A scoping review of methodologies for applying artificial intelligence to physical activity interventions.

IF 9.7 1区 医学 Q1 HOSPITALITY, LEISURE, SPORT & TOURISM
Journal of Sport and Health Science Pub Date : 2024-05-01 Epub Date: 2023-09-29 DOI:10.1016/j.jshs.2023.09.010
Ruopeng An, Jing Shen, Junjie Wang, Yuyi Yang
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引用次数: 0

Abstract

Purpose: This scoping review aimed to offer researchers and practitioners an understanding of artificial intelligence (AI) applications in physical activity (PA) interventions; introduce them to prevalent machine learning (ML), deep learning (DL), and reinforcement learning (RL) algorithms; and encourage the adoption of AI methodologies.

Methods: A scoping review was performed in PubMed, Web of Science, Cochrane Library, and EBSCO focusing on AI applications for promoting PA or predicting related behavioral or health outcomes. AI methodologies were summarized and categorized to identify synergies, patterns, and trends informing future research. Additionally, a concise primer on predominant AI methodologies within the realm of PA was provided to bolster understanding and broader application.

Results: The review included 24 studies that met the predetermined eligibility criteria. AI models were found effective in detecting significant patterns of PA behavior and associations between specific factors and intervention outcomes. Most studies comparing AI models to traditional statistical approaches reported higher prediction accuracy for AI models on test data. Comparisons of different AI models yielded mixed results, likely due to model performance being highly dependent on the dataset and task. An increasing trend of adopting state-of-the-art DL and RL models over standard ML was observed, addressing complex human-machine communication, behavior modification, and decision-making tasks. Six key areas for future AI adoption in PA interventions emerged: personalized PA interventions, real-time monitoring and adaptation, integration of multimodal data sources, evaluation of intervention effectiveness, expanding access to PA interventions, and predicting and preventing injuries.

Conclusion: The scoping review highlights the potential of AI methodologies for advancing PA interventions. As the field progresses, staying informed and exploring emerging AI-driven strategies is essential for achieving significant improvements in PA interventions and fostering overall well-being.

Abstract Image

将人工智能应用于体育活动干预方法的范围审查。
背景:这篇范围界定综述旨在让研究人员和从业者了解人工智能在体育活动干预中的应用;向他们介绍流行的机器学习(ML)、深度学习(DL)和强化学习(RL)算法;并鼓励采用人工智能方法。方法:在PubMed、Web of Science、Cochrane Library和EBSCO上进行范围界定审查,重点关注人工智能在促进PA或预测相关行为或健康结果方面的应用。对人工智能方法进行了总结和分类,以确定协同作用、模式和趋势,为未来的研究提供信息。此外,还提供了一本关于PA领域内主要人工智能方法的简明入门书,以促进理解和更广泛的应用。结果:该综述包括24项符合预定资格标准的研究。人工智能模型在检测PA行为的显著模式以及特定因素与干预结果之间的关联方面被发现是有效的。大多数将人工智能模型与传统统计方法进行比较的研究报告称,人工智能模型对测试数据的预测精度更高。不同人工智能模型的比较结果喜忧参半,可能是因为模型性能高度依赖于数据集和任务。与标准ML相比,采用最先进的DL和RL模型的趋势越来越大,涉及复杂的人机交流、行为修改和决策任务。未来人工智能在PA干预中应用的六个关键领域出现了:个性化PA干预、实时监测和适应、多模式数据源的集成、干预效果的评估、扩大PA干预的使用范围以及预测和预防伤害。结论:范围界定审查强调了人工智能方法在推进PA干预方面的潜力。随着该领域的进展,保持知情和探索新兴的人工智能驱动策略对于显著改善PA干预和促进整体福祉至关重要。
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来源期刊
CiteScore
18.30
自引率
1.70%
发文量
101
审稿时长
22 weeks
期刊介绍: The Journal of Sport and Health Science (JSHS) is an international, multidisciplinary journal that aims to advance the fields of sport, exercise, physical activity, and health sciences. Published by Elsevier B.V. on behalf of Shanghai University of Sport, JSHS is dedicated to promoting original and impactful research, as well as topical reviews, editorials, opinions, and commentary papers. With a focus on physical and mental health, injury and disease prevention, traditional Chinese exercise, and human performance, JSHS offers a platform for scholars and researchers to share their findings and contribute to the advancement of these fields. Our journal is peer-reviewed, ensuring that all published works meet the highest academic standards. Supported by a carefully selected international editorial board, JSHS upholds impeccable integrity and provides an efficient publication platform. We invite submissions from scholars and researchers worldwide, and we are committed to disseminating insightful and influential research in the field of sport and health science.
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