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通过加速度计数据预测小鼠慢波睡眠中的觉醒情况。

Predictability of arousal in mouse slow wave sleep by accelerometer data.

作者信息

Lima Gustavo Zampier Dos Santos, Lopes Sergio Roberto, Prado Thiago Lima, Lobao-Soares Bruno, do Nascimento George C, Fontenele-Araujo John, Corso Gilberto

机构信息

Universidade Federal do Rio Grande do Norte, Escola de Ciências e Tecnologia, Natal, RN, Brazil.

Universidade Federal do Rio Grande do Norte, Departamento de Biofísica e Farmacologia, Natal, RN, 59078-970, Brazil.

出版信息

PLoS One. 2017 May 18;12(5):e0176761. doi: 10.1371/journal.pone.0176761. eCollection 2017.

Abstract

Arousals can be roughly characterized by punctual intrusions of wakefulness into sleep. In a standard perspective, using human electroencephalography (EEG) data, arousals are associated to slow-wave rhythms and K-complex brain activity. The physiological mechanisms that give rise to arousals during sleep are not yet fully understood. Moreover, subtle body movement patterns, which may characterize arousals both in human and in animals, are usually not detectable by eye perception and are not in general present in sleep studies. In this paper, we focus attention on accelerometer records (AR) to characterize and predict arousal during slow wave sleep (SWS) stage of mice. Furthermore, we recorded the local field potentials (LFP) from the CA1 region in the hippocampus and paired with accelerometer data. The hippocampus signal was also used here to identify the SWS stage. We analyzed the AR dynamics of consecutive arousals using recurrence technique and the determinism (DET) quantifier. Recurrence is a fundamental property of dynamical systems, which can be exploited to characterize time series properties. The DET index evaluates how similar are the evolution of close trajectories: in this sense, it computes how accurate are predictions based on past trajectories. For all analyzed mice in this work, we observed, for the first time, the occurrence of a universal dynamic pattern a few seconds that precedes the arousals during SWS sleep stage based only on the AR signal. The predictability success of an arousal using DET from AR is nearly 90%, while similar analysis using LFP of hippocampus brain region reveal 88% of success. Noteworthy, our findings suggest an unique dynamical behavior pattern preceding an arousal of AR data during sleep. Thus, the employment of this technique applied to AR data may provide useful information about the dynamics of neuronal activities that control sleep-waking switch during SWS sleep period. We argue that the predictability of arousals observed through DET(AR) can be functionally explained by a respiratory-driven modification of neural states. Finally, we believe that the method associating AR data with other physiologic events such as neural rhythms can become an accurate, convenient and non-invasive way of studying the physiology and physiopathology of movement and respiratory processes during sleep.

摘要

觉醒可以大致被描述为清醒状态对睡眠的准时侵入。从标准角度来看,利用人类脑电图(EEG)数据,觉醒与慢波节律和K复合波脑活动相关。睡眠期间引发觉醒的生理机制尚未完全被理解。此外,可能表征人类和动物觉醒的微妙身体运动模式,通常无法通过肉眼察觉,并且在一般的睡眠研究中也不存在。在本文中,我们将注意力集中在加速度计记录(AR)上,以表征和预测小鼠慢波睡眠(SWS)阶段的觉醒。此外,我们记录了海马体CA1区域的局部场电位(LFP),并将其与加速度计数据配对。海马体信号在此也被用于识别SWS阶段。我们使用递归技术和确定性(DET)量化器分析了连续觉醒的AR动态。递归是动态系统的一个基本属性,可用于表征时间序列属性。DET指数评估接近轨迹的演化有多相似:从这个意义上说,它计算基于过去轨迹的预测有多准确。对于这项工作中所有分析的小鼠,我们首次仅基于AR信号观察到在SWS睡眠阶段觉醒前几秒钟出现一种普遍的动态模式。使用AR的DET对觉醒的预测成功率接近90%,而使用海马体脑区LFP的类似分析显示成功率为88%。值得注意的是,我们的发现表明在睡眠期间AR数据觉醒之前存在一种独特的动态行为模式。因此,将这种技术应用于AR数据可能会提供有关在SWS睡眠期间控制睡眠 - 觉醒转换的神经元活动动态的有用信息。我们认为,通过DET(AR)观察到的觉醒可预测性可以通过呼吸驱动的神经状态改变在功能上得到解释。最后,我们相信将AR数据与其他生理事件(如神经节律)相关联的方法可以成为一种准确、方便且非侵入性的方式来研究睡眠期间运动和呼吸过程的生理学和病理生理学。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5c1e/5436652/74ea5e7b38df/pone.0176761.g001.jpg

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