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Use of queue modelling in the analysis of elective patient treatment governed by a maximum waiting time guarantee

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Use of queue modelling in the analysis of elective patient treatment governed by a maximum waiting time guarantee. / Kozlowski, Dawid; Worthington, David.
In: European Journal of Operational Research, Vol. 244, No. 1, 01.07.2015, p. 331-338.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

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Kozlowski D, Worthington D. Use of queue modelling in the analysis of elective patient treatment governed by a maximum waiting time guarantee. European Journal of Operational Research. 2015 Jul 1;244(1):331-338. Epub 2015 Jan 22. doi: 10.1016/j.ejor.2015.01.024

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Kozlowski, Dawid ; Worthington, David. / Use of queue modelling in the analysis of elective patient treatment governed by a maximum waiting time guarantee. In: European Journal of Operational Research. 2015 ; Vol. 244, No. 1. pp. 331-338.

Bibtex

@article{7feef0204fbe41a784ab0997c4e857ac,
title = "Use of queue modelling in the analysis of elective patient treatment governed by a maximum waiting time guarantee",
abstract = "Many public healthcare systems struggle with excessive waiting lists for elective patient treatment. Different countries address this problem in different ways, and one interesting method entails a maximum waiting time guarantee. Introduced in Denmark in 2002, it entitles patients to treatment at a private hospital in Denmark or at a hospital abroad if the public healthcare system isunable to provide treatment within the stated maximum waiting time guarantee. Although clearly very attractive in some respects, many stakeholders have been very concerned about the negative consequences of the policy on the utilization of public hospital resources. This paper illustrates the use of a queue modelling approach in the analysis of elective patient treatment governed by the maximumwaiting time policy. Drawing upon the combined strengths of analytic and simulation approaches we develop both continuous-time Markov chain and discrete event simulation models, to provide an insightful analysis of the public hospital performance under the policy rules. The aim of this paper is tosupport the enhancement of the quality of elective patient care, to be brought about by better understanding of the policy implications by hospital planners and strategic decision makers.",
keywords = "Queueing, Simulation, Waiting lists, Waiting time guarantee",
author = "Dawid Kozlowski and David Worthington",
year = "2015",
month = jul,
day = "1",
doi = "10.1016/j.ejor.2015.01.024",
language = "English",
volume = "244",
pages = "331--338",
journal = "European Journal of Operational Research",
issn = "0377-2217",
publisher = "Elsevier Science B.V.",
number = "1",

}

RIS

TY - JOUR

T1 - Use of queue modelling in the analysis of elective patient treatment governed by a maximum waiting time guarantee

AU - Kozlowski, Dawid

AU - Worthington, David

PY - 2015/7/1

Y1 - 2015/7/1

N2 - Many public healthcare systems struggle with excessive waiting lists for elective patient treatment. Different countries address this problem in different ways, and one interesting method entails a maximum waiting time guarantee. Introduced in Denmark in 2002, it entitles patients to treatment at a private hospital in Denmark or at a hospital abroad if the public healthcare system isunable to provide treatment within the stated maximum waiting time guarantee. Although clearly very attractive in some respects, many stakeholders have been very concerned about the negative consequences of the policy on the utilization of public hospital resources. This paper illustrates the use of a queue modelling approach in the analysis of elective patient treatment governed by the maximumwaiting time policy. Drawing upon the combined strengths of analytic and simulation approaches we develop both continuous-time Markov chain and discrete event simulation models, to provide an insightful analysis of the public hospital performance under the policy rules. The aim of this paper is tosupport the enhancement of the quality of elective patient care, to be brought about by better understanding of the policy implications by hospital planners and strategic decision makers.

AB - Many public healthcare systems struggle with excessive waiting lists for elective patient treatment. Different countries address this problem in different ways, and one interesting method entails a maximum waiting time guarantee. Introduced in Denmark in 2002, it entitles patients to treatment at a private hospital in Denmark or at a hospital abroad if the public healthcare system isunable to provide treatment within the stated maximum waiting time guarantee. Although clearly very attractive in some respects, many stakeholders have been very concerned about the negative consequences of the policy on the utilization of public hospital resources. This paper illustrates the use of a queue modelling approach in the analysis of elective patient treatment governed by the maximumwaiting time policy. Drawing upon the combined strengths of analytic and simulation approaches we develop both continuous-time Markov chain and discrete event simulation models, to provide an insightful analysis of the public hospital performance under the policy rules. The aim of this paper is tosupport the enhancement of the quality of elective patient care, to be brought about by better understanding of the policy implications by hospital planners and strategic decision makers.

KW - Queueing

KW - Simulation

KW - Waiting lists

KW - Waiting time guarantee

U2 - 10.1016/j.ejor.2015.01.024

DO - 10.1016/j.ejor.2015.01.024

M3 - Journal article

VL - 244

SP - 331

EP - 338

JO - European Journal of Operational Research

JF - European Journal of Operational Research

SN - 0377-2217

IS - 1

ER -