Department of Biostatistics & Health Informatics, Institute of Psychiatry, Psychology and Neuroscience, King's College London, London, United Kingdom.
Institute of Health Informatics, University College London, London, United Kingdom.
JMIR Mhealth Uhealth. 2021 Apr 12;9(4):e24604. doi: 10.2196/24604.
Sleep problems tend to vary according to the course of the disorder in individuals with mental health problems. Research in mental health has associated sleep pathologies with depression. However, the gold standard for sleep assessment, polysomnography (PSG), is not suitable for long-term, continuous monitoring of daily sleep, and methods such as sleep diaries rely on subjective recall, which is qualitative and inaccurate. Wearable devices, on the other hand, provide a low-cost and convenient means to monitor sleep in home settings.
The main aim of this study was to devise and extract sleep features from data collected using a wearable device and analyze their associations with depressive symptom severity and sleep quality as measured by the self-assessed Patient Health Questionnaire 8-item (PHQ-8).
Daily sleep data were collected passively by Fitbit wristband devices, and depressive symptom severity was self-reported every 2 weeks by the PHQ-8. The data used in this paper included 2812 PHQ-8 records from 368 participants recruited from 3 study sites in the Netherlands, Spain, and the United Kingdom. We extracted 18 sleep features from Fitbit data that describe participant sleep in the following 5 aspects: sleep architecture, sleep stability, sleep quality, insomnia, and hypersomnia. Linear mixed regression models were used to explore associations between sleep features and depressive symptom severity. The z score was used to evaluate the significance of the coefficient of each feature.
We tested our models on the entire dataset and separately on the data of 3 different study sites. We identified 14 sleep features that were significantly (P<.05) associated with the PHQ-8 score on the entire dataset, among them awake time percentage (z=5.45, P<.001), awakening times (z=5.53, P<.001), insomnia (z=4.55, P<.001), mean sleep offset time (z=6.19, P<.001), and hypersomnia (z=5.30, P<.001) were the top 5 features ranked by z score statistics. Associations between sleep features and PHQ-8 scores varied across different sites, possibly due to differences in the populations. We observed that many of our findings were consistent with previous studies, which used other measurements to assess sleep, such as PSG and sleep questionnaires.
We demonstrated that several derived sleep features extracted from consumer wearable devices show potential for the remote measurement of sleep as biomarkers of depression in real-world settings. These findings may provide the basis for the development of clinical tools to passively monitor disease state and trajectory, with minimal burden on the participant.
睡眠问题往往因心理健康问题患者的疾病进程而有所不同。心理健康研究将睡眠病理学与抑郁症联系起来。然而,睡眠评估的金标准——多导睡眠图(PSG)并不适合长期、连续监测日常睡眠,而睡眠日记等方法则依赖于主观回忆,这种方法是定性的且不准确。可穿戴设备则提供了一种低成本、方便的方式来监测家庭环境中的睡眠。
本研究的主要目的是设计并从可穿戴设备收集的数据中提取睡眠特征,并分析这些特征与抑郁症状严重程度和自我评估的患者健康问卷 8 项(PHQ-8)所测量的睡眠质量之间的关联。
通过 Fitbit 腕带设备被动收集每日睡眠数据,参与者每两周通过 PHQ-8 自我报告抑郁症状严重程度。本文使用的数据来自荷兰、西班牙和英国的 3 个研究点招募的 368 名参与者的 2812 份 PHQ-8 记录。我们从 Fitbit 数据中提取了 18 个描述参与者睡眠的睡眠特征,包括睡眠结构、睡眠稳定性、睡眠质量、失眠和嗜睡。线性混合回归模型用于探索睡眠特征与抑郁症状严重程度之间的关联。使用 z 分数评估每个特征系数的显著性。
我们在整个数据集和 3 个不同研究地点的数据上测试了我们的模型。我们在整个数据集上确定了 14 个与 PHQ-8 评分显著相关(P<.05)的睡眠特征,其中清醒时间百分比(z=5.45,P<.001)、觉醒次数(z=5.53,P<.001)、失眠(z=4.55,P<.001)、平均睡眠结束时间(z=6.19,P<.001)和嗜睡(z=5.30,P<.001)是按 z 分数统计排名前 5 的特征。睡眠特征与 PHQ-8 评分之间的关联因地点而异,这可能是由于人群的差异所致。我们观察到,我们的许多发现与使用其他测量方法(如 PSG 和睡眠问卷)评估睡眠的先前研究一致。
我们证明了从消费者可穿戴设备中提取的几个衍生睡眠特征具有作为真实环境中抑郁生物标志物的潜力,可以远程测量睡眠。这些发现可能为开发临床工具提供基础,以最小的参与者负担被动监测疾病状态和轨迹。