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Transient Topographical Dynamics of the Electroencephalogram Predict Brain Connectivity and Behavioural Responsiveness During Drowsiness

机译:脑电图的瞬态地形动力学预测睡意期间的大脑连通性和行为反应能力。

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摘要

As we fall sleep, our brain traverses a series of gradual changes at physiological, behavioural and cognitive levels, which are not yet fully understood. The loss of responsiveness is a critical event in the transition from wakefulness to sleep. Here we seek to understand the electrophysiological signatures that reflect the loss of capacity to respond to external stimuli during drowsiness using two complementary methods: spectral connectivity and EEG microstates. Furthermore, we integrate these two methods for the first time by investigating the connectivity patterns captured during individual microstate lifetimes. While participants performed an auditory semantic classification task, we allowed them to become drowsy and unresponsive. As they stopped responding to the stimuli, we report the breakdown of alpha networks and the emergence of theta connectivity. Further, we show that the temporal dynamics of all canonical EEG microstates slow down during unresponsiveness. We identify a specific microstate (D) whose occurrence and duration are prominently increased during this period. Employing machine learning, we show that the temporal properties of microstate D, particularly its prolonged duration, predicts the response likelihood to individual stimuli. Finally, we find a novel relationship between microstates and brain networks as we show that microstate D uniquely indexes significantly stronger theta connectivity during unresponsiveness. Our findings demonstrate that the transition to unconsciousness is not linear, but rather consists of an interplay between transient brain networks reflecting different degrees of sleep depth.Electronic supplementary materialThe online version of this article (10.1007/s10548-018-0689-9) contains supplementary material, which is available to authorized users.
机译:当我们入睡时,我们的大脑会在生理,行为和认知水平上遍历一系列逐渐变化的过程,但尚未完全了解。反应力的丧失是从清醒到睡眠的过渡中的关键事件。在这里,我们试图了解电生理特征,这些特征反映了在睡意期间使用两种互补方法对外部刺激做出反应的能力丧失:频谱连通性和EEG微状态。此外,我们通过调查在单个微状态寿命期间捕获的连接模式,首次将这两种方法集成在一起。当参与者执行听觉语义分类任务时,我们允许他们变得困倦且无反应。当他们停止对刺激做出反应时,我们报告了alpha网络的崩溃以及theta连接性的出现。此外,我们表明,在无反应期间,所有规范脑电微状态的时间动态变慢。我们确定了一个特定的微状态(D),其发生时间和持续时间在此期间显着增加。利用机器学习,我们表明微状态D的时间特性,特别是其持续时间的延长,预示了对个体刺激的反应可能性。最后,我们发现微状态与大脑网络之间存在一种新颖的关系,因为我们表明微状态D在无反应期间唯一索引了明显更强的theta连接性。我们的发现表明,向无意识的过渡不是线性的,而是由反映不同深度睡眠程度的瞬态大脑网络之间的相互作用组成。电子补充材料本文的在线版本(10.1007 / s10548-018-0689-9)包含补充内容资料,可供授权用户使用。

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