Smartphone Global Positioning System-Based System to Assess Mobility in Health Research: Development, Accuracy, and Usability Study.

Q2 Medicine
Robert P Spang, Christine Haeger, Sandra A Mümken, Max Brauer, Jan-Niklas Voigt-Antons, Paul Gellert
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引用次数: 0

Abstract

Background: As global positioning system (GPS) measurement is getting more precise and affordable, health researchers can now objectively measure mobility using GPS sensors. Available systems, however, often lack data security and means of adaptation and often rely on a permanent internet connection.

Objective: To overcome these issues, we aimed to develop and test an easy-to-use, easy-to-adapt, and offline working app using smartphone sensors (GPS and accelerometry) for the quantification of mobility parameters.

Methods: An Android app, a server backend, and a specialized analysis pipeline have been developed (development substudy). Parameters of mobility by the study team members were extracted from the recorded GPS data using existing and newly developed algorithms. Test measurements were performed with participants to complete accuracy and reliability tests (accuracy substudy). Usability was examined by interviewing community-dwelling older adults after 1 week of device use, followed by an iterative app design process (usability substudy).

Results: The study protocol and the software toolchain worked reliably and accurately, even under suboptimal conditions, such as narrow streets and rural areas. The developed algorithms had high accuracy (97.4% correctness, F1-score=0.975) in distinguishing dwelling periods from moving intervals. The accuracy of the stop/trip classification is fundamental to second-order analyses such as the time out of home, as they rely on a precise discrimination between the 2 classes. The usability of the app and the study protocol was piloted with older adults, which showed low barriers and easy implementation into daily routines.

Conclusions: Based on accuracy analyses and users' experience with the proposed system for GPS assessments, the developed algorithm showed great potential for app-based estimation of mobility in diverse health research contexts, including mobility patterns of community-dwelling older adults living in rural areas.

International registered report identifier (irrid): RR2-10.1186/s12877-021-02739-0.

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基于智能手机全球定位系统评估健康研究中的移动性:发展、准确性和可用性研究。
背景:随着全球定位系统(GPS)测量变得越来越精确和负担得起,卫生研究人员现在可以使用GPS传感器客观地测量移动性。然而,现有的系统往往缺乏数据安全性和适应手段,而且往往依赖于永久的互联网连接。为了克服这些问题,我们的目标是开发和测试一个易于使用、易于适应、离线工作的应用程序,使用智能手机传感器(GPS和加速度计)来量化移动参数。方法:开发了一个Android应用程序、一个服务器后端和一个专门的分析管道(开发子研究)。利用现有和新开发的算法从记录的GPS数据中提取研究小组成员的移动参数。对参与者进行测试测量以完成准确性和可靠性测试(准确性子研究)。在设备使用1周后,通过采访社区居住的老年人来检查可用性,随后是一个迭代的应用程序设计过程(可用性子研究)。结果:研究方案和软件工具链工作可靠,准确,即使在次优条件下,如狭窄的街道和农村地区。所开发的算法在区分居住周期和移动间隔方面准确率较高(97.4%,F1-score=0.975)。停车/旅行分类的准确性是二阶分析(如外出时间)的基础,因为它们依赖于两类之间的精确区分。该应用程序和研究方案的可用性在老年人中进行了试点,显示出低障碍和易于实施到日常生活中。结论:基于准确性分析和用户对GPS评估系统的体验,开发的算法显示出在不同健康研究背景下基于应用程序的流动性估计的巨大潜力,包括生活在农村地区社区居住的老年人的流动性模式。国际注册报告标识符(irrid): RR2-10.1186/s12877-021-02739-0。
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
CiteScore
4.20
自引率
0.00%
发文量
31
审稿时长
12 weeks
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