Smarr Benjamin Lee
Kriegsfeld Lab, Psychology Dept., University of California at Berkeley, Berkeley, California
J Biol Rhythms. 2015 Feb;30(1):61-7. doi: 10.1177/0748730414565665. Epub 2015 Jan 6.
Stability of sleep and circadian rhythms are important for healthy learning and memory. While experimental manipulations of lifestyle and learning outcomes present major obstacles, the ongoing increase in data sources allows retrospective data mining of people's sleep timing variation. Here I use digital sleep-log data generated by 1109 students in a biology lab course at the University of Washington to test the hypothesis that higher variance in time asleep and later sleep-onset times negatively correlate with class performance, used here as a real-world proxy for learning and memory. I find that sleep duration variance and mean sleep-onset times both significantly correlate with class performance. These correlations are powerful on weeknights but undetectable on Friday and Saturday nights ("free nights"). Finally, although these data come with no demographic information beyond sex, the constructed demographic groups of "larks" and "owls" within the sexes reveal a significant decrease in performance of owls relative to larks in male students, whereas the correlation of performance with sleep-onset time for all male students was only a near-significant trend. This provides a proof of concept that deeper demographic mining of digital logs in the future may identify subgroups for which certain sleep phenotypes have greater predictive value for performance outcomes. The data analyzed are consistent with known patterns, including sleep-timing delays from weeknights to free nights and sleep-timing delays in men relative to women. These findings support the hypothesis that modern schedule impositions on sleep and circadian timing have consequences for real-world learning and memory. This study also highlights the low-cost, large-scale benefits of personal, daily, digital records as an augmentation of sleep and circadian studies.
睡眠和昼夜节律的稳定性对于健康的学习和记忆很重要。虽然生活方式和学习成果的实验操作存在重大障碍,但数据源的不断增加使得能够对人们的睡眠时间变化进行回顾性数据挖掘。在这里,我使用华盛顿大学一门生物学实验课程中1109名学生生成的数字睡眠记录数据,来检验以下假设:睡眠时间变化较大和入睡时间较晚与课堂表现呈负相关,这里课堂表现被用作学习和记忆的现实世界指标。我发现睡眠时间方差和平均入睡时间都与课堂表现显著相关。这些相关性在工作日晚上很强,但在周五和周六晚上(“自由夜晚”)则无法检测到。最后,尽管这些数据除了性别之外没有其他人口统计学信息,但在性别内部构建的“早起者”和“夜猫子”人口统计学群体显示,男学生中夜猫子的表现相对于早起者显著下降,而所有男学生的表现与入睡时间的相关性只是一个接近显著的趋势。这提供了一个概念证明,即未来对数字日志进行更深入的人口统计学挖掘可能会识别出某些睡眠表型对表现结果具有更大预测价值的亚组。所分析的数据与已知模式一致,包括从工作日晚上到自由夜晚的睡眠时间延迟以及男性相对于女性的睡眠时间延迟。这些发现支持了以下假设:现代对睡眠和昼夜节律时间的安排对现实世界的学习和记忆有影响。这项研究还强调了个人日常数字记录作为睡眠和昼夜节律研究补充的低成本、大规模优势。