Predicting hospital emergency department visits accurately: A systematic review

Author:

Silva Eduardo1ORCID,Pereira Margarida F.1,Vieira Joana T.2ORCID,Ferreira‐Coimbra João2,Henriques Mariana3,Rodrigues Nuno F.456

Affiliation:

1. University of Minho Braga Portugal

2. University Hospital Center of São João Porto Portugal

3. Centre of Biological Engineering University of Minho Braga Portugal

4. INESC TEC Porto Portugal

5. Algoritmi Research Center University of Minho Braga Portugal

6. 2Ai – School of Technology IPCA Barcelos Portugal

Abstract

AbstractObjectivesThe emergency department (ED) is a very important healthcare entrance point, known for its challenging organisation and management due to demand unpredictability. An accurate forecast system of ED visits is crucial to the implementation of better management strategies that optimise resources utilization, reduce costs and improve public confidence. The aim of this review is to investigate the different factors that affect the ED visits forecasting outcomes, in particular the predictive variables and type of models applied.MethodsA systematic search was conducted in PubMed, Web of Science and Scopus. The review methodology followed the PRISMA statement guidelines.ResultsSeven studies were selected, all exploring predictive models to forecast ED daily visits for general care. MAPE and RMAE were used to measure models' accuracy. All models displayed good accuracy, with errors below 10%.ConclusionsModel selection and accuracy was found to be particularly sensitive to the ED dimension. While ARIMA‐based and other linear models have good performance for short‐time forecast, some machine learning methods proved to be more stable when forecasting multiple horizons. The inclusion of exogenous variables was found to be advantageous only in bigger EDs.

Publisher

Wiley

Subject

Health Policy

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