A Comprehensive Picture of Factors Affecting User Willingness to Use Mobile Health Applications

Shaojing Fan, Ramesh C. Jain, Mohan S. Kankanhalli
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Abstract

Mobile health (mHealth) applications have become increasingly valuable in preventive healthcare and in reducing the burden on healthcare organizations. The aim of this paper is to investigate the factors that influence user acceptance of mHealth apps and identify the underlying structure that shapes users’ behavioral intention. An online study that employed factorial survey design with vignettes was conducted, and a total of 1,669 participants from eight countries across four continents were included in the study. Structural equation modeling was employed to quantitatively assess how various factors collectively contribute to users’ willingness to use mHealth apps. The results indicate that users’ digital literacy has the strongest impact on their willingness to use them, followed by their online habit of sharing personal information. Users’ concerns about personal privacy only had a weak impact. Furthermore, users’ demographic background, such as their country of residence, age, ethnicity, and education, has a significant moderating effect. Our findings have implications for app designers, healthcare practitioners, and policymakers. Efforts are needed to regulate data collection and sharing and promote digital literacy among the general population to facilitate the widespread adoption of mHealth apps.
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影响用户使用移动健康应用程序意愿的因素的综合图片
移动医疗(mHealth)应用程序在预防性医疗保健和减轻医疗保健组织负担方面变得越来越有价值。本文的目的是调查影响用户接受移动健康应用程序的因素,并确定塑造用户行为意图的底层结构。采用因子调查设计和小插图进行了一项在线研究,来自四大洲八个国家的1,669名参与者被纳入研究。结构方程模型用于定量评估各种因素如何共同影响用户使用移动健康应用程序的意愿。结果表明,用户的数字素养对其使用意愿的影响最大,其次是他们分享个人信息的在线习惯。用户对个人隐私的担忧只产生了微弱的影响。此外,用户的人口统计背景,如他们的居住国、年龄、种族和教育程度,具有显著的调节作用。我们的研究结果对应用程序设计师、医疗从业者和政策制定者具有启示意义。需要努力规范数据收集和共享,并促进普通民众的数字素养,以促进移动健康应用程序的广泛采用。
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