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Evaluating the Pre-Consultation Ability of LLMs using Diagnostic Guidelines

7 January 2026
Jean Seo
Gibaeg Kim
Kihun Shin
Seungseop Lim
Hyunkyung Lee
Wooseok Han
Jongwon Lee
Eunho Yang
    LM&MA
ArXiv (abs)PDFHTML
Main:5 Pages
9 Figures
Bibliography:3 Pages
10 Tables
Appendix:9 Pages
Abstract

We introduce EPAG, a benchmark dataset and framework designed for Evaluating the Pre-consultation Ability of LLMs using diagnostic Guidelines. LLMs are evaluated directly through HPI-diagnostic guideline comparison and indirectly through disease diagnosis. In our experiments, we observe that small open-source models fine-tuned with a well-curated, task-specific dataset can outperform frontier LLMs in pre-consultation. Additionally, we find that increased amount of HPI (History of Present Illness) does not necessarily lead to improved diagnostic performance. Further experiments reveal that the language of pre-consultation influences the characteristics of the dialogue. By open-sourcing our dataset and evaluation pipeline onthis https URL, we aim to contribute to the evaluation and further development of LLM applications in real-world clinical settings.

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