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How does Imaging Impact Patient Flow in Emergency Departments?

2022-09-24 02:03:19
Vishnunarayan Girishan Prabhu, Kevin Taaffe, Marisa Shehan, Ronald Pirrallo, William Jackson, Michael Ramsay, Jessica Hobbs

Abstract

Emergency Department (ED) overcrowding continues to be a public health issue as well as a patient safety issue. The underlying factors leading to ED crowding are numerous, varied, and complex. Although lack of in-hospital beds is frequently attributed as the primary reason for crowding, ED's dependencies on other ancillary resources, including imaging, consults, and labs, also contribute to crowding. Using retrospective data associated with imaging, including delays, processing time, and the number of image orders, from a large tier 1 trauma center, we developed a discrete event simulation model to identify the impact of the imaging delays and bundling image orders on patient time in the ED. Results from sensitivity analysis show that reducing the delays associated with imaging and bundling as few as 10% of imaging orders for certain patients can significantly (p-value < 0.05) reduce the time a patient spends in the ED.

Abstract (translated)

URL

https://arxiv.org/abs/2209.12895

PDF

https://arxiv.org/pdf/2209.12895.pdf


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