AI Article Synopsis

  • * The study aimed to predict emergency department patient arrivals during the pandemic and evaluated various forecasting models, including their performance over different time frames.
  • * Findings indicated that the Holt-Winters model was the best for short-term predictions, while the Long Short-Term Memory model excelled for long-term forecasts, helping to improve hospital resource planning by accurately anticipating patient surges.

Article Abstract

The COVID-19 pandemic has heightened the existing concern about the uncertainty surrounding patient arrival and the overutilization of resources in emergency departments (EDs). The prediction of variations in patient arrivals is vital for managing limited healthcare resources and facilitating data-driven resource planning. The objective of this study was to forecast ED patient arrivals during a pandemic over different time horizons. A secondary objective was to compare the performance of different forecasting models in predicting ED patient arrivals. We included all ED patient encounters at an urban teaching hospital between January 2019 and December 2020. We divided the data into training and testing datasets and applied univariate and multivariable forecasting models to predict daily ED visits. The influence of COVID-19 lockdown and climatic factors were included in the multivariable models. The model evaluation consisted of the root mean square error (RMSE) and mean absolute error (MAE) over different forecasting horizons. Our exploratory analysis illustrated that monthly and weekly patterns impact daily demand for care. The Holt-Winters approach outperformed all other univariate and multivariable forecasting models for short-term predictions, while the Long Short-Term Memory approach performed best in extended predictions. The developed forecasting models are able to accurately predict ED patient arrivals and peaks during a surge when tested on two years of data from a high-volume urban ED. These short- and long-term prediction models can potentially enhance ED and hospital resource planning.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9222821PMC
http://dx.doi.org/10.3390/healthcare10061120DOI Listing

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