Philips Research North America, Cambridge, MA, USA.
Defense Innovation Unit, Mountain View, CA, USA.
Sci Rep. 2022 Mar 8;12(1):3797. doi: 10.1038/s41598-022-07764-6.
Infectious threats, like the COVID-19 pandemic, hinder maintenance of a productive and healthy workforce. If subtle physiological changes precede overt illness, then proactive isolation and testing can reduce labor force impacts. This study hypothesized that an early infection warning service based on wearable physiological monitoring and predictive models created with machine learning could be developed and deployed. We developed a prototype tool, first deployed June 23, 2020, that delivered continuously updated scores of infection risk for SARS-CoV-2 through April 8, 2021. Data were acquired from 9381 United States Department of Defense (US DoD) personnel wearing Garmin and Oura devices, totaling 599,174 user-days of service and 201 million hours of data. There were 491 COVID-19 positive cases. A predictive algorithm identified infection before diagnostic testing with an AUC of 0.82. Barriers to implementation included adequate data capture (at least 48% data was needed) and delays in data transmission. We observe increased risk scores as early as 6 days prior to diagnostic testing (2.3 days average). This study showed feasibility of a real-time risk prediction score to minimize workforce impacts of infection.
传染性威胁,如 COVID-19 大流行,会妨碍生产力和健康的劳动力的维持。如果轻微的生理变化先于明显的疾病,那么主动隔离和检测可以减少劳动力的影响。本研究假设可以开发和部署基于可穿戴生理监测和使用机器学习创建的预测模型的早期感染预警服务。我们开发了一个原型工具,于 2020 年 6 月 23 日首次部署,通过 2021 年 4 月 8 日为 SARS-CoV-2 提供不断更新的感染风险评分。数据来自 9381 名佩戴 Garmin 和 Oura 设备的美国国防部(US DoD)人员,总计 599174 用户日和 20100 万小时的数据。有 491 例 COVID-19 阳性病例。预测算法在诊断检测前识别感染的 AUC 为 0.82。实施的障碍包括充分的数据捕获(至少需要 48%的数据)和数据传输延迟。我们观察到风险评分早在诊断检测前 6 天(平均 2.3 天)就开始增加。本研究表明实时风险预测评分具有可行性,可以最大限度地减少感染对劳动力的影响。