Generating Synthetic Healthcare Dialogues in Emergency Medicine Using Large Language Models
Version
Published
Date Issued
2024-11-22
Author(s)
Type
book-chapter
Language
English
Abstract
Natural Language Processing (NLP) has shown promise in fields like radiology for converting unstructured into structured data, but acquiring suitable datasets poses several challenges, including privacy concerns. Specifically, we aim to utilize Large Language Models (LLMs) to extract medical information from dialogues between ambulance staff and patients to populate emergency protocol forms. However, we currently lack dialogues with known content that can serve as a gold standard for an evaluation. We designed a pipeline using the quantized LLM “Zephyr-7b-beta” for initial dialogue generation, followed by refinement and translation using OpenAI’s GPT-4 Turbo. The MIMIC-IV database provided relevant medical data. The evaluation involved accuracy assessment via Retrieval-Augmented Generation (RAG) and sentiment analysis using multilingual models. Initial results showed a high accuracy of 94% with “Zephyr-7b-beta,” slightly decreasing to 87% after refinement with GPT-4 Turbo. Sentiment analysis indicated a qualitative shift towards more positive sentiment post-refinement. These findings highlight the potential and challenges of using LLMs for generating synthetic medical dialogues, informing future NLP system development in healthcare.
Publisher DOI
Journal or Serie
Studies in Health Technology and Informatics
Collaboration across Disciplines for the Health of People, Animals and Ecosystems
Journal or Serie
Studies in Health Technology and Informatics
ISSN
1879-8365
Publisher URL
Volume
321
Project(s)
S
Publisher
IOS Press
Submitter
Sariyar, Murat
Citation apa
Moser, D. S., Bender, M., & Sariyar, M. (2024). Generating Synthetic Healthcare Dialogues in Emergency Medicine Using Large Language Models. In Studies in Health Technology and Informatics (Vol. 321, pp. 235–239). IOS Press. https://doi.org/10.24451/dspace/11432
File(s)![Thumbnail Image]()
Loading...
open access
Name
Moser_STC_2024.pdf
License
Attribution-NonCommercial 4.0 International
Version
published
Size
158.54 KB
Format
Adobe PDF
Checksum (MD5)
3e3f96ef9e9902e10e8c9aca2cfca372
