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Appointment capacity planning in specialty clinics: a queueing approach

Appointment capacity planning in specialty clinics: a queueing approach
Appointment capacity planning in specialty clinics: a queueing approach
Specialty clinics provide specialized care for patients referred by primary care physicians, emergency departments, or other specialists. Urgent patients must often be seen on the referral day, whereas nonurgent referrals are typically booked an appointment for the future. To deliver a balanced performance, the clinics must know how much “appointment capacity” is needed for achieving a reasonably quick access for nonurgent patients. To help identify the capacity that leads to the desired performance, we model the dynamics of appointment backlog as novel discrete-time bulk service queues and develop numerical methods for efficient computation of corresponding performance metrics. Realistic features such as arbitrary referral and clinic appointment cancellation distributions, delay-dependent no-show behaviour, and rescheduling of no-shows are explicitly captured in our models. The accuracy of the models in predicting performance as well as their usefulness in appointment capacity planning is demonstrated using real data. We also show the application of our models in capacity planning in clinics where patient panel size, rather than appointment capacity, is the major decision variable.
probability: stochastic model, health care, queues
0030-364X
916-930
Izady, Navid
bca6a7c0-064b-4502-a273-5645723a0b02
Izady, Navid
bca6a7c0-064b-4502-a273-5645723a0b02

Izady, Navid (2015) Appointment capacity planning in specialty clinics: a queueing approach. Operations Research, 63 (4), 916-930. (doi:10.1287/opre.2015.1391).

Record type: Article

Abstract

Specialty clinics provide specialized care for patients referred by primary care physicians, emergency departments, or other specialists. Urgent patients must often be seen on the referral day, whereas nonurgent referrals are typically booked an appointment for the future. To deliver a balanced performance, the clinics must know how much “appointment capacity” is needed for achieving a reasonably quick access for nonurgent patients. To help identify the capacity that leads to the desired performance, we model the dynamics of appointment backlog as novel discrete-time bulk service queues and develop numerical methods for efficient computation of corresponding performance metrics. Realistic features such as arbitrary referral and clinic appointment cancellation distributions, delay-dependent no-show behaviour, and rescheduling of no-shows are explicitly captured in our models. The accuracy of the models in predicting performance as well as their usefulness in appointment capacity planning is demonstrated using real data. We also show the application of our models in capacity planning in clinics where patient panel size, rather than appointment capacity, is the major decision variable.

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More information

Submitted date: 9 December 2014
Accepted/In Press date: 27 March 2015
e-pub ahead of print date: 1 June 2015
Published date: August 2015
Keywords: probability: stochastic model, health care, queues
Organisations: Operational Research, Southampton Business School

Identifiers

Local EPrints ID: 373484
URI: http://eprints.soton.ac.uk/id/eprint/373484
ISSN: 0030-364X
PURE UUID: 487998f8-eb86-4ace-bb3b-87837d041afc

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Date deposited: 20 Jan 2015 14:51
Last modified: 14 Mar 2024 18:53

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Contributors

Author: Navid Izady

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