|国家预印本平台
首页|ER-REASON: A Benchmark Dataset for LLM-Based Clinical Reasoning in the Emergency Room

ER-REASON: A Benchmark Dataset for LLM-Based Clinical Reasoning in the Emergency Room

ER-REASON: A Benchmark Dataset for LLM-Based Clinical Reasoning in the Emergency Room

来源:Arxiv_logoArxiv
英文摘要

Large language models (LLMs) have been extensively evaluated on medical question answering tasks based on licensing exams. However, real-world evaluations often depend on costly human annotators, and existing benchmarks tend to focus on isolated tasks that rarely capture the clinical reasoning or full workflow underlying medical decisions. In this paper, we introduce ER-Reason, a benchmark designed to evaluate LLM-based clinical reasoning and decision-making in the emergency room (ER)--a high-stakes setting where clinicians make rapid, consequential decisions across diverse patient presentations and medical specialties under time pressure. ER-Reason includes data from 3,984 patients, encompassing 25,174 de-identified longitudinal clinical notes spanning discharge summaries, progress notes, history and physical exams, consults, echocardiography reports, imaging notes, and ER provider documentation. The benchmark includes evaluation tasks that span key stages of the ER workflow: triage intake, initial assessment, treatment selection, disposition planning, and final diagnosis--each structured to reflect core clinical reasoning processes such as differential diagnosis via rule-out reasoning. We also collected 72 full physician-authored rationales explaining reasoning processes that mimic the teaching process used in residency training, and are typically absent from ER documentation. Evaluations of state-of-the-art LLMs on ER-Reason reveal a gap between LLM-generated and clinician-authored clinical reasoning for ER decisions, highlighting the need for future research to bridge this divide.

Nikita Mehandru、Niloufar Golchini、David Bamman、Travis Zack、Melanie F. Molina、Ahmed Alaa

医学研究方法临床医学

Nikita Mehandru,Niloufar Golchini,David Bamman,Travis Zack,Melanie F. Molina,Ahmed Alaa.ER-REASON: A Benchmark Dataset for LLM-Based Clinical Reasoning in the Emergency Room[EB/OL].(2025-05-28)[2025-06-08].https://arxiv.org/abs/2505.22919.点此复制

评论