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在医护人员中使用消费级可穿戴设备检测包括新冠病毒病在内的常见呼吸道感染:前瞻性模型验证研究

Detection of Common Respiratory Infections, Including COVID-19, Using Consumer Wearable Devices in Health Care Workers: Prospective Model Validation Study.

作者信息

Esmaeilpour Zeinab, Natarajan Aravind, Su Hao-Wei, Faranesh Anthony, Friel Ciaran, Zanos Theodoros P, D'Angelo Stefani, Heneghan Conor

机构信息

Google LLC, San Francisco, CA, United States.

Northwell Health, New Hyde Park, NY, United States.

出版信息

JMIR Form Res. 2024 Jul 17;8:e53716. doi: 10.2196/53716.

Abstract

BACKGROUND

The early detection of respiratory infections could improve responses against outbreaks. Wearable devices can provide insights into health and well-being using longitudinal physiological signals.

OBJECTIVE

The purpose of this study was to prospectively evaluate the performance of a consumer wearable physiology-based respiratory infection detection algorithm in health care workers.

METHODS

In this study, we evaluated the performance of a previously developed system to predict the presence of COVID-19 or other upper respiratory infections. The system generates real-time alerts using physiological signals recorded from a smartwatch. Resting heart rate, respiratory rate, and heart rate variability measured during the sleeping period were used for prediction. After baseline recordings, when participants received a notification from the system, they were required to undergo testing at a Northwell Health System site. Participants were asked to self-report any positive tests during the study. The accuracy of model prediction was evaluated using respiratory infection results (laboratory results or self-reports), and postnotification surveys were used to evaluate potential confounding factors.

RESULTS

A total of 577 participants from Northwell Health in New York were enrolled in the study between January 6, 2022, and July 20, 2022. Of these, 470 successfully completed the study, 89 did not provide sufficient physiological data to receive any prediction from the model, and 18 dropped out. Out of the 470 participants who completed the study and wore the smartwatch as required for the 16-week study duration, the algorithm generated 665 positive alerts, of which 153 (23.0%) were not acted upon to undergo testing for respiratory viruses. Across the 512 instances of positive alerts that involved a respiratory viral panel test, 63 had confirmed respiratory infection results (ie, COVID-19 or other respiratory infections detected using a polymerase chain reaction or home test) and the remaining 449 had negative upper respiratory infection test results. Across all cases, the estimated false-positive rate based on predictions per day was 2%, and the positive-predictive value ranged from 4% to 10% in this specific population, with an observed incidence rate of 198 cases per week per 100,000. Detailed examination of questionnaires filled out after receiving a positive alert revealed that physical or emotional stress events, such as intense exercise, poor sleep, stress, and excessive alcohol consumption, could cause a false-positive result.

CONCLUSIONS

The real-time alerting system provides advance warning on respiratory viral infections as well as other physical or emotional stress events that could lead to physiological signal changes. This study showed the potential of wearables with embedded alerting systems to provide information on wellness measures.

摘要

背景

呼吸道感染的早期检测可以改善对疫情爆发的应对措施。可穿戴设备能够利用纵向生理信号深入了解健康状况。

目的

本研究旨在前瞻性评估一种基于消费者可穿戴设备生理数据的呼吸道感染检测算法在医护人员中的性能。

方法

在本研究中,我们评估了一个先前开发的系统预测新冠病毒病或其他上呼吸道感染的性能。该系统利用从智能手表记录的生理信号生成实时警报。使用睡眠期间测量的静息心率、呼吸频率和心率变异性进行预测。在进行基线记录后,当参与者收到系统通知时,他们被要求在诺斯韦尔健康系统的站点进行检测。参与者被要求在研究期间自行报告任何阳性检测结果。使用呼吸道感染结果(实验室结果或自我报告)评估模型预测的准确性,并通过通知后调查评估潜在的混杂因素。

结果

2022年1月6日至2022年7月20日期间,共有577名来自纽约诺斯韦尔健康系统的参与者纳入本研究。其中,470人成功完成研究,89人未提供足够的生理数据以获得模型的任何预测,18人退出。在470名完成研究并在为期16周的研究期间按要求佩戴智能手表的参与者中,该算法生成了665次阳性警报,其中153次(23.0%)未促使参与者接受呼吸道病毒检测。在涉及呼吸道病毒检测的512次阳性警报实例中,63次有确诊的呼吸道感染结果(即使用聚合酶链反应或家用检测法检测出新冠病毒病或其他呼吸道感染),其余449次上呼吸道感染检测结果为阴性。在所有病例中,基于每日预测的估计假阳性率为2%,在这一特定人群中阳性预测值为4%至10%,观察到的发病率为每10万人每周198例。对收到阳性警报后填写的问卷进行详细检查发现,身体或情绪应激事件,如剧烈运动、睡眠不足、压力和过量饮酒,可能导致假阳性结果。

结论

实时警报系统能对呼吸道病毒感染以及可能导致生理信号变化的其他身体或情绪应激事件发出预警。本研究显示了带有嵌入式警报系统的可穿戴设备在提供健康措施信息方面的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/72aa/11292157/bed644f785cf/formative_v8i1e53716_fig1.jpg

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