2021
DOI: 10.1186/s12913-021-06918-y
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Dynamic capacity allocation in a radiology service considering different types of patients, individual no-show probabilities, and overbooking

Abstract: Background We propose a mathematical model formulated as a finite-horizon Markov Decision Process (MDP) to allocate capacity in a radiology department that serves different types of patients. To the best of our knowledge, this is the first attempt at considering radiology resources with different capacities and individual no-show probabilities of ambulatory patients in an MDP model. To mitigate the negative impacts of no-show, overbooking rules are also investigated. … Show more

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Cited by 4 publications
(5 citation statements)
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“…based on patient characteristics to better specify individual uncertainties (e.g. da Silva et al, 2021;Yan et al, 2022). Moreover, results relative to VSS show that using stochastic optimisation rather than the average scenario to determine first-and second-stage decisions leads to a significant improvement of 17.67% in the objective value.…”
Section: Value Of Information and The Stochastic Solutionmentioning
confidence: 99%
“…based on patient characteristics to better specify individual uncertainties (e.g. da Silva et al, 2021;Yan et al, 2022). Moreover, results relative to VSS show that using stochastic optimisation rather than the average scenario to determine first-and second-stage decisions leads to a significant improvement of 17.67% in the objective value.…”
Section: Value Of Information and The Stochastic Solutionmentioning
confidence: 99%
“…Use of external applications with comprehensive high quality and consistent datasets is an important step to broaden the usage of OIS data from RT departments [3] . Examples of such applications include decision-support tools where RT staff can be assisted in decisions on resource allocations according to available capacity [4] , [5] . Other examples concern usage of dose/volume metrics in clinical studies, for quality assurance purposes or for dose–response modelling [6] , [7] .…”
Section: Introductionmentioning
confidence: 99%
“…Other examples concern usage of dose/volume metrics in clinical studies, for quality assurance purposes or for dose–response modelling [6] , [7] . Regardless of application, preparing OIS data for external use can be a lengthy (manual) task, particularly for situations where new datasets need to be extracted frequently [2] , [5] . Data efforts in RT rarely focus on the practical side of data collection and extraction as most of the research focuses on development of applications to improve the workflow or other aspects of RT [8] .…”
Section: Introductionmentioning
confidence: 99%
“…Os usuários que necessitam do serviço podem estar internados, em situação de urgência para atendimento ou serem encaminhados de setores ambulatoriais. As instalações das unidades devem atender as demandas dos sistemas de saúde e possibilitar a realização de exames rápidos com diagnóstico oportuno e encaminhamento adequado dos usuários para os tratamentos (3) .…”
Section: Introductionunclassified