Kim Dong Wook, Park Ji Seok, Sharma Kavita, Velazquez Amanda, Li Lu, Ostrominski John W, Tran Tram, Seitter Peréz Robert H, Shin Jeong-Hun
Division of Endocrinology, Diabetes and Hypertension, Center for Weight Management and Wellness, Brigham and Women's Hospital, Boston, MA, United States.
Department of Medicine, Section of Endocrinology, Diabetes, Nutrition & Weight Management, Boston University Chobanian & Avedisian School of Medicine, Boston, MA, United States.
Front Nutr. 2024 Mar 21;11:1374834. doi: 10.3389/fnut.2024.1374834. eCollection 2024.
The transformative potential of artificial intelligence (AI), particularly via large language models, is increasingly being manifested in healthcare. Dietary interventions are foundational to weight management efforts, but whether AI techniques are presently capable of generating clinically applicable diet plans has not been evaluated.
Our study sought to evaluate the potential of personalized AI-generated weight-loss diet plans for clinical applications by employing a survey-based assessment conducted by experts in the fields of obesity medicine and clinical nutrition.
We utilized ChatGPT (4.0) to create weight-loss diet plans and selected two control diet plans from tertiary medical centers for comparison. Dietitians, physicians, and nurse practitioners specializing in obesity medicine or nutrition were invited to provide feedback on the AI-generated plans. Each plan was assessed blindly based on its effectiveness, balanced-ness, comprehensiveness, flexibility, and applicability. Personalized plans for hypothetical patients with specific health conditions were also evaluated.
The primary outcomes measured included the indistinguishability of the AI diet plan from human-created plans, and the potential of personalized AI-generated diet plans for real-world clinical applications.
Of 95 participants, 67 completed the survey and were included in the final analysis. No significant differences were found among the three weight-loss diet plans in any evaluation category. Among the 14 experts who believed that they could identify the AI plan, only five did so correctly. In an evaluation involving 57 experts, the AI-generated personalized weight-loss diet plan was assessed, with scores above neutral for all evaluation variables. Several limitations, of the AI-generated plans were highlighted, including conflicting dietary considerations, lack of affordability, and insufficient specificity in recommendations, such as exact portion sizes. These limitations suggest that refining inputs could enhance the quality and applicability of AI-generated diet plans.
Despite certain limitations, our study highlights the potential of AI-generated diet plans for clinical applications. AI-generated dietary plans were frequently indistinguishable from diet plans widely used at major tertiary medical centers. Although further refinement and prospective studies are needed, these findings illustrate the potential of AI in advancing personalized weight-centric care.
人工智能(AI)的变革潜力,尤其是通过大语言模型,在医疗保健领域正日益显现。饮食干预是体重管理工作的基础,但目前人工智能技术是否能够生成临床适用的饮食计划尚未得到评估。
我们的研究旨在通过肥胖医学和临床营养领域专家进行的基于调查的评估,来评估人工智能生成的个性化减肥饮食计划在临床应用中的潜力。
设计、背景和参与者:我们利用ChatGPT(4.0)创建减肥饮食计划,并从三级医疗中心选择了两个对照饮食计划进行比较。邀请了专门从事肥胖医学或营养的营养师、医生和执业护士对人工智能生成的计划提供反馈。每个计划都基于其有效性、平衡性、全面性、灵活性和适用性进行盲评。还对患有特定健康状况的假设患者的个性化计划进行了评估。
测量的主要结果包括人工智能饮食计划与人工制定的计划之间的不可区分性,以及人工智能生成的个性化饮食计划在实际临床应用中的潜力。
95名参与者中,67人完成了调查并纳入最终分析。在任何评估类别中,三种减肥饮食计划之间均未发现显著差异。在14名认为自己能够识别出人工智能计划的专家中,只有5人正确识别。在一项涉及57名专家的评估中,对人工智能生成的个性化减肥饮食计划进行了评估,所有评估变量的得分均高于中性。人工智能生成的计划存在一些局限性,包括饮食考虑相互冲突、缺乏可承受性以及建议中缺乏足够的特异性,如确切的份量大小。这些局限性表明,优化输入可以提高人工智能生成的饮食计划的质量和适用性。
尽管存在某些局限性,但我们的研究突出了人工智能生成的饮食计划在临床应用中的潜力。人工智能生成的饮食计划通常与主要三级医疗中心广泛使用的饮食计划难以区分。尽管需要进一步完善和前瞻性研究,但这些发现说明了人工智能在推进以体重为中心的个性化护理方面的潜力。