高的矩进行频谱估计。这实质上使所有高斯随机效应无效,因此可以揭示EEG时间序列的复杂模式中的非高斯和非线性特征。本文演示了双谱分析的混沌系统,滤波后的噪声和正常的背景脑电活动的区别特征。双谱分析可检测非线性相互作用。但是,它不能量化耦合强度。已经估计了非冗余区域中的平方双相干性以证明非线性耦合。对于高斯白噪声(WGN)和滤波后的噪声,双相干值最小。混沌时间序列中较高的双相干值和正常的背景脑电活动表明这些系统中存在非线性耦合。本文展示了双谱方法作为了解人类脑电图模式背后的神经过程的一种分析工具。

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