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Auteurs principaux: Lim, Seungseop, Kim, Gibaeg, Lee, Hyunkyung, Han, Wooseok, Seo, Jean, Yoo, Jaehyo, Yang, Eunho
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2510.03700
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author Lim, Seungseop
Kim, Gibaeg
Lee, Hyunkyung
Han, Wooseok
Seo, Jean
Yoo, Jaehyo
Yang, Eunho
author_facet Lim, Seungseop
Kim, Gibaeg
Lee, Hyunkyung
Han, Wooseok
Seo, Jean
Yoo, Jaehyo
Yang, Eunho
contents An accurate differential diagnosis (DDx) is essential for patient care, shaping therapeutic decisions and influencing outcomes. Recently, Large Language Models (LLMs) have emerged as promising tools to support this process by generating a DDx list from patient narratives. However, existing evaluations of LLMs in this domain primarily rely on flat metrics, such as Top-k accuracy, which fail to distinguish between clinically relevant near-misses and diagnostically distant errors. To mitigate this limitation, we introduce H-DDx, a hierarchical evaluation framework that better reflects clinical relevance. H-DDx leverages a retrieval and reranking pipeline to map free-text diagnoses to ICD-10 codes and applies a hierarchical metric that credits predictions closely related to the ground-truth diagnosis. In benchmarking 22 leading models, we show that conventional flat metrics underestimate performance by overlooking clinically meaningful outputs, with our results highlighting the strengths of domain-specialized open-source models. Furthermore, our framework enhances interpretability by revealing hierarchical error patterns, demonstrating that LLMs often correctly identify the broader clinical context even when the precise diagnosis is missed.
format Preprint
id arxiv_https___arxiv_org_abs_2510_03700
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle H-DDx: A Hierarchical Evaluation Framework for Differential Diagnosis
Lim, Seungseop
Kim, Gibaeg
Lee, Hyunkyung
Han, Wooseok
Seo, Jean
Yoo, Jaehyo
Yang, Eunho
Artificial Intelligence
An accurate differential diagnosis (DDx) is essential for patient care, shaping therapeutic decisions and influencing outcomes. Recently, Large Language Models (LLMs) have emerged as promising tools to support this process by generating a DDx list from patient narratives. However, existing evaluations of LLMs in this domain primarily rely on flat metrics, such as Top-k accuracy, which fail to distinguish between clinically relevant near-misses and diagnostically distant errors. To mitigate this limitation, we introduce H-DDx, a hierarchical evaluation framework that better reflects clinical relevance. H-DDx leverages a retrieval and reranking pipeline to map free-text diagnoses to ICD-10 codes and applies a hierarchical metric that credits predictions closely related to the ground-truth diagnosis. In benchmarking 22 leading models, we show that conventional flat metrics underestimate performance by overlooking clinically meaningful outputs, with our results highlighting the strengths of domain-specialized open-source models. Furthermore, our framework enhances interpretability by revealing hierarchical error patterns, demonstrating that LLMs often correctly identify the broader clinical context even when the precise diagnosis is missed.
title H-DDx: A Hierarchical Evaluation Framework for Differential Diagnosis
topic Artificial Intelligence
url https://arxiv.org/abs/2510.03700