Faculty of Electrical and Computer Engineering, Babol Noshirvani University of Technology, Babol, Mazandaran, Iran.
English Language Department, School of Paramedical Sciences, Guilan University of Medical Sciences, Rasht, Iran.
Sleep Breath. 2022 Jun;26(2):965-981. doi: 10.1007/s11325-021-02435-8. Epub 2021 Jul 29.
Because of problems with the recording and analysis of the EEG signal, automatic sleep staging using cardiorespiratory signals has been employed as an alternative. This study reports on certain critical points which hold considerable promise for the improvement of the results of the automatic sleep staging using cardiorespiratory signals.
A systematic review.
The review and analysis of the literature in this area revealed four outstanding points: (1) the feature extraction epoch length, denoting that the standard 30-s segments of cardiorespiratory signals do not carry enough information for automatic sleep staging and that a 4.5-min length segment centering on each 30-s segment is proper for staging, (2) the time delay between the EEG signal extracted from the central nervous system activity and the cardiorespiratory signals extracted from the autonomic nervous system activity should be considered in the automatic sleep staging using cardiorespiratory signals, (3) the information in the morphology of ECG signals can contribute to the improvement of sleep staging, and (4) applying convolutional neural network (CNN) and long short-term memory network (LSTM) deep structures simultaneously to a large PSG recording database can lead to more reliable automatic sleep staging results.
Considering the above-mentioned points simultaneously can improve automatic sleep staging by cardiorespiratory signals. It is hoped that by considering the points, staging sleep automatically using cardiorespiratory signals, which does not have problems with the recording and analysis of EEG signals, yields results acceptably close to the results of automatic sleep staging by EEG signals.
由于脑电图信号的记录和分析存在问题,因此已经采用了基于心肺信号的自动睡眠分期作为替代方法。本研究报告了一些关键点,这些关键点有望提高基于心肺信号的自动睡眠分期的结果。
系统回顾。
对该领域的文献进行了回顾和分析,发现了四个突出点:(1)特征提取时段长度,这意味着心肺信号的标准 30 秒段没有足够的信息用于自动睡眠分期,而以每个 30 秒段为中心的 4.5 分钟长度段更适合分期;(2)在使用心肺信号进行自动睡眠分期时,应考虑从中枢神经系统活动中提取的脑电图信号与从自主神经系统活动中提取的心肺信号之间的时间延迟;(3)心电图信号形态中的信息可以有助于改善睡眠分期;(4)将卷积神经网络(CNN)和长短期记忆网络(LSTM)的深结构同时应用于大型 PSG 记录数据库可以导致更可靠的自动睡眠分期结果。
同时考虑上述要点可以通过心肺信号提高自动睡眠分期的效果。希望通过考虑这些要点,可以使用不具有脑电图信号记录和分析问题的心肺信号自动分期,其结果可以接近脑电图信号自动睡眠分期的结果。