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Erschienen in: Journal of Intelligent Information Systems 3/2021

15.03.2021

Forecasting emergency department admissions

verfasst von: Carlos Narciso Rocha, Fátima Rodrigues

Erschienen in: Journal of Intelligent Information Systems | Ausgabe 3/2021

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Abstract

The emergency department of a hospital plays an extremely important role in the healthcare of patients. To maintain a high quality service, clinical professionals need information on how patient flow will evolve in the immediate future. With accurate emergency department forecasts it is possible to better manage available human resources by allocating clinical staff before peak periods, thus preventing service congestion, or releasing clinical staff at less busy times. This paper describes a solution developed for the presentation of hourly, four-hour, eight-hour and daily number of admissions to a hospital’s emergency department. A 10-year history (2009-2018) of the number of emergency admissions in a Portuguese hospital was used. To create the models several methods were tested, including exponential smoothing, SARIMA, autoregressive and recurrent neural network, XGBoost and ensemble learning. The models that generated the most accurate hourly time predictions were the recurrent neural network with one-layer (sMAPE = 23.26%) and with three layers (sMAPE = 23.12%) and XGBoost (sMAPE = 23.70%). In terms of efficiency, the XGBoost method has by far outperformed all others. The success of the recurrent neuronal network and XGBoost machine learning methods applied to the prediction of the number of emergency department admissions has been demonstrated here, with an accuracy that surpasses the models found in the literature.

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Metadaten
Titel
Forecasting emergency department admissions
verfasst von
Carlos Narciso Rocha
Fátima Rodrigues
Publikationsdatum
15.03.2021
Verlag
Springer US
Erschienen in
Journal of Intelligent Information Systems / Ausgabe 3/2021
Print ISSN: 0925-9902
Elektronische ISSN: 1573-7675
DOI
https://doi.org/10.1007/s10844-021-00638-9

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