
A discrete event simulation tool to support and predict hospital and clinic staffing.
We demonstrate how to develop a simulation tool to help healthcare managers and administrators predict and plan for staffing needs in a hospital neonatal intensive care unit using administrative data. We developed a discrete event simulation model of nursing staff needed in a neonatal intensive care unit and then validated the model against historical data. The process flow was translated into a discrete event simulation model. Results demonstrated that the model can be used to give a respectable estimate of annual admissions, transfers, and deaths based upon two different staffing levels. The discrete event simulation tool model can provide healthcare managers and administrators with (1) a valid method of modeling patient mix, patient acuity, staffing needs, and costs in the present state and (2) a forecast of how changes in a unit's staffing, referral patterns, or patient mix would affect a unit in a future state.
Duke Scholars
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Related Subject Headings
- Workforce
- Software Design
- Personnel Staffing and Scheduling
- North Carolina
- Medical Informatics
- Intensive Care Units, Neonatal
- Humans
- Hospitals
- Computer Simulation
- 4601 Applied computing
Citation

Published In
DOI
EISSN
Publication Date
Volume
Issue
Start / End Page
Location
Related Subject Headings
- Workforce
- Software Design
- Personnel Staffing and Scheduling
- North Carolina
- Medical Informatics
- Intensive Care Units, Neonatal
- Humans
- Hospitals
- Computer Simulation
- 4601 Applied computing