Faerman Afik, Kaplan Katherine A, Zeitzer Jamie M
Department of Psychology, Palo Alto University, Palo Alto, CA, USA; Department of Psychiatry and Behavioral Sciences, Stanford University, Stanford, CA, USA.
Department of Psychiatry and Behavioral Sciences, Stanford University, Stanford, CA, USA.
Sleep Med. 2020 Sep;73:154-161. doi: 10.1016/j.sleep.2020.04.012. Epub 2020 Apr 23.
There has been a proliferation in the use of commercially-available accelerometry- and heart rate-based wearable devices to monitor sleep. While the underlying technology is reasonable at detecting sleep quantity, the ability of these devices to predict subjective sleep quality is currently unknown. We tested whether the fundamental signals from such devices are useful in determining subjective sleep quality.
Older, community-dwelling men (76.5 ± 5.77 years) enrolled in the Osteoporotic Fractures in Men Study (MrOS) participated in an overnight sleep study during which sleep was monitored with actigraphy (wrist-worn accelerometry) and polysomnography (PSG), including electrocardiography (N = 1141). Subjective sleep quality was determined the next morning using 5-point Likert-type scales of sleep depth and restfulness. Lasso and random forest regression models analyzed the relationship between actigraph-determined sleep variables, the shape of the activity patterns during sleep (functional principal component analysis), average heart rate, heart rate variability (HRV), demographics, and self-reported depression, anxiety, habitual sleep, and daytime sleepiness measures.
Actigraphy data, in combination with heart rate, HRV, demographic, and psychological variables, do not predict well subjective sleep quality (R = 0.025 to 0.162).
Findings are consistent with previous studies that objective sleep measures are not well correlated with subjective sleep quality. Developing validated biomarkers of subjective sleep quality could improve both existing and novel treatment modalities and advance sleep medicine towards precision healthcare standards.
市面上基于加速度计和心率的可穿戴设备在睡眠监测中的使用呈激增态势。虽然其基础技术在检测睡眠时长方面还算合理,但这些设备预测主观睡眠质量的能力目前尚不清楚。我们测试了此类设备的基本信号在确定主观睡眠质量方面是否有用。
参加男性骨质疏松性骨折研究(MrOS)的社区老年男性(76.5±5.77岁)参与了一项夜间睡眠研究,在此期间通过活动记录仪(腕部佩戴的加速度计)和多导睡眠图(PSG)监测睡眠,包括心电图(N = 1141)。次日早晨使用5点李克特式量表来确定睡眠深度和安宁程度,以此评估主观睡眠质量。套索回归和随机森林回归模型分析了活动记录仪确定的睡眠变量、睡眠期间活动模式的形状(功能主成分分析)、平均心率、心率变异性(HRV)、人口统计学特征以及自我报告的抑郁、焦虑、习惯性睡眠和日间嗜睡指标之间的关系。
活动记录仪数据,结合心率、HRV、人口统计学和心理变量,对主观睡眠质量的预测效果不佳(R = 0.025至0.162)。
研究结果与先前的研究一致,即客观睡眠指标与主观睡眠质量的相关性不佳。开发经过验证的主观睡眠质量生物标志物可以改善现有和新型治疗方式,并推动睡眠医学朝着精准医疗标准发展。