Department of Sleep and Human Factors Research, Institute for Aerospace Medicine, German Aerospace Center, Cologne, Germany.
Division of Sleep and Circadian Disorders, Department of Medicine and Neurology, Brigham and Women's Hospital, Boston, MA, USA.
Sleep. 2021 Oct 11;44(10). doi: 10.1093/sleep/zsab103.
Sleep regularity predicts many health-related outcomes. Currently, however, there is no systematic approach to measuring sleep regularity. Traditionally, metrics have assessed deviations in sleep patterns from an individual's average; these traditional metrics include intra-individual standard deviation (StDev), interdaily stability (IS), and social jet lag (SJL). Two metrics were recently proposed that instead measure variability between consecutive days: composite phase deviation (CPD) and sleep regularity index (SRI). Using large-scale simulations, we investigated the theoretical properties of these five metrics.
Multiple sleep-wake patterns were systematically simulated, including variability in daily sleep timing and/or duration. Average estimates and 95% confidence intervals were calculated for six scenarios that affect the measurement of sleep regularity: "scrambling" the order of days; daily vs. weekly variation; naps; awakenings; "all-nighters"; and length of study.
SJL measured weekly but not daily changes. Scrambling did not affect StDev or IS, but did affect CPD and SRI; these metrics, therefore, measure sleep regularity on multi-day and day-to-day timescales, respectively. StDev and CPD did not capture sleep fragmentation. IS and SRI behaved similarly in response to naps and awakenings but differed markedly for all-nighters. StDev and IS required over a week of sleep-wake data for unbiased estimates, whereas CPD and SRI required larger sample sizes to detect group differences.
Deciding which sleep regularity metric is most appropriate for a given study depends on a combination of the type of data gathered, the study length and sample size, and which aspects of sleep regularity are most pertinent to the research question.
睡眠规律可预测许多与健康相关的结果。然而,目前还没有系统的方法来衡量睡眠规律。传统上,指标评估的是个体平均睡眠模式的偏差;这些传统指标包括个体内标准差(StDev)、日间稳定性(IS)和社会时差(SJL)。最近提出了两种指标,用于衡量连续几天之间的变异性:综合相位偏差(CPD)和睡眠规律指数(SRI)。使用大规模模拟,我们研究了这五种指标的理论性质。
系统地模拟了多种睡眠-觉醒模式,包括每日睡眠时间和/或持续时间的可变性。针对六种影响睡眠规律测量的情况计算了六个场景的平均估计值和 95%置信区间:打乱天数顺序;每日与每周变化;小睡;觉醒;通宵;以及研究时长。
SJL 测量的是每周变化而不是每日变化。打乱顺序不影响 StDev 或 IS,但会影响 CPD 和 SRI;因此,这些指标分别在多日和每日时间尺度上测量睡眠规律。StDev 和 CPD 没有捕捉到睡眠碎片化。IS 和 SRI 对小睡和觉醒的反应相似,但对通宵的反应明显不同。StDev 和 IS 需要一周以上的睡眠-觉醒数据才能进行无偏估计,而 CPD 和 SRI 需要更大的样本量才能检测出组间差异。
决定使用哪种睡眠规律指标最适合给定的研究取决于所收集数据的类型、研究时长和样本量,以及睡眠规律的哪些方面与研究问题最相关。