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Machine learning using institution-specific multi-modal electronic health records improves mortality risk prediction for cardiac surgery patients
14
Zitationen
8
Autoren
2023
Jahr
Abstract
Machine learning models using institution-specific multi-modal electronic health records may improve performance in predicting mortality for individual patients undergoing cardiac surgery compared with the standard-of-care, population-derived Society of Thoracic Surgeons models. Institution-specific models may provide insights complementary to population-derived risk predictions to aid patient-level decision making.
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