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健康年轻成年人脑电图连接的改变提供了睡眠深度的指标。

Alterations in EEG connectivity in healthy young adults provide an indicator of sleep depth.

机构信息

Biomedical Research Networking Center in Bioengineering, Biomaterials and Nanomedicine (CIBER-BBN), Madrid, Spain.

Department of Automatic Control (ESAII), Biomedical Engineering Research Center (CREB), Universitat Politècnica de Catalunya (UPC), Barcelona, Spain.

出版信息

Sleep. 2019 Jun 11;42(6). doi: 10.1093/sleep/zsz081.

Abstract

Current sleep analyses have used electroencephalography (EEG) to establish sleep intensity through linear and nonlinear measures. Slow wave activity (SWA) and entropy are the most commonly used markers of sleep depth. The purpose of this study is to evaluate changes in brain EEG connectivity during sleep in healthy subjects and compare them with SWA and entropy. Four different connectivity metrics: coherence (MSC), synchronization likelihood (SL), cross mutual information function (CMIF), and phase locking value (PLV), were computed focusing on their correlation with sleep depth. These measures provide different information and perspectives about functional connectivity. All connectivity measures revealed to have functional changes between the different sleep stages. The averaged CMIF seemed to be a more robust connectivity metric to measure sleep depth (correlations of 0.78 and 0.84 with SWA and entropy, respectively), translating greater linear and nonlinear interdependences between brain regions especially during slow wave sleep. Potential changes of brain connectivity were also assessed throughout the night. Connectivity measures indicated a reduction of functional connectivity in N2 as sleep progresses. The validation of connectivity indexes is necessary because they can reveal the interaction between different brain regions in physiological and pathological conditions and help understand the different functions of deep sleep in humans.

摘要

目前的睡眠分析使用脑电图 (EEG) 通过线性和非线性测量来确定睡眠强度。慢波活动 (SWA) 和熵是最常用的睡眠深度标志物。本研究旨在评估健康受试者睡眠期间大脑 EEG 连接的变化,并将其与 SWA 和熵进行比较。计算了四个不同的连接度量:相干性 (MSC)、同步可能性 (SL)、互信息函数交叉 (CMIF) 和锁相值 (PLV),重点关注它们与睡眠深度的相关性。这些措施提供了关于功能连接的不同信息和观点。所有连接措施均显示在不同的睡眠阶段之间存在功能变化。平均 CMIF 似乎是一种更稳健的连接度量,可测量睡眠深度(与 SWA 和熵的相关性分别为 0.78 和 0.84),尤其在慢波睡眠期间,测量大脑区域之间更大的线性和非线性相互依存关系。还评估了整个晚上的大脑连接变化。连接措施表明,随着睡眠的进行,N2 中的功能连接减少。连接指数的验证是必要的,因为它们可以揭示生理和病理条件下不同大脑区域之间的相互作用,并有助于理解人类深度睡眠的不同功能。

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