Knights Jonathan, Shen Jacob, Mysliwiec Vincent, DuBois Holly
At time of submission: Mindstrong Health, Menlo Park, CA, USA.
Department of Psychiatry and Behavioral Sciences, University of Texas Health Science Center at San Antonio, San Antonio, TX, USA.
Sleep Adv. 2023 Jul 5;4(1):zpad027. doi: 10.1093/sleepadvances/zpad027. eCollection 2023.
We sought to develop behavioral sleep measures from passively sensed human-smartphone interactions and retrospectively evaluate their associations with sleep disturbance, anxiety, and depressive symptoms in a large cohort of real-world patients receiving virtual behavioral medicine care.
Behavioral sleep measures from smartphone data were developed: daily longest period of smartphone inactivity (inferred sleep period [ISP]); 30-day expected period of inactivity (expected sleep period [ESP]); regularity of the daily ISP compared to the ESP (overlap percentage); and smartphone usage during inferred sleep (disruptions, wakefulness during sleep period). These measures were compared to symptoms of sleep disturbance, anxiety, and depression using linear mixed-effects modeling. More than 2300 patients receiving standard-of-care virtual mental healthcare across more than 111 000 days were retrospectively analyzed.
Mean ESP duration was 8.4 h ( = 2.3), overlap percentage 75% ( = 18%) and disrupted time windows 4.85 ( = 3). There were significant associations between overlap percentage ( < 0.001) and disruptions ( < 0.001) with sleep disturbance symptoms after accounting for demographics. Overlap percentage and disruptions were similarly associated with anxiety and depression symptoms (all < 0.001).
Smartphone behavioral measures appear useful to longitudinally monitor sleep and benchmark depressive and anxiety symptoms in patients receiving virtual behavioral medicine care. Patterns consistent with better sleep practices (i.e. greater regularity of ISP, fewer disruptions) were associated with lower levels of reported sleep disturbances, anxiety, and depression.
我们试图从被动感知的人类与智能手机的交互中开发行为睡眠测量方法,并回顾性评估它们与一大群接受虚拟行为医学护理的现实世界患者的睡眠障碍、焦虑和抑郁症状之间的关联。
从智能手机数据中开发行为睡眠测量方法:每日智能手机最长静止期(推断睡眠时间[ISP]);30天预期静止期(预期睡眠时间[ESP]);与ESP相比每日ISP的规律性(重叠百分比);以及推断睡眠期间的智能手机使用情况(干扰、睡眠期间的清醒时间)。使用线性混合效应模型将这些测量方法与睡眠障碍、焦虑和抑郁症状进行比较。对超过111000天内接受标准护理虚拟心理保健的2300多名患者进行了回顾性分析。
平均ESP时长为8.4小时(标准差 = 2.3),重叠百分比为75%(标准差 = 18%),干扰时间窗口为4.85(标准差 = 3)。在考虑人口统计学因素后,重叠百分比(P < 0.001)和干扰(P < 0.001)与睡眠障碍症状之间存在显著关联。重叠百分比和干扰与焦虑和抑郁症状也有类似关联(均P < 0.001)。
智能手机行为测量方法似乎有助于纵向监测接受虚拟行为医学护理患者的睡眠情况,并为抑郁和焦虑症状设定基准。与更好的睡眠习惯一致的模式(即ISP规律性更高、干扰更少)与报告的睡眠障碍、焦虑和抑郁水平较低相关。