Department of Biomedical Engineering, Johns Hopkins University, Baltimore, Maryland.
Department of Neurology, Johns Hopkins School of Medicine, Baltimore, Maryland.
J Sleep Res. 2020 Oct;29(5):e12991. doi: 10.1111/jsr.12991. Epub 2020 Feb 7.
In this study, we aim to automate the sleep stage scoring process of overnight polysomnography (PSG) data while adhering to expert-based rules. We developed a sleep stage scoring algorithm utilizing the generalized linear modelling (GLM) framework and extracted features from electroencephalogram (EEG), electromyography (EMG) and electrooculogram (EOG) signals based on predefined rules of the American Academy of Sleep Medicine (AASM) Manual for Scoring Sleep. Specifically, features were computed in 30-s epochs in the time and frequency domains of the signals and were then used to model the probability of an epoch being in each of five sleep stages: N3, N2, N1, REM or Wake. Finally, each epoch was assigned to a sleep stage based on model predictions. The algorithm was trained and tested on PSG data from 38 healthy individuals with no reported sleep disturbances. The overall scoring accuracy reached on the test set was 81.50 ± 1.14% (Cohen's kappa, ). The test set results were highly comparable to the training set, indicating robustness of the algorithm. Furthermore, our algorithm was compared to three well-known commercialized sleep-staging tools and achieved higher accuracies than all of them. Our results suggest that automatic classification is highly consistent with visual scoring. We conclude that our algorithm can reproduce the judgement of a scoring expert and is also highly interpretable. This tool can assist visual scorers to speed up their process (from hours to minutes) and provides a method for a more robust, quantitative, reproducible and cost-effective PSG evaluation, supporting assessment of sleep and sleep disorders.
在这项研究中,我们旨在通过遵循基于专家的规则来实现对整夜多导睡眠图(PSG)数据的睡眠分期评分过程的自动化。我们利用广义线性模型(GLM)框架开发了一种睡眠分期评分算法,并根据美国睡眠医学学会(AASM)睡眠分期手册的预设规则,从脑电图(EEG)、肌电图(EMG)和眼电图(EOG)信号中提取特征。具体来说,特征是在信号的时域和频域中以 30 秒的时间段计算的,然后用于构建每个时间段处于五个睡眠阶段(N3、N2、N1、REM 或 Wake)之一的概率模型。最后,根据模型预测为每个时间段分配一个睡眠阶段。该算法在来自 38 名无睡眠障碍报告的健康个体的 PSG 数据上进行了训练和测试。在测试集上达到的总体评分准确率为 81.50±1.14%(Cohen's kappa, )。测试集结果与训练集高度可比,表明算法具有稳健性。此外,我们的算法与三种知名的商业化睡眠分期工具进行了比较,并且比所有这些工具的准确性都更高。我们的结果表明,自动分类与视觉评分高度一致。我们得出结论,我们的算法可以复制评分专家的判断,并且具有高度的可解释性。该工具可以帮助视觉评分者加快评分过程(从数小时缩短至数分钟),并为更稳健、更定量、更具可重复性和更具成本效益的 PSG 评估提供一种方法,从而支持睡眠和睡眠障碍的评估。