Article ID: | iaor201522016 |
Volume: | 45 |
Issue: | 1 |
Start Page Number: | 115 |
End Page Number: | 145 |
Publication Date: | Feb 2014 |
Journal: | Decision Sciences |
Authors: | Ganguly Subhamoy, Lawrence Stephen, Prather Mark |
Keywords: | combinatorial optimization, allocation: resources, statistics: empirical, demand |
In the face of high staffing costs, uncertain patient arrivals, and patients unsatisfied with long wait times, staffing of medical emergency departments (EDs) is a vexing problem. Using empirical data collected from three active EDs, we develop an analytic model to provide an effective staffing plan for EDs. Patient demand is aggregated into discrete time buckets and used to model the stochastic distribution of patient demand within these buckets, which considerably improves model tractability. This model is capable of scheduling providers with different skill profiles who work either individually or in teams, and with patients of varying acuity levels. We show how our model helps to balance staffing costs and patient service levels, and how it facilitates examination of important ED staffing policies.