Title of article :
Emergency Department Capacity Planning: A Recurrent Neural Network and Simulation Approach
Author/Authors :
Nas, Serkan Department of Industrial Engineering - Çukurova University - Sarıçam, Turkey , Koyuncu, Melik Department of Industrial Engineering - Çukurova University - Sarıçam, Turkey
Abstract :
Emergency departments (EDs) play a vital role in the whole healthcare system as they are the first point of care in hospitals for urgent and
critically ill patients. +erefore, effective management of hospital’s ED is crucial in improving the quality of the healthcare service. +e
effectiveness depends on how efficiently the hospital resources are used, particularly under budget constraints. Simulation modeling is one
of the best methods to optimize resources and needs inputs such as patients’ arrival time, patient’s length of stay (LOS), and the route of
patients in the ED. +is study develops a simulation model to determine the optimum number of beds in an ED by minimizing the
patients’ LOS.+e hospital data are analyzed, and patients’ LOS and the route of patients in the ED are determined. To determine patients’
arrival times, the features associated with patients’ arrivals at ED are identified. Mean arrival rate is used as a feature in addition to climatic
and temporal variables. +e exhaustive feature-selection method has been used to determine the best subset of the features, and the mean
arrival rate is determined as one of the most significant features. +is study is executed using the one-year ED arrival data together with
five-year (43.824 study hours) ED arrival data to improve the accuracy of predictions. Furthermore, ten different machine learning (ML)
algorithms are used utilizing the same best subset of these features. After a tenfold cross-validation experiment, based on mean absolute
percentage error (MAPE), the stateful long short-term memory (LSTM) model performed better than other models with an accuracy of
47%, followed by the decision tree and random forest methods. Using the simulation method, the LOS has been minimized by 7% and the
number of beds at the ED has been optimized.
Keywords :
Department , Simulation , ED , LSTM
Journal title :
Computational and Mathematical Methods in Medicine