Suppr超能文献

游戏化的原型:移动健康应用分析。

Archetypes of Gamification: Analysis of mHealth Apps.

机构信息

Department of Economics and Management, Karlsruhe Institute of Technology, Karlsruhe, Germany.

Gamification Group, Faculty of Information Technology and Communication Sciences, Tampere University, Tampere, Finland.

出版信息

JMIR Mhealth Uhealth. 2020 Oct 19;8(10):e19280. doi: 10.2196/19280.

Abstract

BACKGROUND

Nowadays, numerous health-related mobile apps implement gamification in an attempt to draw on the motivational potential of video games and thereby increase user engagement or foster certain health behaviors. However, research on effective gamification is still in its infancy and researchers increasingly recognize methodological shortcomings of existing studies. What we actually know about the phenomenon today stems from fragmented pieces of knowledge, and a variety of different perspectives. Existing research primarily draws on conceptual knowledge that is gained from research prototypes, and isolated from industry best practices. We still lack knowledge on how gamification has been successfully designed and implemented within the industry and whether certain gamification approaches have shown to be particularly suitable for certain health behaviors.

OBJECTIVE

We address this lack of knowledge concerning best practices in the design and implementation of gamification for health-related mobile apps by identifying archetypes of gamification approaches that have emerged in pertinent health-related mobile apps and analyzing to what extent those gamification approaches are influenced by the underlying desired health-related outcomes.

METHODS

A 3-step research approach is employed. As a first step, a database of 143 pertinent gamified health-related mobile apps from the Apple App Store and Google Play Store is set up. Second, the gamification approach of each app within the database is classified based on an established taxonomy for gamification in health-related apps. Finally, a 2-step cluster analysis is conducted in order to identify archetypes of the most dominant gamification approaches in pertinent gamified health-related mobile apps.

RESULTS

Eight archetypes of gamification emerged from the analysis of health-related mobile apps: (1) competition and collaboration, (2) pursuing self-set goals without rewards, (3) episodical compliance tracking, (4) inherent gamification for external goals, (5) internal rewards for self-set goals, (6) continuous assistance through positive reinforcement, (7) positive and negative reinforcement without rewards, and (8) progressive gamification for health professionals. The results indicate a close relationship between the identified archetypes and the actual health behavior that is being targeted.

CONCLUSIONS

By unveiling salient best practices and discussing their relationship to targeted health behaviors, this study contributes to a more profound understanding of gamification in mobile health. The results can serve as a foundation for future research that advances the knowledge on how gamification may positively influence health behavior change and guide practitioners in the design and development of highly motivating and effective health-related mobile health apps.

摘要

背景

如今,许多与健康相关的移动应用程序都在尝试采用游戏化,以利用视频游戏的激励潜力,从而提高用户参与度或培养某些健康行为。然而,有效的游戏化研究仍处于起步阶段,研究人员越来越认识到现有研究方法的缺陷。目前我们对这一现象的了解源于零散的知识片段,以及各种不同的视角。现有研究主要基于从研究原型中获得的概念知识,而与行业最佳实践相隔离。我们仍然缺乏关于游戏化在行业中是如何成功设计和实施的知识,以及某些游戏化方法是否对某些健康行为特别适用。

目的

我们通过确定在相关健康相关移动应用程序中出现的游戏化方法的原型,并分析这些游戏化方法在多大程度上受到潜在健康相关结果的影响,来解决关于健康相关移动应用程序游戏化设计和实施的最佳实践知识的缺乏问题。

方法

采用三步研究方法。首先,建立了一个来自苹果应用商店和谷歌应用商店的 143 个相关游戏化健康相关移动应用程序的数据库。其次,根据为健康相关应用程序制定的游戏化分类法,对数据库中每个应用程序的游戏化方法进行分类。最后,进行两步聚类分析,以确定相关游戏化健康相关移动应用程序中最主要的游戏化方法原型。

结果

从对健康相关移动应用程序的分析中得出了八种游戏化原型:(1)竞争与合作,(2)无奖励的自我设定目标追求,(3)阶段性合规跟踪,(4)外部目标的固有游戏化,(5)自我设定目标的内部奖励,(6)通过积极强化持续提供帮助,(7)无奖励的正负强化,以及(8)为健康专业人员逐步游戏化。结果表明,所确定的原型与实际目标健康行为之间存在密切关系。

结论

通过揭示突出的最佳实践,并讨论它们与目标健康行为的关系,本研究为更深入地了解移动健康中的游戏化做出了贡献。研究结果可以作为未来研究的基础,该研究可以推进关于游戏化如何积极影响健康行为改变的知识,并为实践者在设计和开发高激励性和有效的健康相关移动健康应用程序方面提供指导。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/26ad/7605978/9a2b76f27ba6/mhealth_v8i10e19280_fig1.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验