College of Information and Computer Sciences, University of Massachusetts Amherst, Amherst, MA, United States.
J Med Internet Res. 2021 Feb 18;23(2):e23936. doi: 10.2196/23936.
With nearly 20% of the US adult population using fitness trackers, there is an increasing focus on how physiological data from these devices can provide actionable insights about workplace performance. However, in-the-wild studies that understand how these metrics correlate with cognitive performance measures across a diverse population are lacking, and claims made by device manufacturers are vague. While there has been extensive research leading to a variety of theories on how physiological measures affect cognitive performance, virtually all such studies have been conducted in highly controlled settings and their validity in the real world is poorly understood.
We seek to bridge this gap by evaluating prevailing theories on the effects of a variety of sleep, activity, and heart rate parameters on cognitive performance against data collected in real-world settings.
We used a Fitbit Charge 3 and a smartphone app to collect different physiological and neurobehavioral task data, respectively, as part of our 6-week-long in-the-wild study. We collected data from 24 participants across multiple population groups (shift workers, regular workers, and graduate students) on different performance measures (vigilant attention and cognitive throughput). Simultaneously, we used a fitness tracker to unobtrusively obtain physiological measures that could influence these performance measures, including over 900 nights of sleep and over 1 million minutes of heart rate and physical activity metrics. We performed a repeated measures correlation (r) analysis to investigate which sleep and physiological markers show association with each performance measure. We also report how our findings relate to existing theories and previous observations from controlled studies.
Daytime alertness was found to be significantly correlated with total sleep duration on the previous night (r=0.17, P<.001) as well as the duration of rapid eye movement (r=0.12, P<.001) and light sleep (r=0.15, P<.001). Cognitive throughput, by contrast, was not found to be significantly correlated with sleep duration but with sleep timing-a circadian phase shift toward a later sleep time corresponded with lower cognitive throughput on the following day (r=-0.13, P<.001). Both measures show circadian variations, but only alertness showed a decline (r=-0.1, P<.001) as a result of homeostatic pressure. Both heart rate and physical activity correlate positively with alertness as well as cognitive throughput.
Our findings reveal that there are significant differences in terms of which sleep-related physiological metrics influence each of the 2 performance measures. This makes the case for more targeted in-the-wild studies investigating how physiological measures from self-tracking data influence, or can be used to predict, specific aspects of cognitive performance.
近 20%的美国成年人在使用健身追踪器,人们越来越关注这些设备中的生理数据如何提供有关工作场所表现的可操作见解。然而,缺乏在多样化人群中了解这些指标与认知表现衡量标准相关的真实世界研究,并且设备制造商的说法也很模糊。虽然有大量研究导致了各种关于生理测量如何影响认知表现的理论,但几乎所有此类研究都是在高度受控的环境中进行的,其在现实世界中的有效性知之甚少。
我们试图通过评估在真实环境中收集的数据,来弥合这一差距,以验证各种关于睡眠、活动和心率参数对认知表现影响的现有理论。
我们使用 Fitbit Charge 3 和智能手机应用程序分别收集不同的生理和神经行为任务数据,这是我们为期 6 周的真实世界研究的一部分。我们在不同的表现衡量标准(警觉注意力和认知吞吐量)上从多个人群组(轮班工人、常规工人和研究生)中收集了 24 名参与者的数据。同时,我们使用健身追踪器来获取可能影响这些表现衡量标准的生理测量值,包括超过 900 个晚上的睡眠以及超过 100 万分钟的心率和身体活动指标。我们进行了重复测量相关(r)分析,以调查哪些睡眠和生理指标与每个表现衡量标准相关。我们还报告了我们的发现与现有理论和来自对照研究的先前观察结果的关系。
发现前一天晚上的总睡眠时间(r=0.17,P<.001)以及快速眼动(r=0.12,P<.001)和浅睡眠(r=0.15,P<.001)的时长与白天警觉性显著相关。相比之下,认知吞吐量与睡眠时间无显著相关性,但与睡眠时间有关——睡眠时间的昼夜相位偏移与第二天的认知吞吐量降低相对应(r=-0.13,P<.001)。这两个衡量标准都显示出昼夜变化,但只有警觉性由于生理压力而下降(r=-0.1,P<.001)。心率和身体活动与警觉性以及认知吞吐量呈正相关。
我们的发现表明,在影响这两个表现衡量标准的每个睡眠相关生理指标方面存在显著差异。这说明了进行更有针对性的真实世界研究的必要性,以研究来自自我追踪数据的生理测量如何影响或可用于预测认知表现的特定方面。