2023
DOI: 10.1101/2023.10.20.23297156
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Identifying Signs and Symptoms of Urinary Tract Infection from Emergency Department Clinical Notes Using Large Language Models

Mark Iscoe,
Vimig Socrates,
Aidan Gilson
et al.

Abstract: Objectives: Symptom characterization is critical to urinary tract infection (UTI) diagnosis, but identification of symptoms from the electronic health record (EHR) is challenging, limiting large-scale research, public health surveillance, and EHR-based clinical decision support. We therefore developed and compared two natural language processing (NLP) models to identify UTI symptoms from unstructured emergency department (ED) notes. Methods: The study population consisted of patients aged ≥18 who presented to … Show more

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