A queuing-based decision support methodology to estimate hospital inpatient bed demand

A queuing-based decision support methodology to estimate hospital inpatient bed demand

0.00 Avg rating0 Votes
Article ID: iaor200911695
Country: United Kingdom
Volume: 59
Issue: 11
Start Page Number: 1471
End Page Number: 1482
Publication Date: Nov 2008
Journal: Journal of the Operational Research Society
Authors: ,
Keywords: artificial intelligence: decision support, queues: applications
Abstract:

Hospital inpatient bed capacity might be better described as evolved than planned. At least two challenges lead to this behaviour: different views of patient demand implied by different data sets in a hospital and limited use of scientific methods for capacity estimation. In this paper, we statistically examine four distinct hospital inpatient data sets for internal consistency and potential usefulness for estimating true patient bed demand. We conclude that posterior financial data, billing data, rather than the census data commonly relied upon, yields true hospital bed demand. Subsequently, a capacity planning tool, based upon queuing theory and financial data only, is developed. The delivery mechanism is an Excel spreadsheet. One adjusts input parameters including patient volume and mix and instantaneously monitors the effect on bed needs across multiple levels of care. A case study from a major hospital in Phoenix, Arizona, USA is used throughout to demonstrate the methodologies.

Reviews

Required fields are marked *. Your email address will not be published.