Experience Retrieval-Augmentation with Electronic Health Records Enables Accurate Discharge QA
Experience Retrieval-Augmentation with Electronic Health Records Enables Accurate Discharge QA
To improve the reliability of Large Language Models (LLMs) in clinical applications, retrieval-augmented generation (RAG) is extensively applied to provide factual medical knowledge. However, beyond general medical knowledge from open-ended datasets, clinical case-based knowledge is also critical for effective medical reasoning, as it provides context grounded in real-world patient experiences.Motivated by this, we propose Experience Retrieval-Augmentation ExpRAG framework based on Electronic Health Record(EHR), aiming to offer the relevant context from other patients' discharge reports. ExpRAG performs retrieval through a coarse-to-fine process, utilizing an EHR-based report ranker to efficiently identify similar patients, followed by an experience retriever to extract task-relevant content for enhanced medical reasoning.To evaluate ExpRAG, we introduce DischargeQA, a clinical QA dataset with 1,280 discharge-related questions across diagnosis, medication, and instruction tasks. Each problem is generated using EHR data to ensure realistic and challenging scenarios. Experimental results demonstrate that ExpRAG consistently outperforms a text-based ranker, achieving an average relative improvement of 5.2%, highlighting the importance of case-based knowledge for medical reasoning.
Justice Ou、Tinglin Huang、Yilun Zhao、Ziyang Yu、Peiqing Lu、Rex Ying
医学研究方法临床医学
Justice Ou,Tinglin Huang,Yilun Zhao,Ziyang Yu,Peiqing Lu,Rex Ying.Experience Retrieval-Augmentation with Electronic Health Records Enables Accurate Discharge QA[EB/OL].(2025-03-23)[2025-07-16].https://arxiv.org/abs/2503.17933.点此复制
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