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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Symbolic dynamics of electroencephalography is associated with the sleep depth and overall sleep quality in healthy adults
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Symbolic dynamics of electroencephalography is associated with the sleep depth and overall sleep quality in healthy adults

机译:脑电图的象征性动态与健康成年人的睡眠深度和整体睡眠质量有关

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Sleep electroencephalographic (EEG) provides the opportunity to study sleep scientifically. Slow wave activity (SWA), presenting EEG spectral power in the low-frequency range, has proven to be a useful parameter in sleep medicine. Drawing inspiration from the adaptive and noise-assist features of symbolic dynamics, we introduced a symbolic analogue of SWA as EEG signal was generally considered as non-linear and non-stationary. Moreover, we investigated whether the proposed metrics can capture patterns that characterize and differentiate different sleep stages, and whether EEG dynamical features during the wake to sleep transition after light-off share a correlation with the overall sleep quality during the whole night. Single-channel EEGs derived from the polysomnography (PSG) of 111 healthy adults in the Sleep Heart Health Study were analyzed retrospectively. Every 30second epoch of EEG data was transformed into a symbolic sequence using equiprobable symbolization and then the percentage of constant word (Pew) was calculated. The results revealed that the proposed metric, P-CW, exhibits a correlation with wake/sleep stages over the night. More importantly, average P-CW in short sections (15-60 min) at the beginning of the night shows a correlation with various indices of sleep quality for the entire night, suggesting P-CW as a potential indicator for the requirement for an early sleep intervention. In conclusion, the results validate the use of symbolic dynamics in automatic sleep scoring and evaluation, and might further expand the application of SWA measurement to the early intervention of sleep disorders. (C) 2018 Published by Elsevier B.
机译:睡眠脑电图(EEG)提供了机会,研究睡眠科学。慢波活动(SWA),在低频率范围内呈现EEG频谱功率,已被证明是在睡眠医学的有用参数。从符号动力学的自适应和噪声辅助特征图画启发,我们介绍了SWA的一个象征性的类似物如EEG信号被普遍认为是非线性的和非固定的。此外,我们研究提出的指标是否可以捕捉模式,唤醒睡眠过渡期特征分析和区分不同的睡眠阶段,以及是否EEG动力学特性后熄灯份额与整体睡眠质量,在整个晚上的相关性。从111名健康成年人的睡眠心脏健康研究的多导睡眠图(PSG)衍生单通道脑电图进行回顾性分析。 EEG数据的每个30秒划时代使用等概率的符号变换成一个符号序列然后计算常数字的(PEW)的百分比。结果表明,所提出的指标,P-CW,表现出与唤醒/休眠阶段在晚上的相关性。更重要的是,平均P-CW在夜间示出了具有睡眠质量对整个晚上的不同指数的相关性的开始短节(15-60分钟),这表明P-CW作为用于早期的要求的电位指示器睡眠干预。总之,结果验证自动睡眠评分和评估使用的符号动力学,并且可能进一步扩大SWA测量的应用,睡眠障碍的早期干预。 (C)2018出版由Elsevier B.

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