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首页> 外文期刊>Frontiers in Human Neuroscience >Visualization of Whole-Night Sleep EEG From 2-Channel Mobile Recording Device Reveals Distinct Deep Sleep Stages with Differential Electrodermal Activity
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Visualization of Whole-Night Sleep EEG From 2-Channel Mobile Recording Device Reveals Distinct Deep Sleep Stages with Differential Electrodermal Activity

机译:2通道移动记录设备对全夜睡眠脑电图的可视化揭示了具有差异性皮肤电活动的不同深度睡眠阶段

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Brain activity during sleep is a powerful marker of overall health, but sleep lab testing is prohibitively expensive and only indicated for major sleep disorders. This report demonstrates that mobile 2-channel in-home electroencephalogram (EEG) recording devices provided sufficient information to detect and visualize sleep EEG. Displaying whole-night sleep EEG in a spectral display allowed for quick assessment of general sleep stability, cycle lengths, stage lengths, dominant frequencies and other indices of sleep quality. By visualizing spectral data down to 0.1 Hz, a differentiation emerged between slow-wave sleep with dominant frequency between 0.1–1 Hz or 1–3 Hz, but rarely both. Thus, we present here the new designations, Hi and Lo Deep sleep, according to the frequency range with dominant power. Simultaneously recorded electrodermal activity (EDA) was primarily associated with Lo Deep and very rarely with Hi Deep or any other stage. Therefore, Hi and Lo Deep sleep appear to be physiologically distinct states that may serve unique functions during sleep. We developed an algorithm to classify five stages (Awake, Light, Hi Deep, Lo Deep and rapid eye movement (REM)) using a Hidden Markov Model (HMM), model fitting with the expectation-maximization (EM) algorithm, and estimation of the most likely sleep state sequence by the Viterbi algorithm. The resulting automatically generated sleep hypnogram can help clinicians interpret the spectral display and help researchers computationally quantify sleep stages across participants. In conclusion, this study demonstrates the feasibility of in-home sleep EEG collection, a rapid and informative sleep report format, and novel deep sleep designations accounting for spectral and physiological differences.
机译:睡眠期间的大脑活动是整体健康的有力标志,但是睡眠实验室测试的费用过高,仅适用于重大睡眠障碍。该报告表明,移动式2通道室内脑电图(EEG)记录设备提供了足够的信息来检测和可视化睡眠脑电图。在频谱显示中显示整夜睡眠EEG,可以快速评估总体睡眠稳定性,周期长度,阶段长度,主要频率和其他睡眠质量指标。通过可视化低至0.1 Hz的频谱数据,可以区分慢波睡眠,其主频在0.1–1 Hz或1-3 Hz之间,但很少会同时出现。因此,我们根据具有主导功率的频率范围在此处提供新的名称Hi和Lo Deep sleep。同时记录的皮肤电活动(EDA)主要与Lo Deep有关,很少与Hi Deep或其他任何阶段有关。因此,Hi和Lo Deep睡眠似乎是生理上不同的状态,可能在睡眠期间发挥独特的功能。我们开发了一种算法,可使用隐马尔可夫模型(HMM),与期望最大化(EM)算法拟合的模型以及对维特比算法最可能的睡眠状态序列。由此产生的自动生成的睡眠催眠图可以帮助临床医生解释光谱显示,并帮助研究人员计算量化参与者的睡眠阶段。总之,这项研究证明了在家中睡眠EEG收集,快速而翔实的睡眠报告格式以及考虑到频谱和生理差异的新型深度睡眠指示的可行性。

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