Enhancing emergency department patient arrival forecasting: a study using feature engineering and advanced machine learning algorithms
Bruno Matos Porto,
Flavio S. Fogliatto
Abstract:Background
Emergency department (ED) overcrowding is an important problem in many countries. Accurate predictions of patient arrivals in EDs can serve as a management baseline for better allocation of staff and medical resources. In this article, we investigate the use of calendar and meteorological predictors, as well as feature engineered variables, to forecast daily patient arrivals using datasets from eleven different EDs across 3 countries.
Methods
Six machine learning algorithms were tested, considerin… Show more
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