MEDCO:基于多代理框架的医学教育协同机器人

Hao Wei, Jianing Qiu, Haibao Yu, Wu Yuan
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摘要

大型语言模型(LLMs)已经对包括医学和医疗保健在内的多个研究领域产生了重大影响。然而,LLMs 在医学教育中作为副驾驶的潜力仍未得到充分发掘。目前的人工智能辅助教育工具受到其单独学习方法的限制,无法模拟实际医学培训的多学科和互动性质。为了解决这些局限性,我们提出了 MEDCO(Medical EDucation COpilots),这是一种基于多机器人的新型副驾驶系统,专门为模拟真实世界的医学培训环境而开发。MEDCO 包含三个主要代理:代理病人、专家医生和放射科医生,为多模式互动学习环境提供了便利。我们的框架强调学习熟练的提问技能、多学科协作和学生之间的同伴讨论。我们的框架强调学习熟练的提问技能、多学科协作和学生之间的同伴讨论。我们的实验表明,接受过 MEDCO 培训的模拟虚拟学生不仅取得了可与高级模型相媲美的大幅性能提升,而且还表现出了类似人类的学习行为和改进,同时增加了学习样本的数量。这项工作通过引入一种采用交互式协作学习方法的副驾驶,为医学教育做出了贡献,同时也为人工智能集成培训范例的有效性提供了宝贵的见解。
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MEDCO: Medical Education Copilots Based on A Multi-Agent Framework
Large language models (LLMs) have had a significant impact on diverse research domains, including medicine and healthcare. However, the potential of LLMs as copilots in medical education remains underexplored. Current AI-assisted educational tools are limited by their solitary learning approach and inability to simulate the multi-disciplinary and interactive nature of actual medical training. To address these limitations, we propose MEDCO (Medical EDucation COpilots), a novel multi-agent-based copilot system specially developed to emulate real-world medical training environments. MEDCO incorporates three primary agents: an agentic patient, an expert doctor, and a radiologist, facilitating a multi-modal and interactive learning environment. Our framework emphasizes the learning of proficient question-asking skills, multi-disciplinary collaboration, and peer discussions between students. Our experiments show that simulated virtual students who underwent training with MEDCO not only achieved substantial performance enhancements comparable to those of advanced models, but also demonstrated human-like learning behaviors and improvements, coupled with an increase in the number of learning samples. This work contributes to medical education by introducing a copilot that implements an interactive and collaborative learning approach. It also provides valuable insights into the effectiveness of AI-integrated training paradigms.
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