| Literature DB >> 33746612 |
Edilson F Arruda1,2, Paul Harper1, Tracey England1, Daniel Gartner1, Emma Aspland1, Fabrício O Ourique3, Tom Crosby4.
Abstract
This work proposes a novel framework for planning the capacity of diagnostic tests in cancer pathways that considers the aggregate demand of referrals from multiple cancer specialties (sites). The framework includes an analytic tool that recursively assesses the overall daily demand for each diagnostic test and considers general distributions for both the incoming cancer referrals and the number of required specific tests for any given patient. By disaggregating the problem with respect to each diagnostic test, we are able to model the system as a perishable inventory problem that can be solved by means of generalized G/D/C queuing models, where the capacity [Formula: see text] is allowed to vary and can be seen as a random variable that is adjusted according to prescribed performance measures. The approach aims to provide public health and cancer services with recommendations to align capacity and demand for cancer diagnostic tests effectively and efficiently. Our case study illustrates the applicability of our methods on lung cancer referrals from UK's National Health Service.Entities:
Keywords: capacity planning; healthcare modelling; inventory control; queuing systems
Year: 2020 PMID: 33746612 PMCID: PMC7958297 DOI: 10.1093/imaman/dpaa014
Source DB: PubMed Journal: IMA J Manag Math ISSN: 1471-678X Impact factor: 1.186