Using artificial intelligence for exercise prescription in personalised health promotion: A critical evaluation of OpenAI's GPT-4 model.

IF 4.2 2区 医学 Q1 SPORT SCIENCES Biology of Sport Pub Date : 2024-03-01 Epub Date: 2023-12-13 DOI:10.5114/biolsport.2024.133661
Ismail Dergaa, Helmi Ben Saad, Abdelfatteh El Omri, Jordan M Glenn, Cain C T Clark, Jad Adrian Washif, Noomen Guelmami, Omar Hammouda, Ramzi A Al-Horani, Luis Felipe Reynoso-Sánchez, Mohamed Romdhani, Laisa Liane Paineiras-Domingos, Rodrigo L Vancini, Morteza Taheri, Leonardo Jose Mataruna-Dos-Santos, Khaled Trabelsi, Hamdi Chtourou, Makram Zghibi, Özgür Eken, Sarya Swed, Mohamed Ben Aissa, Hossam H Shawki, Hesham R El-Seedi, Iñigo Mujika, Stephen Seiler, Piotr Zmijewski, David B Pyne, Beat Knechtle, Irfan M Asif, Jonathan A Drezner, Øyvind Sandbakk, Karim Chamari
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Abstract

The rise of artificial intelligence (AI) applications in healthcare provides new possibilities for personalized health management. AI-based fitness applications are becoming more common, facilitating the opportunity for individualised exercise prescription. However, the use of AI carries the risk of inadequate expert supervision, and the efficacy and validity of such applications have not been thoroughly investigated, particularly in the context of diverse health conditions. The aim of the study was to critically assess the efficacy of exercise prescriptions generated by OpenAI's Generative Pre-Trained Transformer 4 (GPT-4) model for five example patient profiles with diverse health conditions and fitness goals. Our focus was to assess the model's ability to generate exercise prescriptions based on a singular, initial interaction, akin to a typical user experience. The evaluation was conducted by leading experts in the field of exercise prescription. Five distinct scenarios were formulated, each representing a hypothetical individual with a specific health condition and fitness objective. Upon receiving details of each individual, the GPT-4 model was tasked with generating a 30-day exercise program. These AI-derived exercise programs were subsequently subjected to a thorough evaluation by experts in exercise prescription. The evaluation encompassed adherence to established principles of frequency, intensity, time, and exercise type; integration of perceived exertion levels; consideration for medication intake and the respective medical condition; and the extent of program individualization tailored to each hypothetical profile. The AI model could create general safety-conscious exercise programs for various scenarios. However, the AI-generated exercise prescriptions lacked precision in addressing individual health conditions and goals, often prioritizing excessive safety over the effectiveness of training. The AI-based approach aimed to ensure patient improvement through gradual increases in training load and intensity, but the model's potential to fine-tune its recommendations through ongoing interaction was not fully satisfying. AI technologies, in their current state, can serve as supplemental tools in exercise prescription, particularly in enhancing accessibility for individuals unable to access, often costly, professional advice. However, AI technologies are not yet recommended as a substitute for personalized, progressive, and health condition-specific prescriptions provided by healthcare and fitness professionals. Further research is needed to explore more interactive use of AI models and integration of real-time physiological feedback.

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在个性化健康促进中使用人工智能开具运动处方:对 OpenAI 的 GPT-4 模型进行批判性评估。
人工智能(AI)应用在医疗保健领域的兴起为个性化健康管理提供了新的可能性。基于人工智能的健身应用越来越普遍,为个性化运动处方提供了便利。然而,人工智能的使用存在专家监督不足的风险,而且此类应用的功效和有效性尚未得到深入研究,尤其是在不同的健康状况下。本研究的目的是严格评估 OpenAI 的生成预训练转换器 4 (GPT-4) 模型针对五个具有不同健康状况和健身目标的患者病例所生成的运动处方的有效性。我们的重点是评估该模型基于单一的初始交互(类似于典型的用户体验)生成运动处方的能力。评估由运动处方领域的权威专家进行。我们制定了五种不同的情景,每种情景都代表了一个具有特定健康状况和健身目标的假设个体。收到每个人的详细信息后,GPT-4 模型的任务是生成一个 30 天的锻炼计划。随后,运动处方专家对这些人工智能生成的运动计划进行了全面评估。评估内容包括:是否遵守频率、强度、时间和运动类型等既定原则;是否综合考虑了感知消耗水平;是否考虑了药物摄入量和各自的身体状况;以及针对每个假定情况定制的个性化计划的程度。人工智能模型可以为各种情况创建具有安全意识的一般锻炼计划。然而,人工智能生成的运动处方在解决个人健康状况和目标方面缺乏精确性,往往将过度安全置于训练效果之上。基于人工智能的方法旨在通过逐步增加训练负荷和强度来确保患者的病情得到改善,但该模型通过持续互动对其建议进行微调的潜力并不能完全令人满意。目前,人工智能技术可以作为运动处方的辅助工具,尤其是在提高无法获得专业建议(通常费用昂贵)的个人的可及性方面。不过,目前还不建议用人工智能技术来替代医疗保健和健身专业人员提供的个性化、渐进式和针对具体健康状况的处方。还需要进一步的研究来探索人工智能模型更多的交互式使用和实时生理反馈的整合。
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
Biology of Sport
Biology of Sport 生物-运动科学
CiteScore
8.20
自引率
12.50%
发文量
113
审稿时长
>12 weeks
期刊介绍: Biology of Sport is the official journal of the Institute of Sport in Warsaw, Poland, published since 1984. Biology of Sport is an international scientific peer-reviewed journal, published quarterly in both paper and electronic format. The journal publishes articles concerning basic and applied sciences in sport: sports and exercise physiology, sports immunology and medicine, sports genetics, training and testing, pharmacology, as well as in other biological aspects related to sport. Priority is given to inter-disciplinary papers.
期刊最新文献
Effects of plyometric-based structured game active breaks on fundamental movement skills, muscular fitness, self-perception, and actual behaviour in primary school students. Effects of recreational team sports on the metabolic health, body composition and physical fitness parameters of overweight and obese populations: A systematic review. Exploring sex differences in blood-based biomarkers following exhaustive exercise using bioinformatics analysis. Gut microbiota and physical activity level: characterization from sedentary to soccer players. Injury incidence and characteristics in adolescent female football players: A systematic review with meta-analysis of prospective studies.
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