Frequency Analysis of EEG Microstate Sequences in Wakefulness and NREM Sleep.

IF 2.3 3区 医学 Q3 CLINICAL NEUROLOGY
Brain Topography Pub Date : 2024-03-01 Epub Date: 2023-05-30 DOI:10.1007/s10548-023-00971-y
Milena C Wiemers, Helmut Laufs, Frederic von Wegner
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Abstract

The majority of EEG microstate analyses concern wakefulness, and the existing sleep studies have focused on changes in spatial microstate properties and on microstate transitions between adjacent time points, the shortest available time scale. We present a more extensive time series analysis of unsmoothed EEG microstate sequences in wakefulness and non-REM sleep stages across many time scales. Very short time scales are assessed with Markov tests, intermediate time scales by the entropy rate and long time scales by a spectral analysis which identifies characteristic microstate frequencies. During the descent from wakefulness to sleep stage N3, we find that the increasing mean microstate duration is a gradual phenomenon explained by a continuous slowing of microstate dynamics as described by the relaxation time of the transition probability matrix. The finite entropy rate, which considers longer microstate histories, shows that microstate sequences become more predictable (less random) with decreasing vigilance level. Accordingly, the Markov property is absent in wakefulness but in sleep stage N3, 10/19 subjects have microstate sequences compatible with a second-order Markov process. A spectral microstate analysis is performed by comparing the time-lagged mutual information coefficients of microstate sequences with the autocorrelation function of the underlying EEG. We find periodic microstate behavior in all vigilance states, linked to alpha frequencies in wakefulness, theta activity in N1, sleep spindle frequencies in N2, and in the delta frequency band in N3. In summary, we show that EEG microstates are a dynamic phenomenon with oscillatory properties that slow down in sleep and are coupled to specific EEG frequencies across several sleep stages.

Abstract Image

清醒和 NREM 睡眠中脑电图微状态序列的频率分析
大多数脑电图微状态分析都与清醒状态有关,而现有的睡眠研究则侧重于空间微状态特性的变化以及相邻时间点之间的微状态转换,这是最短的可用时间尺度。我们对清醒状态和非快速眼动睡眠阶段的非平滑脑电图微状态序列进行了更广泛的时间序列分析。极短的时间尺度通过马尔可夫检验进行评估,中间的时间尺度通过熵率进行评估,而较长的时间尺度则通过频谱分析来确定微状态的特征频率。在从清醒状态进入睡眠阶段 N3 的过程中,我们发现平均微状态持续时间的增加是一种渐进现象,其原因是微状态动态的持续放缓,这可以用过渡概率矩阵的松弛时间来解释。有限熵率考虑了更长的微状态历史,表明随着警觉水平的降低,微状态序列变得更可预测(随机性降低)。因此,在清醒状态下不存在马尔可夫特性,但在睡眠阶段 N3,10/19 受试者的微状态序列符合二阶马尔可夫过程。通过比较微状态序列的时滞互信息系数和基础脑电图的自相关函数,进行了频谱微状态分析。我们发现在所有警觉状态下都存在周期性微状态行为,这些微状态与清醒状态下的α频率、N1状态下的θ活动、N2状态下的睡眠纺锤频率以及N3状态下的δ频段有关。总之,我们发现脑电图微状态是一种动态现象,具有振荡特性,在睡眠中会减慢,并与多个睡眠阶段的特定脑电图频率相关联。
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来源期刊
Brain Topography
Brain Topography 医学-临床神经学
CiteScore
4.70
自引率
7.40%
发文量
41
审稿时长
3 months
期刊介绍: Brain Topography publishes clinical and basic research on cognitive neuroscience and functional neurophysiology using the full range of imaging techniques including EEG, MEG, fMRI, TMS, diffusion imaging, spectroscopy, intracranial recordings, lesion studies, and related methods. Submissions combining multiple techniques are particularly encouraged, as well as reports of new and innovative methodologies.
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