Leveraging LLMs for Predicting Unknown Diagnoses from Clinical Notes
Journal:
arXiv
Published Date:
Mar 28, 2025
Abstract
Electronic Health Records (EHRs) often lack explicit links between
medications and diagnoses, making clinical decision-making and research more
difficult. Even when links exist, diagnosis lists may be incomplete, especially
during early patient visits. Discharge summaries tend to provide more complete
information, which can help infer accurate diagnoses, especially with the help
of large language models (LLMs). This study investigates whether LLMs can
predict implicitly mentioned diagnoses from clinical notes and link them to
corresponding medications. We address two research questions: (1) Does majority
voting across diverse LLM configurations outperform the best single
configuration in diagnosis prediction? (2) How sensitive is majority voting
accuracy to LLM hyperparameters such as temperature, top-p, and summary length?
To evaluate, we created a new dataset of 240 expert-annotated
medication-diagnosis pairs from 20 MIMIC-IV notes. Using GPT-3.5 Turbo, we ran
18 prompting configurations across short and long summary lengths, generating
8568 test cases. Results show that majority voting achieved 75 percent
accuracy, outperforming the best single configuration at 66 percent. No single
hyperparameter setting dominated, but combining deterministic, balanced, and
exploratory strategies improved performance. Shorter summaries generally led to
higher accuracy.In conclusion, ensemble-style majority voting with diverse LLM
configurations improves diagnosis prediction in EHRs and offers a promising
method to link medications and diagnoses in clinical texts.