Laverde Nicolas, Grévisse Christian, Jaramillo Sandra, Manrique Ruben
Department of Systems and Computing Engineering, Universidad de los Andes, Bogotá, Colombia.
Department of Life Sciences and Medicine, University of Luxembourg, Esch-sur-Alzette, Luxembourg.
Comput Struct Biotechnol J. 2025 May 28;27:2481-2491. doi: 10.1016/j.csbj.2025.05.025. eCollection 2025.
Effective communication is crucial for trust-building, accurate information gathering, and clinical decision-making in healthcare. Despite its emphasis in medical curricula, traditional training methods, such as role-playing with standardized patients, remain costly, logistically complex, and fail to replicate real-life scenarios. Simulation-based training enhances communication and reasoning skills, but novice learners often struggle due to underdeveloped reasoning processes. Furthermore, limited access to asynchronous, autonomous simulated patient interactions restricts personalized practice. Virtual patient models offer scalable solutions with interactive scenarios and tailored feedback, but high development costs and resource demands hinder their widespread adoption. To address these challenges, virtual patient systems powered by Large Language Models (LLMs) have emerged as a promising tool. These generative agents simulate human-like behavioral responses by leveraging LLM capabilities, cognitive mechanisms, and contextual memory retrieval. A tool was developed allowing students to select clinical cases and interact with a chatbot simulating a patient role. Teachers can also create custom cases. Evaluations showed that the agent provided consistent, plausible responses aligned with case descriptions and achieved a Chatbot Usability Questionnaire (CUQ) score of 86.25/100. Our results show that this approach enables flexible, repetitive, and asynchronous practice while offering real-time feedback.
有效的沟通对于医疗保健中的信任建立、准确信息收集和临床决策至关重要。尽管医学课程强调沟通,但传统的培训方法,如与标准化病人进行角色扮演,成本高昂、后勤复杂,且无法复制现实生活场景。基于模拟的培训可提高沟通和推理技能,但新手学习者往往因推理过程不完善而感到困难。此外,异步、自主模拟病人互动的机会有限,限制了个性化练习。虚拟病人模型提供了具有交互式场景和量身定制反馈的可扩展解决方案,但高昂的开发成本和资源需求阻碍了它们的广泛采用。为应对这些挑战,由大语言模型(LLM)驱动的虚拟病人系统已成为一种有前途的工具。这些生成式智能体通过利用大语言模型的能力、认知机制和情境记忆检索来模拟类人的行为反应。开发了一种工具,允许学生选择临床病例并与模拟病人角色的聊天机器人进行互动。教师也可以创建自定义病例。评估表明,该智能体提供了与病例描述一致、合理的回复,并在聊天机器人可用性问卷(CUQ)中获得了86.25/100的分数。我们的结果表明,这种方法能够实现灵活、重复和异步的练习,同时提供实时反馈。