Beyond Chatbots: Moving Toward Multistep Modular AI Agents in Medical Education.

IF 3.2 Q1 EDUCATION, SCIENTIFIC DISCIPLINES
Minyang Chow, Olivia Ng
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引用次数: 0

Abstract

Unlabelled: The integration of large language models into medical education has significantly increased, providing valuable assistance in single-turn, isolated educational tasks. However, their utility remains limited in complex, iterative instructional workflows characteristic of clinical education. Single-prompt AI chatbots lack the necessary contextual awareness and iterative capability required for nuanced educational tasks. This Viewpoint paper argues for a shift from conventional chatbot paradigms toward a modular, multistep artificial intelligence (AI) agent framework that aligns closely with the pedagogical needs of medical educators. We propose a modular framework composed of specialized AI agents, each responsible for distinct instructional subtasks. Furthermore, these agents operate within clearly defined boundaries and are equipped with tools and resources to accomplish their tasks and ensure pedagogical continuity and coherence. Specialized agents enhance accuracy by using models optimally tailored to specific cognitive tasks, increasing the quality of outputs compared to single-model workflows. Using a clinical scenario design as an illustrative example, we demonstrate how task specialization, iterative feedback, and tool integration in an agent-based pipeline can mirror expert-driven educational processes. The framework maintains a human-in-the-loop structure, with educators reviewing and refining each output before progression, ensuring pedagogical integrity, flexibility, and transparency. Our proposed shift toward modular AI agents offers significant promise for enhancing educational workflows by delegating routine tasks to specialized systems. We encourage educators to explore how these emerging AI ecosystems could transform medical education.

超越聊天机器人:在医学教育中走向多步骤模块化人工智能代理。
未标记:将大型语言模型纳入医学教育的情况已大大增加,为单一、孤立的教育任务提供了宝贵的帮助。然而,他们的效用仍然是有限的复杂,迭代的教学工作流程的特点临床教育。单提示人工智能聊天机器人缺乏必要的上下文意识和迭代能力,需要细致的教育任务。这篇观点论文主张从传统的聊天机器人范式转向模块化、多步骤的人工智能(AI)代理框架,该框架与医学教育者的教学需求密切相关。我们提出了一个由专门的人工智能代理组成的模块化框架,每个代理负责不同的教学子任务。此外,这些机构在明确界定的范围内运作,并配备了完成任务和确保教学连续性和连贯性的工具和资源。专门的代理通过使用针对特定认知任务的优化模型来提高准确性,与单模型工作流相比,提高了输出的质量。以临床场景设计为例,我们演示了任务专门化、迭代反馈和基于代理的管道中的工具集成如何反映专家驱动的教育过程。该框架保持了一个人在循环的结构,教育工作者在进步之前审查和完善每个输出,确保教学的完整性、灵活性和透明度。我们提出的向模块化人工智能代理的转变,通过将日常任务委托给专门的系统,为加强教育工作流程提供了巨大的希望。我们鼓励教育工作者探索这些新兴的人工智能生态系统如何改变医学教育。
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
JMIR Medical Education
JMIR Medical Education Social Sciences-Education
CiteScore
6.90
自引率
5.60%
发文量
54
审稿时长
8 weeks
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