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利用可穿戴设备的生理数据识别 SARS-CoV-2 感染和症状并预测 COVID-19 诊断:观察性研究。

Use of Physiological Data From a Wearable Device to Identify SARS-CoV-2 Infection and Symptoms and Predict COVID-19 Diagnosis: Observational Study.

机构信息

The Dr Henry D Janowitz Division of Gastroenterology, Icahn School of Medicine at Mount Sinai, New York, NY, United States.

Hasso Plattner Institute for Digital Health at Mount Sinai, Icahn School of Medicine at Mount Sinai, New York, NY, United States.

出版信息

J Med Internet Res. 2021 Feb 22;23(2):e26107. doi: 10.2196/26107.

Abstract

BACKGROUND

Changes in autonomic nervous system function, characterized by heart rate variability (HRV), have been associated with infection and observed prior to its clinical identification.

OBJECTIVE

We performed an evaluation of HRV collected by a wearable device to identify and predict COVID-19 and its related symptoms.

METHODS

Health care workers in the Mount Sinai Health System were prospectively followed in an ongoing observational study using the custom Warrior Watch Study app, which was downloaded to their smartphones. Participants wore an Apple Watch for the duration of the study, measuring HRV throughout the follow-up period. Surveys assessing infection and symptom-related questions were obtained daily.

RESULTS

Using a mixed-effect cosinor model, the mean amplitude of the circadian pattern of the standard deviation of the interbeat interval of normal sinus beats (SDNN), an HRV metric, differed between subjects with and without COVID-19 (P=.006). The mean amplitude of this circadian pattern differed between individuals during the 7 days before and the 7 days after a COVID-19 diagnosis compared to this metric during uninfected time periods (P=.01). Significant changes in the mean and amplitude of the circadian pattern of the SDNN was observed between the first day of reporting a COVID-19-related symptom compared to all other symptom-free days (P=.01).

CONCLUSIONS

Longitudinally collected HRV metrics from a commonly worn commercial wearable device (Apple Watch) can predict the diagnosis of COVID-19 and identify COVID-19-related symptoms. Prior to the diagnosis of COVID-19 by nasal swab polymerase chain reaction testing, significant changes in HRV were observed, demonstrating the predictive ability of this metric to identify COVID-19 infection.

摘要

背景

自主神经系统功能的变化,其特征为心率变异性(HRV),与感染有关,并在其临床诊断之前即可观察到。

目的

我们通过可穿戴设备评估 HRV,以识别和预测 COVID-19 及其相关症状。

方法

西奈山卫生系统的医疗保健工作者在一项正在进行的观察性研究中被前瞻性随访,该研究使用定制的 Warrior Watch Study 应用程序,参与者将该应用程序下载到他们的智能手机上。参与者在整个研究期间佩戴 Apple Watch,在随访期间测量 HRV。每天获取评估感染和症状相关问题的调查。

结果

使用混合效应余弦模型,正常窦性心搏间间隔标准差(SDNN)的昼夜节律模式的平均幅度(HRV 指标)在 COVID-19 患者和非 COVID-19 患者之间存在差异(P=.006)。与未感染期间相比,在 COVID-19 诊断前 7 天和后 7 天,该昼夜节律模式的平均幅度在个体之间存在差异(P=.01)。与所有无症状天数相比,报告 COVID-19 相关症状的第一天观察到 SDNN 的昼夜节律模式的平均值和幅度的显著变化(P=.01)。

结论

从常用的商业可穿戴设备(Apple Watch)中纵向收集的 HRV 指标可预测 COVID-19 的诊断,并识别 COVID-19 相关症状。在通过鼻拭子聚合酶链反应检测 COVID-19 诊断之前,HRV 发生了明显变化,表明该指标具有识别 COVID-19 感染的预测能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/18f8/7901594/90d9736e915f/jmir_v23i2e26107_fig1.jpg

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