Modular Open-Core System for Collection and Near Real-Time Processing of High-Resolution Data from Wearable Sensors

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Dorota S. Temple, M. Hegarty-Craver, Pooja Gaur, Matthew D. Boyce, Jonathan R. Holt, Edward A. Preble, Randall E. Eckhoff, H. Davis-Wilson, Howard J. Walls, David E. Dausch, M. Blackston
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Abstract

Wearable devices, such as smartwatches integrating heart rate and activity sensors, have the potential to transform health monitoring by enabling continuous, near real-time data collection and analytics. In this paper, we present a novel modular architecture for collecting and end-to-end processing of high-resolution signals from wearable sensors. The system obtains minimally processed data directly from the smartwatch and further processes and analyzes the data stream without transmitting it to the device vendor cloud. The standalone operation is made possible by a software stack that provides data cleaning, extraction of physiological metrics, and standardization of the metrics to enable person-to-person and rest-to-activity comparisons. To illustrate the operation of the system, we present examples of datasets from volunteers wearing Garmin Fenix smartwatches for several weeks in free-living conditions. As collected, the datasets contain time series of each interbeat interval and the respiration rate, blood oxygen saturation, and step count every 1 min. From the high-resolution datasets, we extract heart rate variability metrics, which are a source of information about the heart’s response to external stressors. These biomarkers can be used for the early detection of a range of diseases and the assessment of physical and mental performance of the individual. The data collection and analytics system has the potential to broaden the use of smartwatches in continuous near to real-time monitoring of health and well-being.
用于收集和近实时处理可穿戴传感器高分辨率数据的模块化开放式核心系统
可穿戴设备,如集成心率和活动传感器的智能手表,有可能通过实现连续、近乎实时的数据收集和分析来改变健康监测。在本文中,我们提出了一种新的模块化架构,用于收集和端到端处理来自可穿戴传感器的高分辨率信号。该系统直接从智能手表获得最低限度处理的数据,并进一步处理和分析数据流,而无需将其传输到设备供应商云。独立操作是通过软件堆栈实现的,该软件堆栈提供数据清理、生理指标提取和指标标准化,以实现人与人以及休息与活动的比较。为了说明该系统的操作,我们展示了志愿者在自由生活条件下佩戴Garmin Fenix智能手表数周的数据集示例。收集到的数据集包含每个间隔的时间序列以及每1分钟的呼吸频率、血氧饱和度和步数。从高分辨率数据集中,我们提取心率变异性指标,这是心脏对外部压力源反应的信息来源。这些生物标志物可用于一系列疾病的早期检测和个人身心表现的评估。该数据收集和分析系统有可能扩大智能手表在持续近实时监测健康和福祉方面的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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