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Auteurs principaux: Zhou, Yang, Sheng, Zhenting, Tan, Mingrui, Song, Yuting, Zhou, Jun, Kwan, Yu Heng, Low, Lian Leng, Bai, Yang, Liu, Yong
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2601.21551
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author Zhou, Yang
Sheng, Zhenting
Tan, Mingrui
Song, Yuting
Zhou, Jun
Kwan, Yu Heng
Low, Lian Leng
Bai, Yang
Liu, Yong
author_facet Zhou, Yang
Sheng, Zhenting
Tan, Mingrui
Song, Yuting
Zhou, Jun
Kwan, Yu Heng
Low, Lian Leng
Bai, Yang
Liu, Yong
contents Effective clinical history taking is a foundational yet underexplored component of clinical reasoning. While large language models (LLMs) have shown promise on static benchmarks, they often fall short in dynamic, multi-turn diagnostic settings that require iterative questioning and hypothesis refinement. To address this gap, we propose \method{}, a note-driven framework that trains LLMs to conduct structured history taking and diagnosis by learning from widely available medical notes. Instead of relying on scarce and sensitive dialogue data, we convert real-world medical notes into high-quality doctor-patient dialogues using a decision tree-guided generation and refinement pipeline. We then propose a three-stage fine-tuning strategy combining supervised learning, simulated data augmentation, and preference learning. Furthermore, we propose a novel single-turn reasoning paradigm that reframes history taking as a sequence of single-turn reasoning problems. This design enhances interpretability and enables local supervision, dynamic adaptation, and greater sample efficiency. Experimental results show that our method substantially improves clinical reasoning, achieving gains of +16.9 F1 and +21.0 Top-1 diagnostic accuracy over GPT-4o. Our code and dataset can be found at https://github.com/zhentingsheng/Note2Chat.
format Preprint
id arxiv_https___arxiv_org_abs_2601_21551
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Note2Chat: Improving LLMs for Multi-Turn Clinical History Taking Using Medical Notes
Zhou, Yang
Sheng, Zhenting
Tan, Mingrui
Song, Yuting
Zhou, Jun
Kwan, Yu Heng
Low, Lian Leng
Bai, Yang
Liu, Yong
Computation and Language
Effective clinical history taking is a foundational yet underexplored component of clinical reasoning. While large language models (LLMs) have shown promise on static benchmarks, they often fall short in dynamic, multi-turn diagnostic settings that require iterative questioning and hypothesis refinement. To address this gap, we propose \method{}, a note-driven framework that trains LLMs to conduct structured history taking and diagnosis by learning from widely available medical notes. Instead of relying on scarce and sensitive dialogue data, we convert real-world medical notes into high-quality doctor-patient dialogues using a decision tree-guided generation and refinement pipeline. We then propose a three-stage fine-tuning strategy combining supervised learning, simulated data augmentation, and preference learning. Furthermore, we propose a novel single-turn reasoning paradigm that reframes history taking as a sequence of single-turn reasoning problems. This design enhances interpretability and enables local supervision, dynamic adaptation, and greater sample efficiency. Experimental results show that our method substantially improves clinical reasoning, achieving gains of +16.9 F1 and +21.0 Top-1 diagnostic accuracy over GPT-4o. Our code and dataset can be found at https://github.com/zhentingsheng/Note2Chat.
title Note2Chat: Improving LLMs for Multi-Turn Clinical History Taking Using Medical Notes
topic Computation and Language
url https://arxiv.org/abs/2601.21551