Lauteslager Timo, Kampakis Stylianos, Williams Adrian J, Maslik Michal, Siddiqui Fares
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:5150-5153. doi: 10.1109/EMBC44109.2020.9175419.
Although polysomnography (PSG) remains the gold standard for studying sleep in the lab, the development of wearable and 'nearable' non-EEG based sleep monitors has the potential to make long-term sleep monitoring in a home environment possible. However, validation of these novel technologies against PSG is required. The current study aims to evaluate the sleep staging performance of the radar-based Circadia Contactless Breathing Monitor (model C100) and proprietary Sleep Analysis Algorithm, both in a home and sleep lab environment, on cohorts of healthy sleepers. The C100 device was initially used to record 17 nights of sleep data from 9 participants alongside PSG, with a subsequent 24 nights of PSG data for validation purposes. Respiration and body movement features were extracted from sensor data, and a machine learning algorithm was developed to perform sleep stage prediction. The algorithm was trained using PSG data obtained in the initial dataset (n=17), and validated using leave- one-subject-out cross-validation. An epoch-by-epoch recall (true positive rate) of 75.0 %, 59.9 %, 74.8 % and 57.1 %, was found for 'Deep', 'Light', 'REM' and 'Wake' respectively. Highly similar results were obtained in the independent validation dataset (n=24), indicating robustness of results and generalizability of the sleep staging model, at least in the healthy population. The device was found to outperform both a consumer and medical grade wrist-worn monitoring device (Fitbit Alta HR and Philips Respironics Actiwatch) on sleep metric estimation accuracy. These results indicate that the developed non-contact monitor forms a viable alternative to existing clinically used wrist-worn methods, and that longitudinal monitoring of sleep stages in a home environment becomes feasible.
尽管多导睡眠图(PSG)仍是在实验室研究睡眠的金标准,但基于可穿戴和“近距”非脑电图的睡眠监测器的发展,有可能使在家中环境进行长期睡眠监测成为可能。然而,这些新技术需要对照PSG进行验证。本研究旨在评估基于雷达的Circadia非接触式呼吸监测器(型号C100)及其专有的睡眠分析算法在家庭和睡眠实验室环境中,对健康睡眠者群体的睡眠分期性能。C100设备最初用于与PSG一起记录9名参与者17个晚上的睡眠数据,随后又记录了24个晚上的PSG数据用于验证。从传感器数据中提取呼吸和身体运动特征,并开发了一种机器学习算法来进行睡眠阶段预测。该算法使用初始数据集中获得的PSG数据(n = 17)进行训练,并使用留一法交叉验证进行验证。对于“深度”、“浅度”、“快速眼动”和“清醒”阶段,逐段召回率(真阳性率)分别为75.0%、59.9%、74.8%和57.1%。在独立验证数据集(n = 24)中获得了高度相似的结果,表明结果的稳健性和睡眠分期模型的可推广性,至少在健康人群中如此。研究发现,在睡眠指标估计准确性方面,该设备优于消费级和医疗级腕戴式监测设备(Fitbit Alta HR和飞利浦伟康Actiwatch)。这些结果表明,所开发的非接触式监测器是现有临床使用的腕戴式方法的可行替代方案,并且在家中环境对睡眠阶段进行纵向监测变得可行。