在促进体育锻炼的移动健康干预中个性化说服策略的机器学习方法:范围审查和分类概述》。

IF 5.8 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Journal of Medical Internet Research Pub Date : 2024-11-15 DOI:10.2196/47774
Annette Brons, Shihan Wang, Bart Visser, Ben Kröse, Sander Bakkes, Remco Veltkamp
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引用次数: 0

摘要

背景:虽然体力活动(PA)对健康和幸福有积极影响,但缺乏体力活动却是一个世界性问题。移动健康干预已被证明能有效促进体育锻炼。个性化说服策略可提高干预的成功率,并可通过机器学习(ML)进行。对于锻炼,一些研究在不使用 ML 的情况下讨论了个性化说服策略,而另一些研究则在不关注说服策略的情况下使用 ML 进行了个性化。关于在促进 PA 的干预措施中使用 ML 对说服策略进行个性化设计的研究综述以及相应的分类,可能有助于今后设计此类干预措施,但目前仍缺乏此类综述:首先,我们旨在概述在促进 PA 的移动健康干预中个性化说服策略的 ML 技术。此外,我们还旨在提供一个分类概述,作为在该领域应用 ML 技术的起点:方法:根据 Arksey 和 O'Malley 提出的框架以及 PRISMA-ScR(系统综述和 Meta 分析首选报告项目扩展用于范围界定综述)标准进行了范围界定综述。我们在 Scopus、Web of Science 和 PubMed 上搜索了在促进 PA 的干预措施中包含 ML 个性化说服策略的研究。使用 ASReview 软件对论文进行筛选。我们从收录的论文中提取了有关一般研究信息、目标群体、PA 干预、实施技术和研究细节的数据,并按其所属的研究项目进行了分类。在对这些数据进行分析的基础上,我们给出了分类概述:共收录了属于 27 个不同项目的 40 篇论文。这些论文可根据其个性化维度分为 4 组。然后,针对每个维度,找到 1 或 2 个说服策略类别以及一种 ML 类型。综上所述,该分类包括 3 个层次:个性化维度、说服策略和 ML 类型。在个性化信息发布时间方面,大多数项目通过强化学习来个性化提醒信息的发布时间,通过监督学习(SL)来个性化反馈、监控和目标设定信息的发布时间。在信息内容方面,大多数项目都采用了监督学习(SL)来个性化心理咨询建议、反馈或教育信息。在个性化 PA 建议方面,SL 可以单独使用,也可以与推荐系统结合使用。最后,强化学习大多用于个性化反馈信息的类型:对所有已实施的说服策略及其相应的 ML 方法的概述,对这一跨学科领域具有深刻的启发意义。此外,它还提供了一个分类概览,为设计和开发个性化说服策略以促进PA提供了启示。在未来的论文中,该分类概述可能会扩展到更多层次,以指定 ML 方法或个性化和说服策略的其他维度。
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Machine Learning Methods to Personalize Persuasive Strategies in mHealth Interventions That Promote Physical Activity: Scoping Review and Categorization Overview.

Background: Although physical activity (PA) has positive effects on health and well-being, physical inactivity is a worldwide problem. Mobile health interventions have been shown to be effective in promoting PA. Personalizing persuasive strategies improves intervention success and can be conducted using machine learning (ML). For PA, several studies have addressed personalized persuasive strategies without ML, whereas others have included personalization using ML without focusing on persuasive strategies. An overview of studies discussing ML to personalize persuasive strategies in PA-promoting interventions and corresponding categorizations could be helpful for such interventions to be designed in the future but is still missing.

Objective: First, we aimed to provide an overview of implemented ML techniques to personalize persuasive strategies in mobile health interventions promoting PA. Moreover, we aimed to present a categorization overview as a starting point for applying ML techniques in this field.

Methods: A scoping review was conducted based on the framework by Arksey and O'Malley and the PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta-Analyses extension for Scoping Reviews) criteria. Scopus, Web of Science, and PubMed were searched for studies that included ML to personalize persuasive strategies in interventions promoting PA. Papers were screened using the ASReview software. From the included papers, categorized by the research project they belonged to, we extracted data regarding general study information, target group, PA intervention, implemented technology, and study details. On the basis of the analysis of these data, a categorization overview was given.

Results: In total, 40 papers belonging to 27 different projects were included. These papers could be categorized in 4 groups based on their dimension of personalization. Then, for each dimension, 1 or 2 persuasive strategy categories were found together with a type of ML. The overview resulted in a categorization consisting of 3 levels: dimension of personalization, persuasive strategy, and type of ML. When personalizing the timing of the messages, most projects implemented reinforcement learning to personalize the timing of reminders and supervised learning (SL) to personalize the timing of feedback, monitoring, and goal-setting messages. Regarding the content of the messages, most projects implemented SL to personalize PA suggestions and feedback or educational messages. For personalizing PA suggestions, SL can be implemented either alone or combined with a recommender system. Finally, reinforcement learning was mostly used to personalize the type of feedback messages.

Conclusions: The overview of all implemented persuasive strategies and their corresponding ML methods is insightful for this interdisciplinary field. Moreover, it led to a categorization overview that provides insights into the design and development of personalized persuasive strategies to promote PA. In future papers, the categorization overview might be expanded with additional layers to specify ML methods or additional dimensions of personalization and persuasive strategies.

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来源期刊
CiteScore
14.40
自引率
5.40%
发文量
654
审稿时长
1 months
期刊介绍: The Journal of Medical Internet Research (JMIR) is a highly respected publication in the field of health informatics and health services. With a founding date in 1999, JMIR has been a pioneer in the field for over two decades. As a leader in the industry, the journal focuses on digital health, data science, health informatics, and emerging technologies for health, medicine, and biomedical research. It is recognized as a top publication in these disciplines, ranking in the first quartile (Q1) by Impact Factor. Notably, JMIR holds the prestigious position of being ranked #1 on Google Scholar within the "Medical Informatics" discipline.
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