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社区居住的老年人中健康恶化的无接触式睡眠监测:探索性研究。

Contactless Sleep Monitoring for Early Detection of Health Deteriorations in Community-Dwelling Older Adults: Exploratory Study.

机构信息

Gerontechnology and Rehabilitation Group, ARTORG Center for Biomedical Engineering Research, University of Bern, Bern, Switzerland.

Department of Cardiology, University Hospital Bern, University of Bern, Bern, Switzerland.

出版信息

JMIR Mhealth Uhealth. 2021 Jun 11;9(6):e24666. doi: 10.2196/24666.

Abstract

BACKGROUND

Population aging is posing multiple social and economic challenges to society. One such challenge is the social and economic burden related to increased health care expenditure caused by early institutionalizations. The use of modern pervasive computing technology makes it possible to continuously monitor the health status of community-dwelling older adults at home. Early detection of health issues through these technologies may allow for reduced treatment costs and initiation of targeted preventive measures leading to better health outcomes. Sleep is a key factor when it comes to overall health and many health issues manifest themselves with associated sleep deteriorations. Sleep quality and sleep disorders such as sleep apnea syndrome have been extensively studied using various wearable devices at home or in the setting of sleep laboratories. However, little research has been conducted evaluating the potential of contactless and continuous sleep monitoring in detecting early signs of health problems in community-dwelling older adults.

OBJECTIVE

In this work we aim to evaluate which contactlessly measurable sleep parameter is best suited to monitor perceived and actual health status changes in older adults.

METHODS

We analyzed real-world longitudinal (up to 1 year) data from 37 community-dwelling older adults including more than 6000 nights of measured sleep. Sleep parameters were recorded by a pressure sensor placed beneath the mattress, and corresponding health status information was acquired through weekly questionnaires and reports by health care personnel. A total of 20 sleep parameters were analyzed, including common sleep metrics such as sleep efficiency, sleep onset delay, and sleep stages but also vital signs in the form of heart and breathing rate as well as movements in bed. Association with self-reported health, evaluated by EuroQol visual analog scale (EQ-VAS) ratings, were quantitatively evaluated using individual linear mixed-effects models. Translation to objective, real-world health incidents was investigated through manual retrospective case-by-case analysis.

RESULTS

Using EQ-VAS rating based self-reported perceived health, we identified body movements in bed-measured by the number toss-and-turn events-as the most predictive sleep parameter (t score=-0.435, P value [adj]=<.001). Case-by-case analysis further substantiated this finding, showing that increases in number of body movements could often be explained by reported health incidents. Real world incidents included heart failure, hypertension, abdominal tumor, seasonal flu, gastrointestinal problems, and urinary tract infection.

CONCLUSIONS

Our results suggest that nightly body movements in bed could potentially be a highly relevant as well as easy to interpret and derive digital biomarker to monitor a wide range of health deteriorations in older adults. As such, it could help in detecting health deteriorations early on and provide timelier, more personalized, and precise treatment options.

摘要

背景

人口老龄化给社会带来了诸多社会和经济挑战。其中一个挑战是由于早期机构化导致医疗保健支出增加所带来的社会和经济负担。现代普及计算技术的使用使得连续监测社区居住的老年人在家中的健康状况成为可能。通过这些技术早期发现健康问题可能会降低治疗成本,并启动有针对性的预防措施,从而带来更好的健康结果。睡眠是整体健康的关键因素,许多健康问题会表现出与之相关的睡眠恶化。使用各种可穿戴设备在家中或睡眠实验室中已经广泛研究了睡眠质量和睡眠障碍(如睡眠呼吸暂停综合征)。然而,很少有研究评估非接触式和连续睡眠监测在检测社区居住的老年人早期健康问题方面的潜力。

目的

在这项工作中,我们旨在评估可非接触测量的睡眠参数中,哪一个最适合监测老年人感知和实际健康状况的变化。

方法

我们分析了来自 37 名社区居住的老年人的真实纵向(长达 1 年)数据,其中包括超过 6000 个夜晚的测量睡眠。通过放置在床垫下的压力传感器记录睡眠参数,通过每周的问卷和医疗保健人员的报告获取相应的健康状况信息。共分析了 20 个睡眠参数,包括常见的睡眠指标,如睡眠效率、入睡潜伏期和睡眠阶段,但也包括以心率和呼吸率以及床上运动形式的生命体征。使用个体线性混合效应模型对与自我报告的健康(通过 EuroQol 视觉模拟量表(EQ-VAS)评分评估)的关联进行了定量评估。通过手动回溯性逐个病例分析来研究与客观的、现实生活中的健康事件的联系。

结果

使用基于 EQ-VAS 评分的自我报告感知健康,我们确定床上的身体运动(通过翻身事件的数量来衡量)是最具预测性的睡眠参数(t 分数=-0.435,P 值[调整]=<.001)。逐个病例分析进一步证实了这一发现,表明身体运动次数的增加通常可以用报告的健康事件来解释。现实世界中的事件包括心力衰竭、高血压、腹部肿瘤、季节性流感、胃肠道问题和尿路感染。

结论

我们的结果表明,夜间床上的身体运动可能是监测老年人健康恶化的一个非常相关且易于解释和推导的数字生物标志物。因此,它可以帮助早期发现健康恶化,并提供更及时、更个性化和更精确的治疗方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4fb3/8235297/6e8f5e325e2e/mhealth_v9i6e24666_fig1.jpg

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