个性化营养指导的行为科学信息代理工作流程:开发和验证研究。

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES
Eric Yang, Tomas Garcia, Hannah G Williams, Bhawesh Kumar, Martin Ramé, Eileen Rivera, Yiran Ma, Jonathan Amar, Caricia Catalani, Yugang Jia
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引用次数: 0

摘要

背景:有效地管理心脏代谢状况需要持续的积极的营养习惯,经常受到复杂和个性化障碍的阻碍。直接的人力管理是不可扩展的,而确定性的自动化营养指导方法可能缺乏应对这些多样化挑战所需的个性化。目的:我们报告了一种新的大型语言模型(LLM)驱动的代理工作流的开发和验证,该工作流旨在通过直接识别和减轻患者特定障碍来提供个性化营养指导。方法:我们运用行为科学原理创建了一个全面的工作流程,可以将营养相关障碍映射到相应的循证策略。首先,一个专门的LLM代理有意探索和确定患者饮食斗争的根本原因。随后,一个单独的LLM代理提供量身定制的策略,以克服这些特定的障碍。我们对患有心脏代谢疾病的个体(N=16)进行了一项用户研究,以告知我们的工作流程设计,然后通过另一项用户研究(N= 6)验证了我们的方法。我们还进行了大规模的模拟研究,以真实患者的小插曲和专家验证的指标为基础,由人类专家评估系统在多个场景和领域的性能。结果:在我们的用户研究中,系统准确识别障碍并提供个性化指导。6名参与者中有5人认为,LLM代理帮助他们认识到阻碍他们变得更健康的障碍,所有参与者都强烈认为,这些建议是针对他们的情况量身定制的。在我们的模拟研究中,专家们一致认为,在超过90%的病例(27 /30或28/30)中,LLM药物准确地识别了主要障碍。此外,专家们确定,工作流程提供了个性化和可操作的策略,在5分李克特量表上的平均评分为4.17-4.79。结论:我们的研究结果表明,通过提供个性化、可扩展和行为知情的干预措施,这种法学硕士支持的代理工作流程具有改善营养指导的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Behavioral Science-Informed Agentic Workflow for Personalized Nutrition Coaching: Development and Validation Study.

A Behavioral Science-Informed Agentic Workflow for Personalized Nutrition Coaching: Development and Validation Study.

Background: Effective management of cardiometabolic conditions requires sustained positive nutrition habits, often hindered by complex and individualized barriers. Direct human management is simply not scalable, and deterministic automated approaches to nutrition coaching may lack the personalization needed to address these diverse challenges.

Objective: We report the development and validation of a novel large language model (LLM)-powered agentic workflow designed to provide personalized nutrition coaching by directly identifying and mitigating patient-specific barriers.

Methods: We used behavioral science principles to create a comprehensive workflow that can map nutrition-related barriers to corresponding evidence-based strategies. First, a specialized LLM agent to intentionally probe for and identify root causes of a patient's dietary struggles. Subsequently, a separate LLM agent to deliver tailored tactics that were designed to overcome those specific barriers. We conducted a user study with individuals with cardiometabolic conditions (N=16) to inform our workflow design and then validated our approach through an additional user study (n=6). We also conducted a large-scale simulation study, grounding on real patient vignettes and expert-validated metrics, where human experts evaluated the system's performance across multiple scenarios and domains.

Results: In our user study, the system accurately identified barriers and provided personalized guidance. Five out of 6 participants agreed that the LLM agent helped them recognize obstacles preventing them from being healthier, and all participants strongly agreed that the advice felt personalized to their situation. In our simulation study, experts agreed that the LLM agent accurately identified primary barriers in more than 90% of cases (27 or 28/30). Additionally, experts determined that the workflow delivered personalized and actionable tactics empathetically, with average ratings of 4.17-4.79 on a 5-point Likert scale.

Conclusions: Our findings demonstrate the potential of this LLM-powered agentic workflow to improve nutrition coaching by providing personalized, scalable, and behaviorally informed interventions.

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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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