New bed configurations and discharge timing policies: A hospital-wide simulation
- PMID: 36377221
- DOI: 10.1111/1742-6723.14135
New bed configurations and discharge timing policies: A hospital-wide simulation
Abstract
Objective: Optimising patient flow is becoming an increasingly critical issue as patient demand fluctuates in healthcare systems with finite capacity. Simulation provides a powerful tool to fine-tune policies and investigate their impact before any costly intervention.
Methods: A hospital-wide discrete event simulation is developed to model incoming flow from ED and elective units in a busy metropolitan hospital. The impacts of two different policies are investigated using this simulation model: (i) varying inpatient bed configurations and a load sharing strategy among a cluster of wards within a medical department and (ii) early discharge strategies on inpatient bed access. Several clinically relevant bed configurations and early discharge scenarios are defined and their impact on key performance metrics are quantified.
Results: Sharing beds between wards reduced the average and total ED length of stay (LOS) by 21% compared to having patients queue for individual wards. The current baseline performance level could be maintained by using fewer beds when the load sharing approach was imposed. Earlier discharge of inpatients resulted in reducing average patient ED LOS by approximately 16% and average patient waiting time by 75%. Specific time-based discharge targets led to greater improvements in flow compared to blanket approaches of discharging all patients 1 or 2 hours earlier.
Conclusions: ED access performance for admitted patients can be improved by modifying downstream capacity or inpatient discharge times. The simulation model was able to quantify the potential impacts of such policies on patient flow and to provide insights for future strategic planning.
Keywords: decision making; decision support systems; discrete-event simulation; resource management; strategic planning.
© 2022 Commonwealth of Australia. Emergency Medicine Australasia published by John Wiley & Sons Australia, Ltd on behalf of Australasian College for Emergency Medicine.
References
-
- van Hulzen G, Martin N, Depaire B, Souverijns G. Supporting capacity management decisions in healthcare using data-driven process simulation. J. Biomed. Inform. 2022; 129: 104060.
-
- Hoot NR, Aronsky D. Systematic review of emergency department crowding: causes, effects, and solutions. Ann. Emerg. Med. 2008; 52: 126-36.
-
- Mohiuddin S, Busby J, Savovic J et al. Patient flow within UK emergency departments: a systematic review of the use of computer simulation modelling methods. BMJ Open 2017; 7: e015007.
-
- Salmon A, Rachuba S, Briscoe S, Pitt M. A structured literature review of simulation modelling applied to emergency departments: current patterns and emerging trends. Oper. Res. Health Care 2018; 19: 1-13.
-
- Khanna S, Boyle J, Good N, Bell A, Lind J. Analysing the emergency department patient journey: discovery of bottlenecks to emergency department patient flow. Emerg. Med. Australas. 2017; 29: 18-23.
Publication types
MeSH terms
LinkOut - more resources
Full Text Sources