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ABSTRACT
The purpose of this article is to discuss some of the more challenging issues associated with conducting simulation in healthcare., The current healthcare environment is ripe for the use of simulation. The pressure to control costs is higher than ever, so, there is a critical need for powerful tools which can help clinicians and administrators (our clients) make good decisions on how to achieve objectives of reducing costs while maintaining high quality care. In addition, the highly stochastic nature of disease processes, as well as the complexity of subsystem interactions, makes simulation the decision-support tool of choice for analyzing the organization and delivery of healthcare services. However, for simulation to reach its potential as a major weapon in the fight against spiraling healthcare costs, pragmatic approaches to several challenging technical questions must be offered and discussed. Therefore, this article will present approaches to dealing with the following, frequently encountered tactical issues in simulating healthcare services--degree of model complexity, definitions of input distributions, model validation, and interpretation of findings. The last issue to be discussed is less of a technical concern, and instead addresses the promotion of simulation in healthcare.
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Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.
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CITED BY 9
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José A. Sepúlveda , William J. Thompson , Felipe F. Baesler , María I. Alvarez , Lonnie E. Cahoon, III, The use of simulation for process improvement in a cancer treatment center, Proceedings of the 31st conference on Winter simulation: Simulation---a bridge to the future, p.1541-1548, December 05-08, 1999, Phoenix, Arizona, United States
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Catherine Drury Barnes , Joaquin L. Quiason , Carson Benson , Deidre McGuiness, Success stories in simulation in health care, Proceedings of the 29th conference on Winter simulation, p.1280-1285, December 07-10, 1997, Atlanta, Georgia, United States
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