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Published in: Journal of Medical Systems 10/2015

01-10-2015 | Systems-Level Quality Improvement

StratBAM: A Discrete-Event Simulation Model to Support Strategic Hospital Bed Capacity Decisions

Authors: Priyantha Devapriya, Christopher T. B. Strömblad, Matthew D. Bailey, Seth Frazier, John Bulger, Sharon T. Kemberling, Kenneth E Wood

Published in: Journal of Medical Systems | Issue 10/2015

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Abstract

The ability to accurately measure and assess current and potential health care system capacities is an issue of local and national significance. Recent joint statements by the Institute of Medicine and the Agency for Healthcare Research and Quality have emphasized the need to apply industrial and systems engineering principles to improving health care quality and patient safety outcomes. To address this need, a decision support tool was developed for planning and budgeting of current and future bed capacity, and evaluating potential process improvement efforts. The Strategic Bed Analysis Model (StratBAM) is a discrete-event simulation model created after a thorough analysis of patient flow and data from Geisinger Health System’s (GHS) electronic health records. Key inputs include: timing, quantity and category of patient arrivals and discharges; unit-level length of care; patient paths; and projected patient volume and length of stay. Key outputs include: admission wait time by arrival source and receiving unit, and occupancy rates. Electronic health records were used to estimate parameters for probability distributions and to build empirical distributions for unit-level length of care and for patient paths. Validation of the simulation model against GHS operational data confirmed its ability to model real-world data consistently and accurately. StratBAM was successfully used to evaluate the system impact of forecasted patient volumes and length of stay in terms of patient wait times, occupancy rates, and cost. The model is generalizable and can be appropriately scaled for larger and smaller health care settings.
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Metadata
Title
StratBAM: A Discrete-Event Simulation Model to Support Strategic Hospital Bed Capacity Decisions
Authors
Priyantha Devapriya
Christopher T. B. Strömblad
Matthew D. Bailey
Seth Frazier
John Bulger
Sharon T. Kemberling
Kenneth E Wood
Publication date
01-10-2015
Publisher
Springer US
Published in
Journal of Medical Systems / Issue 10/2015
Print ISSN: 0148-5598
Electronic ISSN: 1573-689X
DOI
https://doi.org/10.1007/s10916-015-0325-0

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