外行人
言语推理
计算机科学
对话框
人工智能
医学诊断
心理学
立场文件
基于模型的推理
分析推理
自动推理
认知科学
情报分析
管理科学
托换
基于案例的推理
认知心理学
推理心理学
梅德林
医疗
职位(财务)
自然语言理解
自然语言处理
作者
Xinti Sun,Qiyang Hong,Mengyan Zhang,Yuyan Li,Tingwei Chen,Zigeng Huang,Guihan Liang,Wenjun Tang,Sulin Xu,Xiaolin Ni,Junling Pang,Peixing Wan,Erping Long
标识
DOI:10.1016/j.xcrm.2025.102547
摘要
Medical reasoning is fundamental to clinical decision-making, underpinning tasks such as patient communication, diagnosis, and treatment planning. Inspired by psychological findings that peer interaction promotes self-correction, we introduce model confrontation and collaboration (MCC), a debate intelligence framework that transcends static ensemble methods by integrating critique and self-reflection to iteratively refine reasoning through structured, multi-round confrontation and collaboration among diverse large language models (LLMs). In multiple-choice benchmarks, MCC achieved mean accuracy on MedQA (92.6%) and PubMedQA (84.8%) and demonstrated strong performance on medical subsets of MMLU. In long-form medical question answering, MCC outperformed all individual LLMs and the domain-specific LLM Med-PaLM 2 in both physician and layperson evaluations. In diagnostic dialog tasks, MCC further excelled in both history-taking and diagnostic accuracy, reaching a top-1 diagnosis rate of 80%. These results position MCC as a scalable, model-agnostic framework that advances medical reasoning through collaborative deliberation.
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