Population Digital Health: Continuous Health Monitoring and Profiling at Scale.

Naser Hossein Motlagh, Agustin Zuniga, Ngoc Thi Nguyen, Huber Flores, Jiangtao Wang, Sasu Tarkoma, Mattia Prosperi, Sumi Helal, Petteri Nurmi
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Abstract

Unlabelled: This paper introduces population digital health (PDH)-the use of digital health information sourced from health internet of things (IoT) and wearable devices for population health modeling-as an emerging research domain that offers an integrated approach for continuous monitoring and profiling of diseases and health conditions at multiple spatial resolutions. PDH combines health data sourced from health IoT devices, machine learning, and ubiquitous computing or networking infrastructure to increase the scale, coverage, equity, and cost-effectiveness of population health. This contrasts with the traditional population health approach, which relies on data from structured clinical records (eg, electronic health records) or health surveys. We present the overall PDH approach and highlight its key research challenges, provide solutions to key research challenges, and demonstrate the potential of PDH through three case studies that address (1) data inadequacy, (2) inaccuracy of the health IoT devices' sensor measurements, and (3) the spatiotemporal sparsity in the available digital health information. Finally, we discuss the conditions, prerequisites, and barriers for adopting PDH drawing on from real-world examples from different geographic regions.

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人口数字健康:大规模持续健康监测和分析。
无标签:本文介绍了人口数字健康(PDH)--将来自健康物联网(IoT)和可穿戴设备的数字健康信息用于人口健康建模--作为一个新兴的研究领域,它提供了一种在多种空间分辨率下对疾病和健康状况进行持续监测和剖析的综合方法。PDH 将来自健康物联网设备、机器学习和泛在计算或网络基础设施的健康数据结合起来,以提高人口健康的规模、覆盖率、公平性和成本效益。这与传统的人口健康方法形成鲜明对比,后者依赖于来自结构化临床记录(如电子健康记录)或健康调查的数据。我们介绍了总体人口健康方法,强调了其关键研究挑战,提供了关键研究挑战的解决方案,并通过三个案例研究展示了人口健康方法的潜力,这三个案例研究分别针对(1)数据不足;(2)健康物联网设备传感器测量的不准确性;以及(3)可用数字健康信息的时空稀疏性。最后,我们借鉴不同地区的实际案例,讨论了采用 PDH 的条件、先决条件和障碍。
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