A Pipeline for Automating Emergency Medicine Documentation Using LLMs with Retrieval-Augmented Text Generation
Version
Published
Identifiers
10.1080/08839514.2025.2519169
Date Issued
2025
Author(s)
Type
Article
Language
English
Abstract
Accurate and efficient documentation of patient information is vital in emergency healthcare settings. Traditional manual documentation methods are often time-consuming and prone to errors, potentially affecting patient outcomes. Large Language Models (LLMs) offer a promising solution to enhance medical communication systems; however, their clinical deployment, particularly in non-English languages such as German, presents challenges related to content accuracy, clinical relevance, and data privacy. This study addresses these challenges by developing and evaluating an automated pipeline for emergency medical documentation in German. The research objectives include (1) generating synthetic dialogues with known ground truth data to create controlled datasets for evaluating NLP performance and (2) designing an innovative pipeline to retrieve essential clinical information from these dialogues. A subset of 100 anonymized patient records from the MIMIC-IV-ED dataset was selected, ensuring diversity in demographics, chief complaints, and conditions. A Retrieval-Augmented Generation (RAG) system extracted key nominal and numerical features using chunking, embedding, and dynamic prompts. Evaluation metrics included precision, recall, F1-score, and sentiment analysis. Initial results demonstrated high extraction accuracy, particularly in medication data (F1-scores: 86.21%-100%), though performance declined in nuanced clinical language, requiring further refinement for real-world emergency settings.
Publisher DOI
Journal or Serie
Applied artificial intelligence : AAI
Journal or Serie
Applied Artificial Intelligence
ISSN
0883-9514
Volume
39
Issue
1
Publisher
Taylor and Francis (United Kingdom)
Submitter
Sariyar, Murat
Citation apa
Moser, D. S., Bender, M., & Sariyar, M. (2025). A Pipeline for Automating Emergency Medicine Documentation Using LLMs with Retrieval-Augmented Text Generation. In Applied Artificial Intelligence (Vol. 39, Issue 1). Taylor and Francis (United Kingdom). https://doi.org/10.24451/arbor.12697
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A Pipeline for Automating Emergency Medicine Documentation Using LLMs with Retrieval-Augmented Text Generation.pdf
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Version
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