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Detection and Monitoring of Viral Infections via Wearable Devices and Biometric Data
Annual Review of Biomedical Engineering ( IF 9.7 ) Pub Date : 2022-06-06 , DOI: 10.1146/annurev-bioeng-103020-040136
Craig J Goergen 1 , MacKenzie J Tweardy 2 , Steven R Steinhubl 2, 3 , Stephan W Wegerich 2 , Karnika Singh 4 , Rebecca J Mieloszyk 5 , Jessilyn Dunn 4
Affiliation  

Mounting clinical evidence suggests that viral infections can lead to detectable changes in an individual's normal physiologic and behavioral metrics, including heart and respiration rates, heart rate variability, temperature, activity, and sleep prior to symptom onset, potentially even in asymptomatic individuals. While the ability of wearable devices to detect viral infections in a real-world setting has yet to be proven, multiple recent studies have established that individual, continuous data from a range of biometric monitoring technologies can be easily acquired and that through the use of machine learning techniques, physiological signals and warning signs can be identified. In this review, we highlight the existing knowledge base supporting the potential for widespread implementation of biometric data to address existing gaps in the diagnosis and treatment of viral illnesses, with a particular focus on the many important lessons learned from the coronavirus disease 2019 pandemic.

中文翻译:


通过可穿戴设备和生物识别数据检测和监测病毒感染

越来越多的临床证据表明,病毒感染可导致个体正常生理和行为指标发生可检测的变化,包括症状出现前的心率和呼吸频率、心率变异性、体温、活动和睡眠,甚至可能发生在无症状个体中。虽然可穿戴设备在现实环境中检测病毒感染的能力尚未得到证实,但最近的多项研究表明,可以轻松获取来自一系列生物识别监测技术的个人连续数据,并且通过使用机器可以识别学习技巧、生理信号和警告信号。在这篇综述中,我们强调了现有的知识库,支持广泛实施生物识别数据的潜力,以解决病毒性疾病诊断和治疗方面的现有差距,特别关注从 2019 年冠状病毒病大流行中吸取的许多重要经验教训。

更新日期:2022-06-07
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