Large Language Models for Efficient Medical Information Extraction.
Navya BhagatOlivia MackeyAdam WilcoxPublished in: AMIA Joint Summits on Translational Science proceedings. AMIA Joint Summits on Translational Science (2024)
Extracting valuable insights from unstructured clinical narrative reports is a challenging yet crucial task in the healthcare domain as it allows healthcare workers to treat patients more efficiently and improves the overall standard of care. We employ ChatGPT, a Large language model (LLM), and compare its performance to manual reviewers. The review focuses on four key conditions: family history of heart disease, depression, heavy smoking, and cancer. The evaluation of a diverse sample of History and Physical (H&P) Notes, demonstrates ChatGPT's remarkable capabilities. Notably, it exhibits exemplary results in sensitivity for depression and heavy smokers and specificity for cancer. We identify areas for improvement as well, particularly in capturing nuanced semantic information related to family history of heart disease and cancer. With further investigation, ChatGPT holds substantial potential for advancements in medical information extraction.
Keyphrases
- healthcare
- papillary thyroid
- squamous cell
- depressive symptoms
- end stage renal disease
- health information
- autism spectrum disorder
- chronic kidney disease
- palliative care
- mental health
- pulmonary hypertension
- newly diagnosed
- squamous cell carcinoma
- physical activity
- sleep quality
- childhood cancer
- human health
- climate change
- health insurance
- drug induced