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Forecasting emergency department hourly occupancy using time series analysis - 09/10/21

Doi : 10.1016/j.ajem.2021.04.075 
Qian Cheng a , Nilay Tanik Argon a , Christopher Scott Evans b, , Yufeng Liu a, c, d, e, f , Timothy F. Platts-Mills g, h , Serhan Ziya a
a Department of Statistics and Operations Research, University of North Carolina at Chapel Hill (UNC), NC, USA 
b Department of Emergency Medicine, Clinical Informatics Fellowship Program, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA 
c Department of Genetics, University of North Carolina at Chapel Hill (UNC), NC, USA 
d Department of Biostatistics, University of North Carolina at Chapel Hill (UNC), NC, USA 
e Carolina Center for Genome Sciences, University of North Carolina at Chapel Hill (UNC), NC, USA 
f Lineberger Comprehensive Cancer Center, University of North Carolina at Chapel Hill (UNC), NC, USA 
g Department of Emergency Medicine, UNC School of Medicine, NC, USA 
h Quantworks, Inc., Carrboro, NC, USA 

Corresponding author at: Department of Emergency, Medicine University of North Carolina at Chapel Hill, 170 Manning Dr., CB# 7594, Chapel Hill, NC 27514, USA.Department of EmergencyMedicine University of North Carolina at Chapel Hill170 Manning Dr., CB# 7594Chapel HillNC27514USA

Abstract

Study objective

To develop a novel predictive model for emergency department (ED) hourly occupancy using readily available data at time of prediction with a time series analysis methodology.

Methods

We performed a retrospective analysis of all ED visits from a large academic center during calendar year 2012 to predict ED hourly occupancy. Due to the time-of-day and day-of-week effects, a seasonal autoregressive integrated moving average with external regressor (SARIMAX) model was selected. For each hour of a day, a SARIMAX model was built to predict ED occupancy up to 4-h ahead. We compared the resulting model forecast accuracy and prediction intervals with previously studied time series forecasting methods.

Results

The study population included 65,132 ED visits at a large academic medical center during the year 2012. All adult ED visits during the first 265 days were used as a training dataset, while the remaining ED visits comprised the testing dataset. A SARIMAX model performed best with external regressors of current ED occupancy, average department-wide ESI, and ED boarding total at predicting up to 4-h-ahead ED occupancy (Mean Square Error (MSE) of 16.20, and 64.47 for 1-hr- and 4-h- ahead occupancy, respectively). Our 24-SARIMAX model outperformed other popular time series forecasting techniques, including a 60% improvement in MSE over the commonly used rolling average method, while maintaining similar prediction intervals.

Conclusion

Accounting for current ED occupancy, average department-wide ESI, and boarding total, a 24-SARIMAX model was able to provide up to 4 h ahead predictions of ED occupancy with improved performance characteristics compared to other forecasting methods, including the rolling average. The prediction intervals generated by this method used data readily available in most EDs and suggest a promising new technique to forecast ED occupancy in real time.

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Keywords : ED crowding, Time series methods


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Vol 48

P. 177-182 - octobre 2021 Retour au numéro
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