Detecting Adverse Drug Events in Clinical Notes Using Large Language Models.

Journal: Studies in health technology and informatics
Published Date:

Abstract

Monitoring adverse drug events (ADEs) is critical for pharmacovigilance and patient safety. However, identifying ADEs remains challenging, as suspected or confirmed side effects are often documented solely in the unstructured text of electronic health records (EHRs). Manually reviewing clinical notes to detect ADEs is labor-intensive and time-consuming, highlighting the need for automated methods capable of analyzing and extracting ADE-related information from clinical documentation. In this short communication, we describe our ongoing research on fine-tuning and evaluating a large language model (LLM) for the detection of ADEs in clinical notes. Preliminary descriptive result of this study indicates that ADEs are poorly documented in discharge notes, with less than 15% explicitly linking ADEs to specific drugs, which highlights the need for improved reporting practices.

Authors

  • Elizaveta Kopacheva
    LnuC DISA, Department of Computer science and Media technology (CM), Faculty of Technology, Linnaeus University, Sweden.
  • Alisa Lincke
    Faculty of Technology, Department of Computer Science and Media Technology, Linnaeus University, Växjö, Sweden.
  • Olof Björneld
    LnuC DISA, Department of Computer science and Media technology (CM), Faculty of Technology, Linnaeus University, Sweden.
  • Tora Hammar
    E-health Institute, Department of Medicine and Optometry, Linnaeus University , Kalmar, Sweden.