Hourly Forecasting of Emergency Department Arrivals : Time Series Analysis
Avishek Choudhury

TL;DR
This study demonstrates that ARIMA models can effectively forecast hourly emergency department arrivals, aiding hospital management and resource planning through accurate, data-driven predictions.
Contribution
The research introduces hourly time series forecasting of ED arrivals using ARIMA and neural network methods, highlighting ARIMA's effectiveness for operational decision support.
Findings
ARIMA (3,0,0)(2,1,0)) was identified as the best model based on AIC and BIC.
The model achieved an ME of 1.001 and RMSE of 1.55, indicating high accuracy.
ARIMA forecasts can be integrated into hospital decision support systems.
Abstract
Background: The stochastic behavior of patient arrival at an emergency department (ED) complicates the management of an ED. More than 50% of hospitals ED capacity tends to operate beyond its normal capacity and eventually fails to deliver high-quality care. To address the concern of stochastics ED arrivals, many types of research has been done using yearly, monthly and weekly time series forecasting. Aim: Our research team believes that hourly time-series forecasting of the load can improve ED management by predicting the arrivals of future patients, and thus, can support strategic decisions in terms of quality enhancement. Methods: Our research does not involve any human subject, only ED admission data from January 2014 to August 2017 retrieved from the UnityPoint Health database. Autoregressive integrated moving average (ARIMA), Holt Winters, TBATS, and neural network methods were…
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