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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 Taylor
Published 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.
Keyphrases
  • urinary tract infection
  • emergency department
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  • autism spectrum disorder
  • physical activity
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