人工智能驱动的增加体育锻炼数字解决方案中的人为因素:范围审查。

IF 2.6 Q2 HEALTH CARE SCIENCES & SERVICES
JMIR Human Factors Pub Date : 2024-07-03 DOI:10.2196/55964
Elia Gabarron, Dillys Larbi, Octavio Rivera-Romero, Kerstin Denecke
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引用次数: 0

摘要

背景:人工智能(AI)具有加强体育锻炼(PA)干预的潜力。然而,人为因素(HFs)在将人工智能成功融入移动医疗(mHealth)解决方案以促进体育锻炼方面发挥着关键作用。了解并优化个人与人工智能驱动的移动医疗应用程序之间的互动对于实现预期结果至关重要:本研究旨在回顾和描述有关人工智能驱动的数字解决方案中的高频因素的现有证据,以增加 PA.方法:我们在 3 个数据库(PubMed、Embase 和 IEEE Xplore)和 Google Scholar 中搜索了标题和摘要中包含 PA、HFs 和 AI 相关术语的出版物,从而进行了范围界定审查。如果研究是描述了旨在增加 PA 的基于人工智能的解决方案的主要研究,并且报告了该解决方案的测试结果,则纳入该研究。不符合这些标准的研究将被排除在外。此外,我们还在收录文章的参考文献中搜索了相关研究。我们从纳入的研究中提取了以下数据,并将其纳入定性综述:书目信息、研究特点、人群、干预措施、比较、结果以及人工智能相关信息。采用 GRADE(建议评估、发展和评价分级)对纳入研究的证据确定性进行评估:本综述共纳入了 2015 年至 2023 年间发表的 15 项研究,涉及 899 名年龄约在 19 岁至 84 岁之间的参与者,其中 60.7% (546/899)为女性参与者。在纳入的研究中,干预措施持续了 2 至 26 周。在针对 PA 的数字解决方案中,推荐系统是最常用的人工智能技术(10/15 项研究),其次是对话代理(4/15 项研究)。用户接受度和满意度是最常被评估的高频因素(各为 5/15 项研究),其次是可用性(4/15 项研究)。关于用于个性化和推荐的自动数据收集,大多数系统涉及健身追踪器(5/15 项研究)。证据分析的确定性表明,人工智能驱动的数字技术在增加运动量(如步数、步行距离或运动时间)方面的有效性具有中等确定性。此外,人工智能驱动的技术,尤其是推荐系统,似乎对PA行为的改变有积极影响,尽管证据的确定性很低:目前的研究突显了人工智能驱动的技术在加强PA方面的潜力,尽管证据仍然有限。有必要进行长期研究,以评估人工智能驱动技术对行为改变和习惯养成的持续影响。虽然人工智能驱动的PA数字解决方案前景广阔,但进一步探索优化人工智能对PA的影响以及有效整合人工智能和高频技术对于实现更广泛的效益至关重要。因此,对创新管理的影响包括开展长期研究、优先考虑多样性、确保研究质量、关注用户体验以及了解人工智能在促进 PA 方面不断演变的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Factors in AI-Driven Digital Solutions for Increasing Physical Activity: Scoping Review.

Background: Artificial intelligence (AI) has the potential to enhance physical activity (PA) interventions. However, human factors (HFs) play a pivotal role in the successful integration of AI into mobile health (mHealth) solutions for promoting PA. Understanding and optimizing the interaction between individuals and AI-driven mHealth apps is essential for achieving the desired outcomes.

Objective: This study aims to review and describe the current evidence on the HFs in AI-driven digital solutions for increasing PA.

Methods: We conducted a scoping review by searching for publications containing terms related to PA, HFs, and AI in the titles and abstracts across 3 databases-PubMed, Embase, and IEEE Xplore-and Google Scholar. Studies were included if they were primary studies describing an AI-based solution aimed at increasing PA, and results from testing the solution were reported. Studies that did not meet these criteria were excluded. Additionally, we searched the references in the included articles for relevant research. The following data were extracted from included studies and incorporated into a qualitative synthesis: bibliographic information, study characteristics, population, intervention, comparison, outcomes, and AI-related information. The certainty of the evidence in the included studies was evaluated using GRADE (Grading of Recommendations Assessment, Development, and Evaluation).

Results: A total of 15 studies published between 2015 and 2023 involving 899 participants aged approximately between 19 and 84 years, 60.7% (546/899) of whom were female participants, were included in this review. The interventions lasted between 2 and 26 weeks in the included studies. Recommender systems were the most commonly used AI technology in digital solutions for PA (10/15 studies), followed by conversational agents (4/15 studies). User acceptability and satisfaction were the HFs most frequently evaluated (5/15 studies each), followed by usability (4/15 studies). Regarding automated data collection for personalization and recommendation, most systems involved fitness trackers (5/15 studies). The certainty of the evidence analysis indicates moderate certainty of the effectiveness of AI-driven digital technologies in increasing PA (eg, number of steps, distance walked, or time spent on PA). Furthermore, AI-driven technology, particularly recommender systems, seems to positively influence changes in PA behavior, although with very low certainty evidence.

Conclusions: Current research highlights the potential of AI-driven technologies to enhance PA, though the evidence remains limited. Longer-term studies are necessary to assess the sustained impact of AI-driven technologies on behavior change and habit formation. While AI-driven digital solutions for PA hold significant promise, further exploration into optimizing AI's impact on PA and effectively integrating AI and HFs is crucial for broader benefits. Thus, the implications for innovation management involve conducting long-term studies, prioritizing diversity, ensuring research quality, focusing on user experience, and understanding the evolving role of AI in PA promotion.

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来源期刊
JMIR Human Factors
JMIR Human Factors Medicine-Health Informatics
CiteScore
3.40
自引率
3.70%
发文量
123
审稿时长
12 weeks
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