Machine learning applications in the analysis of sedentary behavior and associated health risks.

IF 4.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Frontiers in Artificial Intelligence Pub Date : 2025-06-18 eCollection Date: 2025-01-01 DOI:10.3389/frai.2025.1538807
Ayat S Hammad, Ali Tajammul, Ismail Dergaa, Maha Al-Asmakh
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引用次数: 0

Abstract

Background: The rapid advancement of technology has brought numerous benefits to public health but has also contributed to a rise in sedentary lifestyles, linked to various health issues. As prolonged inactivity becomes a growing public health concern, researchers are increasingly utilizing machine learning (ML) techniques to examine and understand these patterns. ML offers powerful tools for analyzing large datasets and identifying trends in physical activity and inactivity, generating insights that can support effective interventions.

Objectives: This review aims to: (i) examine the role of ML in analyzing sedentary patterns, (ii) explore how different ML techniques can be optimized to improve the accuracy of predicting sedentary behavior, and (iii) assess strategies to enhance the effectiveness of ML algorithms.

Methods: A comprehensive search was conducted in PubMed and Scopus, targeting peer-reviewed articles published between 2004 and 2024. The search included the subject terms "sedentary behavior," "sedentary lifestyle health," and "machine learning sedentary lifestyle," combined with the keywords "physical inactivity" and "diseases" using Boolean operators (AND, OR). Articles were included if they addressed the health impacts of sedentary behavior or employed ML techniques for its analysis. Exclusion criteria involved studies older than 20 years or lacking direct relevance. After screening 33 core articles and identifying 13 more through citation tracking, 46 articles were included in the final review.

Results: This narrative review describes the characteristics of sedentary behavior, associated health risks, and the applications of ML in this context. Based on the reviewed literature, sedentary behavior was consistently associated with cardiovascular disease, metabolic disorders, and mental health conditions. The review highlights the utility of various ML approaches in classifying activity levels and significantly improving the prediction of sedentary behavior, offering a promising approach to address this widespread health issue.

Conclusion: ML algorithms, including supervised and unsupervised models, show great potential in accurately detecting and predicting sedentary behavior. When integrated with wearable sensor data and validated in real-world settings, these models can enhance the scalability and precision of AI-driven interventions. Such advancements support personalized health strategies and could help lower healthcare costs linked to physical inactivity, ultimately improving public health outcomes.

机器学习在久坐行为及相关健康风险分析中的应用。
背景:技术的快速进步给公众健康带来了许多好处,但也导致久坐不动的生活方式增加,与各种健康问题有关。随着长期不活动成为日益严重的公共卫生问题,研究人员越来越多地利用机器学习(ML)技术来检查和理解这些模式。ML为分析大型数据集和识别身体活动和不活动的趋势提供了强大的工具,从而产生可以支持有效干预的见解。目的:本综述旨在:(i)研究机器学习在分析久坐模式中的作用,(ii)探索如何优化不同的机器学习技术以提高预测久坐行为的准确性,以及(iii)评估提高机器学习算法有效性的策略。方法:在PubMed和Scopus中进行综合检索,针对2004年至2024年间发表的同行评议文章。搜索的主题包括“久坐行为”、“久坐生活方式健康”和“机器学习久坐生活方式”,并使用布尔运算符(and, OR)将关键词“缺乏运动”和“疾病”结合起来。如果文章涉及久坐行为对健康的影响或采用ML技术进行分析,则纳入。排除标准包括年龄超过20 年或缺乏直接相关性的研究。在对33篇核心文章进行筛选,并通过引文跟踪确定13篇核心文章后,46篇文章被纳入最终评审。结果:这篇叙述性综述描述了久坐行为的特征、相关的健康风险,以及ML在这方面的应用。根据文献综述,久坐行为一直与心血管疾病、代谢紊乱和精神健康状况有关。该综述强调了各种机器学习方法在分类活动水平和显著改善久坐行为预测方面的效用,为解决这一广泛存在的健康问题提供了一种有希望的方法。结论:机器学习算法,包括监督和无监督模型,在准确检测和预测久坐行为方面显示出巨大的潜力。当与可穿戴传感器数据集成并在实际环境中进行验证时,这些模型可以提高人工智能驱动干预措施的可扩展性和精度。这些进步支持个性化的健康策略,并有助于降低与缺乏运动相关的医疗成本,最终改善公共健康结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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