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一种用于量化睡眠时长以及脑电图和脑代谢参数的睡眠依赖性动态变化的自动睡眠状态分类算法。

An automated sleep-state classification algorithm for quantifying sleep timing and sleep-dependent dynamics of electroencephalographic and cerebral metabolic parameters.

作者信息

Rempe Michael J, Clegern William C, Wisor Jonathan P

机构信息

Mathematics and Computer Science, Whitworth University, Spokane, WA, USA ; College of Medical Sciences and Sleep and Performance Research Center, Washington State University, Spokane, WA, USA.

College of Medical Sciences and Sleep and Performance Research Center, Washington State University, Spokane, WA, USA.

出版信息

Nat Sci Sleep. 2015 Sep 1;7:85-99. doi: 10.2147/NSS.S84548. eCollection 2015.

Abstract

INTRODUCTION

Rodent sleep research uses electroencephalography (EEG) and electromyography (EMG) to determine the sleep state of an animal at any given time. EEG and EMG signals, typically sampled at >100 Hz, are segmented arbitrarily into epochs of equal duration (usually 2-10 seconds), and each epoch is scored as wake, slow-wave sleep (SWS), or rapid-eye-movement sleep (REMS), on the basis of visual inspection. Automated state scoring can minimize the burden associated with state and thereby facilitate the use of shorter epoch durations.

METHODS

We developed a semiautomated state-scoring procedure that uses a combination of principal component analysis and naïve Bayes classification, with the EEG and EMG as inputs. We validated this algorithm against human-scored sleep-state scoring of data from C57BL/6J and BALB/CJ mice. We then applied a general homeostatic model to characterize the state-dependent dynamics of sleep slow-wave activity and cerebral glycolytic flux, measured as lactate concentration.

RESULTS

More than 89% of epochs scored as wake or SWS by the human were scored as the same state by the machine, whether scoring in 2-second or 10-second epochs. The majority of epochs scored as REMS by the human were also scored as REMS by the machine. However, of epochs scored as REMS by the human, more than 10% were scored as SWS by the machine and 18 (10-second epochs) to 28% (2-second epochs) were scored as wake. These biases were not strain-specific, as strain differences in sleep-state timing relative to the light/dark cycle, EEG power spectral profiles, and the homeostatic dynamics of both slow waves and lactate were detected equally effectively with the automated method or the manual scoring method. Error associated with mathematical modeling of temporal dynamics of both EEG slow-wave activity and cerebral lactate either did not differ significantly when state scoring was done with automated versus visual scoring, or was reduced with automated state scoring relative to manual classification.

CONCLUSIONS

Machine scoring is as effective as human scoring in detecting experimental effects in rodent sleep studies. Automated scoring is an efficient alternative to visual inspection in studies of strain differences in sleep and the temporal dynamics of sleep-related physiological parameters.

摘要

引言

啮齿动物睡眠研究使用脑电图(EEG)和肌电图(EMG)来确定动物在任何给定时间的睡眠状态。EEG和EMG信号通常以大于100Hz的频率采样,被任意分割为等时长的时段(通常为2 - 10秒),并且每个时段根据目视检查被分类为清醒、慢波睡眠(SWS)或快速眼动睡眠(REMS)。自动状态分类可以最小化与状态相关的负担,从而便于使用更短的时段时长。

方法

我们开发了一种半自动化状态分类程序,该程序使用主成分分析和朴素贝叶斯分类相结合的方法,将EEG和EMG作为输入。我们针对来自C57BL/6J和BALB/CJ小鼠的数据的人工睡眠状态评分对该算法进行了验证。然后我们应用一个通用的稳态模型来表征睡眠慢波活动和脑糖酵解通量(以乳酸浓度衡量)的状态依赖性动态变化。

结果

无论以2秒还是10秒的时段进行评分,人工分类为清醒或SWS的时段中,超过89%被机器分类为相同状态。人工分类为REMS的大多数时段也被机器分类为REMS。然而,在人工分类为REMS的时段中,超过10%被机器分类为SWS,并且18%(10秒时段)至28%(2秒时段)被分类为清醒。这些偏差并非特定于品系,因为在睡眠状态时间相对于明暗周期、EEG功率谱分布以及慢波和乳酸的稳态动态变化方面的品系差异,使用自动方法或人工评分方法都能同样有效地检测到。当使用自动评分与目视评分进行状态分类时,与EEG慢波活动和脑乳酸的时间动态数学建模相关的误差要么没有显著差异,要么相对于人工分类,自动状态评分使误差减小。

结论

在啮齿动物睡眠研究中,机器评分在检测实验效应方面与人工评分一样有效。在研究睡眠品系差异和睡眠相关生理参数的时间动态时,自动评分是目视检查的一种有效替代方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0b48/4562753/bee13e45ed6b/nss-7-085Fig1.jpg

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