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健康和病理人类睡眠周期中意识和觉醒的大规模功能连接相关性。

The large-scale functional connectivity correlates of consciousness and arousal during the healthy and pathological human sleep cycle.

机构信息

Department of Sleep and Cognition, Netherlands Institute for Neuroscience, Meibergdreef 47, 1105BA Amsterdam, The Netherlands.

Department of Sleep and Cognition, Netherlands Institute for Neuroscience, Meibergdreef 47, 1105BA Amsterdam, The Netherlands.

出版信息

Neuroimage. 2017 Oct 15;160:55-72. doi: 10.1016/j.neuroimage.2017.06.026. Epub 2017 Jun 12.

Abstract

Advances in neuroimaging have greatly improved our understanding of human sleep from a systems neuroscience perspective. However, cognition and awareness are reduced during sleep, hindering the applicability of standard task-based paradigms. Methods recently developed to study spontaneous brain activity fluctuations have proven useful to overcome this limitation. In this review, we focus on the concept of functional connectivity (FC, i.e. statistical covariance between brain activity signals) and its application to functional magnetic resonance imaging (fMRI) data acquired during sleep. We discuss how FC analyses of endogenous brain activity during sleep have contributed towards revealing the large-scale neural networks associated with arousal and conscious awareness. We argue that the neuroimaging of deep sleep can be used to evaluate the predictions of theories of consciousness; at the same time, we highlight some apparent limitations of deep sleep as an experimental model of unconsciousness. In resting state fMRI experiments, the onset of sleep can be regarded as the object of interest but also as an undesirable confound. We discuss a series of articles contributing towards the disambiguation of wakefulness from sleep on the basis of fMRI-derived dynamic FC, and then outline a plan for the development of more general and data-driven sleep classifiers. To complement our review of studies investigating the brain systems of arousal and consciousness during healthy sleep, we then turn to pathological and abnormal sleep patterns. We review the current literature on sleep deprivation studies and sleep disorders, adopting the critical stance that lack of independent vigilance monitoring during fMRI experiments is liable for false positives related to atypical sleep propensity in clinical and sleep-deprived populations. Finally, we discuss multimodal neuroimaging as a promising future direction to achieve a better understanding of the large-scale FC of the brain during sleep and its relationship to mechanisms at the cellular level.

摘要

神经影像学的进展极大地提高了我们从系统神经科学的角度对人类睡眠的理解。然而,睡眠期间认知和意识会降低,这阻碍了标准任务基范式的适用性。最近开发的用于研究自发脑活动波动的方法已被证明有助于克服这一限制。在这篇综述中,我们重点讨论了功能连接(FC,即大脑活动信号之间的统计协方差)的概念及其在睡眠期间获取的功能磁共振成像(fMRI)数据中的应用。我们讨论了睡眠期间内源性脑活动的 FC 分析如何有助于揭示与觉醒和意识相关的大规模神经网络。我们认为,可以使用深睡眠的神经影像学来评估意识理论的预测;同时,我们强调了深睡眠作为无意识实验模型的一些明显局限性。在静息状态 fMRI 实验中,睡眠的开始可以被视为感兴趣的对象,但也可以作为不希望出现的混杂因素。我们讨论了一系列基于 fMRI 衍生的动态 FC 来区分清醒和睡眠的文章,然后概述了开发更通用和数据驱动的睡眠分类器的计划。为了补充我们对健康睡眠期间唤醒和意识的大脑系统进行的研究综述,我们转而研究病理性和异常的睡眠模式。我们回顾了关于睡眠剥夺研究和睡眠障碍的当前文献,采用了批判性立场,即在 fMRI 实验中缺乏独立的警觉性监测容易导致与临床和睡眠剥夺人群中异常睡眠倾向相关的假阳性。最后,我们讨论了多模态神经影像学作为一种有前途的未来方向,可以更好地理解睡眠期间大脑的大规模 FC 及其与细胞水平机制的关系。

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