Leveraging Smart Bed Technology to Detect COVID-19 Symptoms: Case Study.

IF 2
JMIR AI Pub Date : 2025-09-17 DOI:10.2196/64018
Gary Garcia-Molina, Dmytro Guzenko, Susan DeFranco, Mark Aloia, Rajasi Mills, Faisal Mushtaq, Virend K Somers
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引用次数: 0

Abstract

Background: Pathophysiological responses to viral infections such as COVID-19 significantly affect sleep duration, sleep quality, and concomitant cardiorespiratory function. The widespread adoption of consumer smart bed technology presents a unique opportunity for unobtrusive, real-world, longitudinal monitoring of sleep and physiological signals, which may be valuable for infectious illness surveillance and early detection. During the COVID-19 pandemic, scalable and noninvasive methods for identifying subtle early symptoms in naturalistic settings became increasingly important. Existing digital health studies have largely relied on wearables or patient self-reports, with limited adherence and recall bias. In contrast, smart bed-derived signals enable high-frequency objective data capture with minimal user burden.

Objective: The aim of this study was to leverage objective, longitudinal biometric data captured using ballistocardiography signals from a consumer smart bed platform, along with predictive modeling, to detect and monitor COVID-19 symptoms at an individual level.

Methods: A retrospective cohort of 1725 US adults with sufficient longitudinal data and completed surveys reporting COVID-19 test outcomes was identified from users of a smart bed system. Smart bed ballistocardiography-derived metrics included nightly pulse rate, respiratory rate, total sleep time, sleep stages, and movement patterns. Participants served as their own controls, comparing reference (baseline) and symptomatic periods. A two-stage analytical pipeline was used: (1) a gradient-boosted decision-tree "symptom detection model" independently classified each sleep session as symptomatic or not, and (2) an "illness-symptom progression model" using a Gaussian Mixture Hidden Markov Model estimated the probability of symptomatic states across contiguous sleep sessions by leveraging the temporal relationship in the data. Statistical analyses evaluated within-subject changes, and the model's ability to discriminate illness windows was quantified using receiver operating characteristic metrics.

Results: Out of 122 participants who tested positive for COVID-19, symptoms were detected by the model in 104 cases. Across the cohort, the model captured significant deviations in sleep and cardiorespiratory metrics during symptomatic periods compared to baseline, with an area under the receiver operating characteristic curve of 0.80, indicating high discriminatory performance. Limitations included reliance on self-reported symptoms and test status, as well as the demographic makeup of the smart bed user base.

Conclusions: Smart beds represent a valuable resource for passively collecting objective, longitudinal sleep and physiological data. The findings support the feasibility of using these data and machine learning models for real-time detection and tracking of COVID-19 and related illnesses. Future directions include model refinement, integration with other health signals, and applications for population-scale surveillance of emerging infectious diseases.

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利用智能床技术检测COVID-19症状:案例研究。
背景:COVID-19等病毒感染的病理生理反应显著影响睡眠持续时间、睡眠质量和伴随的心肺功能。消费者智能床技术的广泛采用为不引人注目的、真实的、纵向监测睡眠和生理信号提供了独特的机会,这可能对传染病监测和早期发现有价值。在2019冠状病毒病大流行期间,在自然环境中识别细微早期症状的可扩展和非侵入性方法变得越来越重要。现有的数字健康研究在很大程度上依赖于可穿戴设备或患者自我报告,依从性和回忆偏差有限。相比之下,智能床衍生信号能够以最小的用户负担实现高频客观数据捕获。目的:本研究的目的是利用来自消费者智能床平台的弹道心动图信号捕获的客观纵向生物特征数据,以及预测建模,在个体水平上检测和监测COVID-19症状。方法:从智能床系统的用户中确定了1725名美国成年人的回顾性队列,这些成年人具有足够的纵向数据和完整的调查报告COVID-19测试结果。智能床弹道心动图衍生的指标包括夜间脉搏率、呼吸率、总睡眠时间、睡眠阶段和运动模式。参与者作为自己的对照,比较参考(基线)和症状期。采用两阶段分析流程:(1)梯度增强决策树“症状检测模型”独立分类每个睡眠阶段是否有症状;(2)使用高斯混合隐马尔可夫模型的“疾病-症状进展模型”利用数据中的时间关系估计连续睡眠阶段出现症状状态的概率。统计分析评估了受试者内部的变化,模型区分疾病窗口的能力使用受试者操作特征指标进行量化。结果:在122名COVID-19检测呈阳性的参与者中,该模型在104例中检测到症状。在整个队列中,与基线相比,该模型捕获了症状期睡眠和心肺指标的显着偏差,受试者工作特征曲线下的面积为0.80,表明高歧视性表现。局限性包括依赖于自我报告的症状和测试状态,以及智能床用户群的人口构成。结论:智能床是被动收集客观、纵向睡眠和生理数据的宝贵资源。研究结果支持使用这些数据和机器学习模型实时检测和跟踪COVID-19及相关疾病的可行性。未来的发展方向包括模型改进,与其他健康信号的整合,以及在新发传染病的人口规模监测中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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