Enhancing Vaccine Safety Surveillance: Extracting Vaccine Mentions from Emergency Department Triage Notes Using Fine-Tuned Large Language Models.

Journal: Studies in health technology and informatics
Published Date:

Abstract

This study evaluates fine-tuned Llama 3.2 models for extracting vaccine-related information from emergency department triage notes to support near real-time vaccine safety surveillance. Prompt engineering was used to initially create a labeled dataset, which was then confirmed by human annotators. The performance of prompt-engineered models, fine-tuned models, and a rule-based approach was compared. The fine-tuned Llama 3 billion parameter model outperformed other models in its accuracy of extracting vaccine names. Model quantization enabled efficient deployment in resource-constrained environments. Findings demonstrate the potential of large language models in automating data extraction from emergency department notes, supporting efficient vaccine safety surveillance and early detection of emerging adverse events following immunization issues.

Authors

  • Sedigh Khademi
    Epidemiology Informatics, Centre for Health Analytics, Melbourne Children's Campus, Australia.
  • Jim Black
    Department of Health, State Government of Victoria, Melbourne, Australia.
  • Christopher Palmer
    Murdoch Children's Research Institute, Parkville, Australia.
  • Muhammad Javed
    Epidemiology Informatics, Centre for Health Analytics, Melbourne Children's Campus, Australia.
  • Hazel Clothier
    Epidemiology Informatics, Centre for Health Analytics, Melbourne Children's Campus, Australia.
  • Jim Buttery
    Epidemiology Informatics, Centre for Health Analytics, Melbourne Children's Campus, Australia.
  • Gerardo Luis Dimaguila
    Epidemiology Informatics, Centre for Health Analytics, Melbourne Children's Campus, Australia.