Scripps Research Translational Institute, La Jolla, CA, USA.
CareEvolution, Ann Arbor, MI, USA.
Nat Med. 2021 Jan;27(1):73-77. doi: 10.1038/s41591-020-1123-x. Epub 2020 Oct 29.
Traditional screening for COVID-19 typically includes survey questions about symptoms and travel history, as well as temperature measurements. Here, we explore whether personal sensor data collected over time may help identify subtle changes indicating an infection, such as in patients with COVID-19. We have developed a smartphone app that collects smartwatch and activity tracker data, as well as self-reported symptoms and diagnostic testing results, from individuals in the United States, and have assessed whether symptom and sensor data can differentiate COVID-19 positive versus negative cases in symptomatic individuals. We enrolled 30,529 participants between 25 March and 7 June 2020, of whom 3,811 reported symptoms. Of these symptomatic individuals, 54 reported testing positive and 279 negative for COVID-19. We found that a combination of symptom and sensor data resulted in an area under the curve (AUC) of 0.80 (interquartile range (IQR): 0.73-0.86) for discriminating between symptomatic individuals who were positive or negative for COVID-19, a performance that is significantly better (P < 0.01) than a model that considers symptoms alone (AUC = 0.71; IQR: 0.63-0.79). Such continuous, passively captured data may be complementary to virus testing, which is generally a one-off or infrequent sampling assay.
传统的 COVID-19 筛查通常包括有关症状和旅行史的调查问题,以及体温测量。在这里,我们探讨了随着时间的推移收集的个人传感器数据是否可以帮助识别表明感染的细微变化,例如 COVID-19 患者。我们开发了一个智能手机应用程序,该应用程序可以从美国的个人那里收集智能手表和活动跟踪器数据以及自我报告的症状和诊断测试结果,并评估症状和传感器数据是否可以区分有症状个体中的 COVID-19 阳性与阴性病例。我们于 2020 年 3 月 25 日至 6 月 7 日期间招募了 30529 名参与者,其中 3811 人报告有症状。在这些有症状的个体中,有 54 人报告 COVID-19 检测呈阳性,279 人检测呈阴性。我们发现,将症状和传感器数据结合起来可以区分 COVID-19 阳性和阴性的有症状个体,曲线下面积(AUC)为 0.80(四分位距(IQR):0.73-0.86),其性能明显优于仅考虑症状的模型(AUC=0.71;IQR:0.63-0.79)。这种连续的、被动捕获的数据可能与病毒检测互补,病毒检测通常是一次性或不频繁的采样检测。