• Title of article

    Optimization of Service Process in Emergency Depart- ment Using Discrete Event Simulation and Machine Learning Algorithm

  • Author/Authors

    Hosseini Shokouh, Morteza Health Management Research Center - Baqiyatallah University of Medical Sciences, Tehran, Iran , Mohammadi, Kasra Industrial Management Department - Allame Tabataba’i University, Tehran, Iran , Yaghoubi,Maryam Health Management Research Center - Baqiyatallah University of Medical Sciences, Tehran, Iran

  • Pages
    8
  • From page
    1
  • To page
    8
  • Abstract
    Introduction: Emergency departments are operating with limited resources and high levels of unexpected re- quests. This study aimed to minimize patients’ waiting time and the percentage of units’ engagement to improve the emergency department (ED) efficiency. Methods: A comprehensive combination method involving Discrete Event Simulation (DES), Artificial Neural Network (ANN) algorithm, and finally solving the model by use of Ge- netic Algorithm (GA) was used in this study. After simulating the case and making sure about the validity of the model, experiments were designed to study the effects of change in individuals and equipment on the average time that patients wait, as well as units’ engagement in ED. Objective functions determined using Artificial Neu- ral Network algorithm and MATLAB software were used to train it. Finally, after estimating objective functions and adding related constraints to the problem, a fractional Genetic Algorithm was used to solve the model. Re- sults: According to the model optimization result, it was determined that the hospitalization unit, as well as the hospitalization units’ doctors, were in an optimized condition, but the triage unit, as well as the fast track units’ doctors, should be optimized. After experiments in which the average waiting time in the triage section reached near zero, the average waiting time in the screening section was reduced to 158.97 minutes and also the coefficient of units’ engagement in both sections were 69% and 84%, respectively. Conclusion: Using the ser- vice optimization method creates a significant improvement in patient’s waiting time and stream at emergency departments, which is made possible through appropriate allocation of the human and material resources.
  • Keywords
    Efficiency , Emergency Service Hospital , Operations Research , Patients
  • Journal title
    Archives of Academic Emergency Medicine (AAEM)
  • Serial Year
    2022
  • Record number

    2728014