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Main Authors: Guo, Guangfu, Zhang, Kai, Hoo, Bryan, Cai, Yujun, Lu, Xiaoqian, Peng, Nanyun, Wang, Yiwei
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.03194
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author Guo, Guangfu
Zhang, Kai
Hoo, Bryan
Cai, Yujun
Lu, Xiaoqian
Peng, Nanyun
Wang, Yiwei
author_facet Guo, Guangfu
Zhang, Kai
Hoo, Bryan
Cai, Yujun
Lu, Xiaoqian
Peng, Nanyun
Wang, Yiwei
contents Medical question-answering (QA) is a critical task for evaluating how effectively large language models (LLMs) encode clinical knowledge and assessing their potential applications in medicine. Despite showing promise on multiple-choice tests, LLMs frequently struggle with open-ended medical questions, producing responses with dangerous hallucinations or lacking comprehensive coverage of critical aspects. Existing approaches attempt to address these challenges through domain-specific fine-tuning, but this proves resource-intensive and difficult to scale across models. To improve the comprehensiveness and factuality of medical responses, we propose a novel approach utilizing structured medical reasoning. Our method guides LLMs through an seven-step cognitive process inspired by clinical diagnosis, enabling more accurate and complete answers without additional training. Experiments on the MedLFQA benchmark demonstrate that our approach achieves the highest Factuality Score of 85.8, surpassing fine-tuned models. Notably, this improvement transfers to smaller models, highlighting the method's efficiency and scalability. Our code and datasets are available.
format Preprint
id arxiv_https___arxiv_org_abs_2503_03194
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Structured Outputs Enable General-Purpose LLMs to be Medical Experts
Guo, Guangfu
Zhang, Kai
Hoo, Bryan
Cai, Yujun
Lu, Xiaoqian
Peng, Nanyun
Wang, Yiwei
Computation and Language
Artificial Intelligence
Medical question-answering (QA) is a critical task for evaluating how effectively large language models (LLMs) encode clinical knowledge and assessing their potential applications in medicine. Despite showing promise on multiple-choice tests, LLMs frequently struggle with open-ended medical questions, producing responses with dangerous hallucinations or lacking comprehensive coverage of critical aspects. Existing approaches attempt to address these challenges through domain-specific fine-tuning, but this proves resource-intensive and difficult to scale across models. To improve the comprehensiveness and factuality of medical responses, we propose a novel approach utilizing structured medical reasoning. Our method guides LLMs through an seven-step cognitive process inspired by clinical diagnosis, enabling more accurate and complete answers without additional training. Experiments on the MedLFQA benchmark demonstrate that our approach achieves the highest Factuality Score of 85.8, surpassing fine-tuned models. Notably, this improvement transfers to smaller models, highlighting the method's efficiency and scalability. Our code and datasets are available.
title Structured Outputs Enable General-Purpose LLMs to be Medical Experts
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2503.03194