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Prediction of Venous Thromboembolism in Diverse Populations Using Machine Learning and Structured Electronic Health Records.

Robert ChenBen Omega PetrazziniWaqas MalickRobert S RosensonRon Do
Published in: Arteriosclerosis, thrombosis, and vascular biology (2023)
Machine learning models using structured electronic health record data can significantly improve VTE diagnosis and 1-year risk prediction in diverse populations. Model probability scores exist on a continuum, affecting mortality risk in both healthy individuals and VTE cases. Integrating these models into electronic health record systems to generate real-time predictions may enhance VTE risk assessment, early detection, and preventative measures, ultimately reducing the morbidity and mortality associated with VTE.
Keyphrases
  • electronic health record
  • venous thromboembolism
  • direct oral anticoagulants
  • clinical decision support
  • machine learning
  • risk assessment
  • adverse drug
  • big data
  • atrial fibrillation