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Early Detection of Symptom Exacerbation in Patients With SARS-CoV-2 Infection Using the Fitbit Charge 3 (DEXTERITY): Pilot Evaluation

机译:使用Fitbit Charge 3(Dexterity)的SARS-COV-2感染患者患者早期检测症状激增

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Background Some patients with COVID-19 experienced sudden death due to rapid symptom deterioration. Thus, it is important to predict COVID-19 symptom exacerbation at an early stage prior to increasing severity in patients. Patients with COVID-19 could experience a unique “silent hypoxia” at an early stage of the infection when they are apparently asymptomatic, but with rather low SpO2 (oxygen saturation) levels. In order to continuously monitor SpO2 in daily life, a high-performance wearable device, such as the Apple Watch or Fitbit, has become commercially available to monitor several biometric data including steps, resting heart rate (RHR), physical activity, sleep quality, and estimated oxygen variation (EOV). Objective This study aimed to test whether EOV measured by the wearable device Fitbit can predict COVID-19 symptom exacerbation. Methods We recruited patients with COVID-19 from August to November 2020. Patients were asked to wear the Fitbit for 30 days, and biometric data including EOV and RHR were extracted. EOV is a relative physiological measure that reflects users’ SpO2 levels during sleep. We defined a high EOV signal as a patient’s oxygen level exhibiting a significant dip and recovery within the index period, and a high RHR signal as daily RHR exceeding 5 beats per day compared with the minimum RHR of each patient in the study period. We defined successful prediction as the appearance of those signals within 2 days before the onset of the primary outcome. The primary outcome was the composite of deaths of all causes, use of extracorporeal membrane oxygenation, use of mechanical ventilation, oxygenation, and exacerbation of COVID-19 symptoms, irrespective of readmission. We also assessed each outcome individually as secondary outcomes. We made weekly phone calls to discharged patients to check on their symptoms. Results We enrolled 23 patients with COVID-19 diagnosed by a positive SARS-CoV-2 polymerase chain reaction test. The patients had a mean age of 50.9 (SD 20) years, and 70% (n=16) were female. Each patient wore the Fitbit for 30 days. COVID-19 symptom exacerbation occurred in 6 (26%) patients. We were successful in predicting exacerbation using EOV signals in 4 out of 5 cases (sensitivity=80%, specificity=90%), whereas the sensitivity and specificity of high RHR signals were 50% and 80%, respectively, both lower than those of high EOV signals. Coincidental obstructive sleep apnea syndrome confirmed by polysomnography was detected in 1 patient via consistently high EOV signals. Conclusions This pilot study successfully detected early COVID-19 symptom exacerbation by measuring EOV, which may help to identify the early signs of COVID-19 exacerbation.
机译:背景技术一些患有Covid-19患者由于快速症状恶化而经历过猝死。因此,在提高患者严重程度之前,预测Covid-19在早期的症状加剧是重要的。 Covid-19患者在感染的早期阶段可能在感染的早期阶段体验着一种独特的“无声缺氧”,但具有相当低的SPO2(氧饱和)水平。为了在日常生活中连续监测SPO2,诸如Apple Watch或Fitbit等高性能可穿戴设备,可商购获得几种生物识别数据,包括步骤,休息心率(RHR),身体活动,睡眠质量,和估计的氧气变异(EOV)。目的这项研究旨在测试eov是否通过可穿戴装置的Fitbit测量的eov可以预测Covid-19症状恶化。方法从8月到2020年8月,我们招募了Covid-19患者。患者被要求佩戴30天的Fitbit,并提取包括EoV和RHR的生物识别数据。 EOV是一种相对生理措施,可在睡眠期间反映用户SPO2水平。我们定义了一个高EoV信号作为患者的氧气水平,在指数期内显着浸渍和恢复,以及每天每天超过5次节拍的高rHR信号与研究期间的每位患者的最小RHR相比。我们将成功的预测定义为主要结果开始前2天内的那些信号的外观。主要结果是所有原因死亡的综合,使用体外膜氧合,使用机械通气,氧合和加重Covid-19症状,无论入伍如何。我们还将每个结果单独评估为二次结果。我们每周打电话给患者检查患者检查他们的症状。结果我们注册了23例Covid-19患者,通过阳性SARS-COV-2聚合酶链反应试验诊断出来。患者的平均年龄为50.9(SD 20)岁,70%(n = 16)是女性。每位患者都佩戴30天。 Covid-19症状发生在6例(26%)患者中发生。我们在5例中的4例中使用EOV信号(Sysitive = 80%,特异性= 90%),我们成功地预测加剧,而高rhR信号的敏感性和特异性分别为50%和80%,均低于高eov信号。通过始终如一的高EOV信号,在1名患者中检测到多瘤术治疗的巧合阻塞性睡眠呼吸暂停综合征。结论该试点研究通过测量EOV成功地检测了早期的Covid-19症状恶化,这可能有助于确定Covid-19恶化的早期迹象。

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