Danish Center for Sleep Medicine, Department of Clinical Neurophysiology, Rigshospitalet, Glostrup, Denmark.
Biomedical Engineering, Department of Electrical Engineering, Technical University of Denmark, Kongens Lyngby, Denmark.
J Sleep Res. 2019 Apr;28(2):e12780. doi: 10.1111/jsr.12780. Epub 2018 Oct 22.
The reference standard for sleep classification uses manual scoring of polysomnography with fixed 30-s epochs. This limits the analysis of sleep pattern, structure and, consequently, detailed association with other physiologic processes. We aimed to improve the details of sleep evaluation by developing a data-driven method that objectively classifies sleep in smaller time intervals. Two adaptive segmentation methods using 3, 10 and 30-s windows were compared. One electroencephalographic (EEG) channel was used to segment into quasi-stationary segments and each segment was classified using a multinomial logistic regression model. Classification features described the power in the clinical frequency bands of three EEG channels and an electrooculographic (EOG) anticorrelation measure for each segment. The models were optimised using 19 healthy control subjects and validated on 18 healthy control subjects. The models obtained overall accuracies of 0.71 ± 0.09, 0.74 ± 0.09 and 0.76 ± 0.08 on the validation data. However, the models allowed a more dynamic sleep, which challenged a true validation against manually scored hypnograms with fixed epochs. The automated classifications indicated an increased number of stage transitions and shorter sleep bouts using models with smaller window size compared with the hypnograms. An increased number of transitions from rapid eye movement (REM) sleep was likewise expressed in the model using 30-s windows, indicating that REM sleep has more fluctuations than captured by today's standard. The models developed are generally applicable and may contribute to concise sleep structure evaluation, research in sleep control and improved understanding of sleep and sleep disorders. The models could also contribute to objective measuring of sleep stability.
睡眠分类的参考标准是使用手动评分多导睡眠图和固定的 30 秒时程。这限制了睡眠模式、结构的分析,因此也限制了与其他生理过程的详细关联。我们旨在通过开发一种客观的方法来改善睡眠评估的细节,该方法可以在更小的时间间隔内对睡眠进行分类。比较了两种使用 3 秒、10 秒和 30 秒窗口的自适应分段方法。使用一个脑电图 (EEG) 通道将其分成准静态段,然后使用多项逻辑回归模型对每个段进行分类。分类特征描述了三个 EEG 通道的临床频带中的功率以及每个段的眼动电图 (EOG) 反相关测量值。使用 19 名健康对照者优化模型,并在 18 名健康对照者上验证模型。该模型在验证数据上获得了 0.71±0.09、0.74±0.09 和 0.76±0.08 的总体准确率。然而,这些模型允许更动态的睡眠,这对真正的验证提出了挑战,因为需要与使用固定时程的手动评分催眠图进行真正的验证。与催眠图相比,使用较小窗口大小的模型进行自动分类指示出更多的睡眠阶段转换和更短的睡眠片段。使用 30 秒窗口的模型也表示 REM 睡眠的过渡次数增加,这表明 REM 睡眠比当前标准所捕捉到的更具波动性。开发的模型具有普遍适用性,可能有助于简明的睡眠结构评估、睡眠控制研究以及对睡眠和睡眠障碍的深入理解。这些模型还可以帮助进行客观的睡眠稳定性测量。