Predicting the risk of emergency admission with machine learning: Development and validation using linked electronic health records.
Fatemeh RahimianGholamreza Salimi-KhorshidiAmir H PayberahJenny TranRoberto Ayala SolaresFrancesca RaimondiMilad NazarzadehDexter CanoyKazem RahimiPublished in: PLoS medicine (2018)
The use of machine learning and addition of temporal information led to substantially improved discrimination and calibration for predicting the risk of emergency admission. Model performance remained stable across a range of prediction time windows and when externally validated. These findings support the potential of incorporating machine learning models into electronic health records to inform care and service planning.