Identifying signs and symptoms of urinary tract infection from emergency department clinical notes using large language models.
Mark IscoeVimig SocratesAidan GilsonLing ChiHuan LiThomas HuangThomas KearnsRachelle PerkinsLaura KhandjianRichard Andrew TaylorPublished in: Academic emergency medicine : official journal of the Society for Academic Emergency Medicine (2024)
The study demonstrated the utility of LLMs and transformer-based models in particular for extracting UTI symptoms from unstructured ED clinical notes; models were highly accurate for detecting the presence or absence of any UTI symptom on the note level, with variable performance for individual symptoms.