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Evaluating the Relationship Between Fitbit Sleep Data and Self-Reported Mood, Sleep, and Environmental Contextual Factors in Healthy Adults: Pilot Observational Cohort Study

机译:评估健康成年人睡眠数据和自我报告的情绪,睡眠和环境背景因素之间的关系:试点观察队列研究

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Background: Mental health disorders can disrupt a person’s sleep, resulting in lower quality of life. Early identification and referral to mental health services are critical for active duty service members returning from forward-deployed missions. Although technologies like wearable computing devices have the potential to help address this problem, research on the role of technologies like Fitbit in mental health services is in its infancy. Objective: If Fitbit proves to be an appropriate clinical tool in a military setting, it could provide potential cost savings, improve clinician access to patient data, and create real-time treatment options for the greater active duty service member population. The purpose of this study was to determine if the Fitbit device can be used to identify indicators of mental health disorders by measuring the relationship between Fitbit sleep data, self-reported mood, and environmental contextual factors that may disrupt sleep. Methods: This observational cohort study was conducted at the Madigan Army Medical Center. The study included 17 healthy adults who wore a Fitbit Flex for 2 weeks and completed a daily self-reported mood and sleep log. Daily Fitbit data were obtained for each participant. Contextual factors were collected with interim and postintervention surveys. This study had 3 specific aims: (1) Determine the correlation between daily Fitbit sleep data and daily self-reported sleep, (2) Determine the correlation between number of waking events and self-reported mood, and (3) Explore the qualitative relationships between Fitbit waking events and self-reported contextual factors for sleep. Results: There was no significant difference in the scores for the pre-intevention Pittsburg Sleep Quality Index (PSQI; mean 5.88 points, SD 3.71 points) and postintervention PSQI (mean 5.33 points, SD 2.83 points). The Wilcoxon signed-ranks test showed that the difference between the pre-intervention PSQI and postintervention PSQI survey data was not statistically significant (Z=0.751, P =.05). The Spearman correlation between Fitbit sleep time and self-reported sleep time was moderate (r=0.643, P =.005). The Spearman correlation between number of waking events and self-reported mood was weak (r=0.354, P =.163). Top contextual factors disrupting sleep were “pain,” “noises,” and “worries.” A subanalysis of participants reporting “worries” found evidence of potential stress resilience and outliers in waking events. Conclusions: Findings contribute valuable evidence on the strength of the Fitbit Flex device as a proxy that is consistent with self-reported sleep data. Mood data alone do not predict number of waking events. Mood and Fitbit data combined with further screening tools may be able to identify markers of underlying mental health disease.
机译:背景:心理健康障碍可能会扰乱一个人的睡眠,导致较低的生活质量。早期识别和转诊到心理健康服务对于从前向部署的任务返回的现役服务成员至关重要。虽然可穿戴计算设备等技术有可能有助于解决这个问题的问题,但是在初学者卫生服务中就像Fitbit这样的技术的作用就在其初期的问题。目的:如果Fitbit被证明是军事环境中的适当临床工具,它可以提供潜在的成本节约,改善临床医生对患者数据的访问,并为更大的现役服务成员人口创造实时治疗方案。本研究的目的是通过测量Fitbit睡眠数据,自我报告的情绪和环境背景因素之间的关系来确定FITBit装置是否可以用于识别心理健康障碍的指标。方法:该观察队队列研究在Madigan Army Medical Center进行。该研究包括17名健康成年人,他们穿着Fitbit Flex 2周,并完成了每日自我报告的情绪和睡眠日志。每次参与者获得每日Fitbit数据。临时和后勤调查收集了上下文因素。本研究有3个具体目标:(1)确定每日Fitbit睡眠数据与每日自我报告的睡眠之间的相关性,(2)确定醒着事件数量与自我报告的情绪之间的相关性,(3)探索定性关系在Fitbit醒来的活动和自我报告的睡眠中因素之间。结果:预防匹兹堡睡眠质量指数(PSQI;平均5.88点,SD 3.71点)和PSQI(平均5.33点,SD 2.83分)的分数没有显着差异。 Wilcoxon签名的排名测试表明,介入性PSQI和初期PSQI调查数据之间的差异没有统计学意义(Z = 0.751,P = .05)。 Fitbit睡眠时间和自我报告睡眠时间之间的矛盾相关性适中(r = 0.643,p = .005)。唤醒事件数量和自我报告的情绪之间的矛盾相关性弱(r = 0.354,p = .163)。扰乱睡眠的顶级背景因素是“痛苦”,“噪音”和“担忧”。参与者的细分分析报告“担心”发现醒来事件中潜在的压力复原力和异常值的证据。结论:调查结果为Fitbit Flex设备的强度提供了有价值的证据,作为与自我报告的睡眠数据一致的代理。单独的情绪数据不会预测醒来的事件的数量。与进一步的筛选工具相结合的情绪和Fitbit数据可能能够识别潜在的心理健康疾病标记。

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