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自我管理移动健康应用程序的功能和技术方面:系统的应用程序搜索与文献综述

Functional and Technical Aspects of Self-management mHealth Apps: Systematic App Search and Literature Review.

作者信息

Alwakeel Lyan, Lano Kevin

机构信息

Department of Informatics, King's College London, London, United Kingdom.

College of Computers & Information Technology, University of Tabuk, Tabuk, Saudi Arabia.

出版信息

JMIR Hum Factors. 2022 May 25;9(2):e29767. doi: 10.2196/29767.

Abstract

BACKGROUND

Although the past decade has witnessed the development of many self-management mobile health (mHealth) apps that enable users to monitor their health and activities independently, there is a general lack of empirical evidence on the functional and technical aspects of self-management mHealth apps from a software engineering perspective.

OBJECTIVE

This study aims to systematically identify the characteristics and challenges of self-management mHealth apps, focusing on functionalities, design, development, and evaluation methods, as well as to specify the differences and similarities between published research papers and commercial and open-source apps.

METHODS

This research was divided into 3 main phases to achieve the expected goal. The first phase involved reviewing peer-reviewed academic research papers from 7 digital libraries, and the second phase involved reviewing and evaluating apps available on Android and iOS app stores using the Mobile Application Rating Scale. Finally, the third phase involved analyzing and evaluating open-source apps from GitHub.

RESULTS

In total, 52 research papers, 42 app store apps, and 24 open-source apps were analyzed, synthesized, and reported. We found that the development of self-management mHealth apps requires significant time, effort, and cost because of their complexity and specific requirements, such as the use of machine learning algorithms, external services, and built-in technologies. In general, self-management mHealth apps are similar in their focus, user interface components, navigation and structure, services and technologies, authentication features, and architecture and patterns. However, they differ in terms of the use of machine learning, processing techniques, key functionalities, inference of machine learning knowledge, logging mechanisms, evaluation techniques, and challenges.

CONCLUSIONS

Self-management mHealth apps may offer an essential means of managing users' health, expecting to assist users in continuously monitoring their health and encourage them to adopt healthy habits. However, developing an efficient and intelligent self-management mHealth app with the ability to reduce resource consumption and processing time, as well as increase performance, is still under research and development. In addition, there is a need to find an automated process for evaluating and selecting suitable machine learning algorithms for the self-management of mHealth apps. We believe that these issues can be avoided or significantly reduced by using a model-driven engineering approach with a decision support system to accelerate and ameliorate the development process and quality of self-management mHealth apps.

摘要

背景

尽管在过去十年中,许多自我管理移动健康(mHealth)应用程序得到了发展,使用户能够独立监测自己的健康状况和活动,但从软件工程的角度来看,关于自我管理mHealth应用程序的功能和技术方面,普遍缺乏实证证据。

目的

本研究旨在系统地识别自我管理mHealth应用程序的特征和挑战,重点关注功能、设计、开发和评估方法,以及明确已发表的研究论文与商业和开源应用程序之间的异同。

方法

本研究分为3个主要阶段以实现预期目标。第一阶段包括从7个数字图书馆中检索同行评审的学术研究论文,第二阶段包括使用移动应用程序评分量表对安卓和iOS应用商店中的应用程序进行评审和评估。最后,第三阶段包括对来自GitHub的开源应用程序进行分析和评估。

结果

总共分析、综合并报告了52篇研究论文、42个应用商店应用程序和24个开源应用程序。我们发现,由于自我管理mHealth应用程序的复杂性和特定要求,如使用机器学习算法、外部服务和内置技术,其开发需要大量的时间、精力和成本。总体而言,自我管理mHealth应用程序在重点、用户界面组件、导航和结构、服务和技术、认证功能以及架构和模式方面相似。然而,它们在机器学习的使用、处理技术、关键功能、机器学习知识的推理、日志记录机制、评估技术和挑战方面存在差异。

结论

自我管理mHealth应用程序可能提供一种管理用户健康的重要手段,有望帮助用户持续监测自己的健康状况,并鼓励他们养成健康的习惯。然而,开发一个高效、智能的自我管理mHealth应用程序,使其能够减少资源消耗和处理时间,并提高性能,仍在研发之中。此外,需要找到一个自动化流程,用于评估和选择适合mHealth应用程序自我管理的机器学习算法。我们相信,通过使用带有决策支持系统的模型驱动工程方法来加速和改善自我管理mHealth应用程序的开发过程和质量,可以避免或显著减少这些问题。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/22ff/9178446/71c3e124bd51/humanfactors_v9i2e29767_fig1.jpg

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