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脑电图微状态随机游走的分析性和经验性波动函数——短程相关性与长程相关性

Analytical and empirical fluctuation functions of the EEG microstate random walk - Short-range vs. long-range correlations.

作者信息

von Wegner F, Tagliazucchi E, Brodbeck V, Laufs H

机构信息

Epilepsy Center Rhein-Main, Goethe University Frankfurt am Main, Schleusenweg 2-16, Frankfurt am Main 60528, Germany; Department of Neurology and Brain Imaging Center, Goethe University Frankfurt am Main, Schleusenweg 2-16, Frankfurt am Main 60528, Germany.

Department of Neurology and Brain Imaging Center, Goethe University Frankfurt am Main, Schleusenweg 2-16, Frankfurt am Main 60528, Germany; Department of Neurology, University Hospital Kiel, Schittenhelmstrasse 10, Kiel 24105, Germany.

出版信息

Neuroimage. 2016 Nov 1;141:442-451. doi: 10.1016/j.neuroimage.2016.07.050. Epub 2016 Jul 30.

Abstract

We analyze temporal autocorrelations and the scaling behaviour of EEG microstate sequences during wakeful rest. We use the recently introduced random walk approach and compute its fluctuation function analytically under the null hypothesis of a short-range correlated, first-order Markov process. The empirical fluctuation function and the Hurst parameter H as a surrogate parameter of long-range correlations are computed from 32 resting state EEG recordings and for a set of first-order Markov surrogate data sets with equilibrium distribution and transition matrices identical to the empirical data. In order to distinguish short-range correlations (H ≈ 0.5) from previously reported long-range correlations (H > 0.5) statistically, confidence intervals for H and the fluctuation functions are constructed under the null hypothesis. Comparing three different estimation methods for H, we find that only one data set consistently shows H > 0.5, compatible with long-range correlations, whereas the majority of experimental data sets cannot be consistently distinguished from Markovian scaling behaviour. Our analysis suggests that the scaling behaviour of resting state EEG microstate sequences, though markedly different from uncorrelated, zero-order Markov processes, can often not be distinguished from a short-range correlated, first-order Markov process. Our results do not prove the microstate process to be Markovian, but challenge the approach to parametrize resting state EEG by single parameter models.

摘要

我们分析了清醒静息状态下脑电图微状态序列的时间自相关和标度行为。我们使用最近引入的随机游走方法,并在短程相关一阶马尔可夫过程的零假设下解析计算其涨落函数。从32个静息状态脑电图记录以及一组具有与经验数据相同的平衡分布和转移矩阵的一阶马尔可夫替代数据集计算经验涨落函数和作为长程相关性替代参数的赫斯特参数H。为了从统计学上区分短程相关性(H≈0.5)与先前报道的长程相关性(H>0.5),在零假设下构建H和涨落函数的置信区间。比较三种不同的H估计方法,我们发现只有一个数据集始终显示H>0.5,与长程相关性相符,而大多数实验数据集无法与马尔可夫标度行为一致区分。我们的分析表明,静息状态脑电图微状态序列的标度行为虽然明显不同于不相关的零阶马尔可夫过程,但通常无法与短程相关的一阶马尔可夫过程区分开来。我们的结果并未证明微状态过程是马尔可夫的,但对通过单参数模型对静息状态脑电图进行参数化的方法提出了挑战。

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