Fitbit Research, 199 Fremont Street, San Francisco, CA 94105, Unites States of America.
Physiol Meas. 2017 Oct 31;38(11):1968-1979. doi: 10.1088/1361-6579/aa9047.
This paper aims to report on the accuracy of estimating sleep stages using a wrist-worn device that measures movement using a 3D accelerometer and an optical pulse photoplethysmograph (PPG).
Overnight recordings were obtained from 60 adult participants wearing these devices on their left and right wrist, simultaneously with a Type III home sleep testing device (Embletta MPR) which included EEG channels for sleep staging. The 60 participants were self-reported normal sleepers (36 M: 24 F, age = 34 ± 10, BMI = 28 ± 6). The Embletta recordings were scored for sleep stages using AASM guidelines and were used to develop and validate an automated sleep stage estimation algorithm, which labeled sleep stages as one of Wake, Light (N1 or N2), Deep (N3) and REM (REM). Features were extracted from the accelerometer and PPG sensors, which reflected movement, breathing and heart rate variability.
Based on leave-one-out validation, the overall per-epoch accuracy of the automated algorithm was 69%, with a Cohen's kappa of 0.52 ± 0.14. There was no observable bias to under- or over-estimate wake, light, or deep sleep durations. REM sleep duration was slightly over-estimated by the system. The most common misclassifications were light/REM and light/wake mislabeling.
The results indicate that a reasonable degree of sleep staging accuracy can be achieved using a wrist-worn device, which may be of utility in longitudinal studies of sleep habits.
本文旨在报告一种使用腕戴设备测量 3D 加速度计和光脉冲光电容积描记法(PPG)运动的方法来准确估计睡眠阶段的准确性。
对 60 名成年参与者进行了整夜记录,他们同时在左右手腕上佩戴了这些设备,同时还使用了包括睡眠分期 EEG 通道的 III 型家庭睡眠测试设备(Embletta MPR)。60 名参与者为自我报告的正常睡眠者(36 名男性:24 名女性,年龄=34±10,BMI=28±6)。使用 AASM 指南对 Embletta 记录进行睡眠分期评分,并用于开发和验证自动睡眠分期估计算法,该算法将睡眠阶段标记为清醒、轻度(N1 或 N2)、深度(N3)和快速眼动(REM)之一。从加速度计和 PPG 传感器中提取特征,这些特征反映了运动、呼吸和心率变异性。
基于留一法验证,自动算法的整体每时段准确性为 69%,Cohen's kappa 为 0.52±0.14。该系统没有明显的低估或高估清醒、轻度或深度睡眠时间的偏差。系统略微高估了 REM 睡眠时间。最常见的错误分类是轻度/REM 和轻度/清醒的错误标记。
结果表明,腕戴设备可以实现相当程度的睡眠分期准确性,这可能对睡眠习惯的纵向研究有用。