The Role of Artificial Intelligence in Obesity Risk Prediction and Management: Approaches, Insights, and Recommendations.

IF 2.4 4区 医学 Q1 MEDICINE, GENERAL & INTERNAL Medicina-Lithuania Pub Date : 2025-02-19 DOI:10.3390/medicina61020358
Lillian Huang, Ellen N Huhulea, Elizabeth Abraham, Raphael Bienenstock, Esewi Aifuwa, Rahim Hirani, Atara Schulhof, Raj K Tiwari, Mill Etienne
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Abstract

Greater than 650 million individuals worldwide are categorized as obese, which is associated with significant health, economic, and social challenges. Given its overlap with leading comorbidities such as heart disease, innovative solutions are necessary to improve risk prediction and management strategies. In recent years, artificial intelligence (AI) and machine learning (ML) have emerged as powerful tools in healthcare, offering novel approaches to chronic disease prevention. This narrative review explores the role of AI/ML in obesity risk prediction and management, with a special focus on childhood obesity. We begin by examining the multifactorial nature of obesity, including genetic, behavioral, and environmental factors, and the limitations of traditional approaches to predict and treat morbidity associated obesity. Next, we analyze AI/ML techniques commonly used to predict obesity risk, particularly in minimizing childhood obesity risk. We shift to the application of AI/ML in obesity management, comparing perspectives from healthcare providers versus patients. From the provider's perspective, AI/ML tools offer real-time data from electronic medical records, wearables, and health apps to stratify patient risk, customize treatment plans, and enhance clinical decision making. From the patient's perspective, AI/ML-driven interventions offer personalized coaching and improve long-term engagement in health management. Finally, we address key limitations and challenges, such as the role of social determinants of health, in embracing the role of AI/ML in obesity management, while offering our recommendations based on our literature review.

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人工智能在肥胖风险预测和管理中的作用:方法、见解和建议。
全世界有超过6.5亿人被归类为肥胖,这与重大的健康、经济和社会挑战有关。鉴于其与心脏病等主要合并症的重叠,需要创新的解决方案来改进风险预测和管理策略。近年来,人工智能(AI)和机器学习(ML)已成为医疗保健领域的强大工具,为慢性疾病预防提供了新的方法。本文探讨了人工智能/机器学习在肥胖风险预测和管理中的作用,特别关注儿童肥胖。我们首先考察肥胖的多因素性质,包括遗传、行为和环境因素,以及预测和治疗与肥胖相关的发病率的传统方法的局限性。接下来,我们分析了通常用于预测肥胖风险的AI/ML技术,特别是在最小化儿童肥胖风险方面。我们转向人工智能/机器学习在肥胖管理中的应用,比较医疗保健提供者和患者的观点。从提供者的角度来看,AI/ML工具提供来自电子病历、可穿戴设备和健康应用程序的实时数据,以对患者风险进行分层,定制治疗计划,并增强临床决策。从患者的角度来看,人工智能/机器学习驱动的干预措施提供了个性化的指导,并提高了健康管理的长期参与度。最后,我们解决了关键的限制和挑战,例如在接受AI/ML在肥胖管理中的作用时健康的社会决定因素的作用,同时根据我们的文献综述提出了我们的建议。
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来源期刊
Medicina-Lithuania
Medicina-Lithuania 医学-医学:内科
CiteScore
3.30
自引率
3.80%
发文量
1578
审稿时长
25.04 days
期刊介绍: The journal’s main focus is on reviews as well as clinical and experimental investigations. The journal aims to advance knowledge related to problems in medicine in developing countries as well as developed economies, to disseminate research on global health, and to promote and foster prevention and treatment of diseases worldwide. MEDICINA publications cater to clinicians, diagnosticians and researchers, and serve as a forum to discuss the current status of health-related matters and their impact on a global and local scale.
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