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使用可穿戴传感器对自由生活条件下的心率变异性进行连续监测:探索性观察研究。

Continuous Monitoring of Heart Rate Variability in Free-Living Conditions Using Wearable Sensors: Exploratory Observational Study.

作者信息

Gaur Pooja, Temple Dorota S, Hegarty-Craver Meghan, Boyce Matthew D, Holt Jonathan R, Wenger Michael F, Preble Edward A, Eckhoff Randall P, McCombs Michelle S, Davis-Wilson Hope C, Walls Howard J, Dausch David E

机构信息

Research Triangle Institute, Research Triangle Park, NC, United States.

出版信息

JMIR Form Res. 2024 Aug 7;8:e53977. doi: 10.2196/53977.

Abstract

BACKGROUND

Wearable physiological monitoring devices are promising tools for remote monitoring and early detection of potential health changes of interest. The widespread adoption of such an approach across communities and over long periods of time will require an automated data platform for collecting, processing, and analyzing relevant health information.

OBJECTIVE

In this study, we explore prospective monitoring of individual health through an automated data collection, metrics extraction, and health anomaly analysis pipeline in free-living conditions over a continuous monitoring period of several months with a focus on viral respiratory infections, such as influenza or COVID-19.

METHODS

A total of 59 participants provided smartwatch data and health symptom and illness reports daily over an 8-month window. Physiological and activity data from photoplethysmography sensors, including high-resolution interbeat interval (IBI) and step counts, were uploaded directly from Garmin Fenix 6 smartwatches and processed automatically in the cloud using a stand-alone, open-source analytical engine. Health risk scores were computed based on a deviation in heart rate and heart rate variability metrics from each individual's activity-matched baseline values, and scores exceeding a predefined threshold were checked for corresponding symptoms or illness reports. Conversely, reports of viral respiratory illnesses in health survey responses were also checked for corresponding changes in health risk scores to qualitatively assess the risk score as an indicator of acute respiratory health anomalies.

RESULTS

The median average percentage of sensor data provided per day indicating smartwatch wear compliance was 70%, and survey responses indicating health reporting compliance was 46%. A total of 29 elevated health risk scores were detected, of which 12 (41%) had concurrent survey data and indicated a health symptom or illness. A total of 21 influenza or COVID-19 illnesses were reported by study participants; 9 (43%) of these reports had concurrent smartwatch data, of which 6 (67%) had an increase in health risk score.

CONCLUSIONS

We demonstrate a protocol for data collection, extraction of heart rate and heart rate variability metrics, and prospective analysis that is compatible with near real-time health assessment using wearable sensors for continuous monitoring. The modular platform for data collection and analysis allows for a choice of different wearable sensors and algorithms. Here, we demonstrate its implementation in the collection of high-fidelity IBI data from Garmin Fenix 6 smartwatches worn by individuals in free-living conditions, and the prospective, near real-time analysis of the data, culminating in the calculation of health risk scores. To our knowledge, this study demonstrates for the first time the feasibility of measuring high-resolution heart IBI and step count using smartwatches in near real time for respiratory illness detection over a long-term monitoring period in free-living conditions.

摘要

背景

可穿戴生理监测设备是用于远程监测和早期发现潜在健康变化的有前景的工具。要在社区中广泛采用这种方法并长期应用,将需要一个自动化数据平台来收集、处理和分析相关健康信息。

目的

在本研究中,我们探索通过自动化数据收集、指标提取和健康异常分析流程,在自由生活条件下进行为期数月的连续监测,以对个体健康进行前瞻性监测,重点关注病毒性呼吸道感染,如流感或新冠病毒病。

方法

共有59名参与者在8个月的时间内每天提供智能手表数据以及健康症状和疾病报告。来自光电容积脉搏波描记术传感器的生理和活动数据,包括高分辨率心跳间期(IBI)和步数,直接从佳明Fenix 6智能手表上传,并使用一个独立的开源分析引擎在云端自动处理。根据心率和心率变异性指标相对于每个个体活动匹配基线值的偏差计算健康风险评分,并检查超过预定义阈值的评分是否有相应的症状或疾病报告。相反,健康调查回复中关于病毒性呼吸道疾病的报告也会检查其健康风险评分的相应变化,以定性评估风险评分作为急性呼吸道健康异常的指标。

结果

每天提供的表明智能手表佩戴依从性的传感器数据的平均百分比中位数为70%,表明健康报告依从性的调查回复为46%。共检测到29个升高的健康风险评分,其中12个(41%)有同期调查数据并表明有健康症状或疾病。研究参与者共报告了21例流感或新冠病毒病;这些报告中有9个(43%)有同期智能手表数据,其中6个(67%)的健康风险评分有所增加。

结论

我们展示了一种数据收集、心率和心率变异性指标提取以及前瞻性分析的方案,该方案与使用可穿戴传感器进行连续监测的近实时健康评估兼容。模块化的数据收集和分析平台允许选择不同的可穿戴传感器和算法。在此,我们展示了其在收集自由生活条件下个体佩戴的佳明Fenix 6智能手表的高保真IBI数据中的应用,以及对数据的前瞻性、近实时分析,最终计算出健康风险评分。据我们所知,本研究首次证明了在自由生活条件下的长期监测期间,使用智能手表近乎实时测量高分辨率心脏IBI和步数以检测呼吸道疾病的可行性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2e7f/11339560/abf5f4852eb4/formative_v8i1e53977_fig1.jpg

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