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Choosing where to set the threshold between low- and high-risk patients: Evaluating a classification tool within a simulation

Choosing where to set the threshold between low- and high-risk patients: Evaluating a classification tool within a simulation
Choosing where to set the threshold between low- and high-risk patients: Evaluating a classification tool within a simulation

Health service providers must balance the needs of high-risk patients who require urgent medical attention against those of lower-risk patients who require reassurance or less urgent medical care. Based on their characteristics, we developed a tool to classify patients as low- or high-risk, with correspondingly different patient pathways through a service. Rather than choosing the threshold between low- and high-risk patients solely considering classification accuracy, we demonstrate the use of discrete-event simulation to find the best threshold from an operational perspective as well. Moreover, the predictors in classification tools are often categorical, and may be inter-dependent. Defining joint distributions of these variables from empirical data assumes that missing combinations are impossible. Our new approach involves using Poisson regression to estimate the joint distributions in the underlying population. We demonstrate our methods on a practical example: setting the threshold between low- and high-risk patients with proposed different pathways through a breast diagnostic clinic.

Simulation, credit scoring, health services, regression, risk
0160-5682
1-13
Saville, Christina E.
2c726abd-1604-458c-bc0b-daeef1b084bd
Smith, Honora K.
1eaef6a6-4b9c-4997-9163-137b956c06b5
Bijak, Katarzyna
5130b6b9-fbf1-44e8-9106-1dd69c6692a6
Leonard, Pauline
a2839090-eccc-4d84-ab63-c6a484c6d7c1
Saville, Christina E.
2c726abd-1604-458c-bc0b-daeef1b084bd
Smith, Honora K.
1eaef6a6-4b9c-4997-9163-137b956c06b5
Bijak, Katarzyna
5130b6b9-fbf1-44e8-9106-1dd69c6692a6
Leonard, Pauline
a2839090-eccc-4d84-ab63-c6a484c6d7c1

Saville, Christina E., Smith, Honora K., Bijak, Katarzyna and Leonard, Pauline (2022) Choosing where to set the threshold between low- and high-risk patients: Evaluating a classification tool within a simulation. Journal of the Operational Research Society, 1-13. (doi:10.1080/01605682.2022.2096497).

Record type: Article

Abstract

Health service providers must balance the needs of high-risk patients who require urgent medical attention against those of lower-risk patients who require reassurance or less urgent medical care. Based on their characteristics, we developed a tool to classify patients as low- or high-risk, with correspondingly different patient pathways through a service. Rather than choosing the threshold between low- and high-risk patients solely considering classification accuracy, we demonstrate the use of discrete-event simulation to find the best threshold from an operational perspective as well. Moreover, the predictors in classification tools are often categorical, and may be inter-dependent. Defining joint distributions of these variables from empirical data assumes that missing combinations are impossible. Our new approach involves using Poisson regression to estimate the joint distributions in the underlying population. We demonstrate our methods on a practical example: setting the threshold between low- and high-risk patients with proposed different pathways through a breast diagnostic clinic.

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More information

Accepted/In Press date: 12 June 2022
e-pub ahead of print date: 5 July 2022
Published date: 5 July 2022
Additional Information: Publisher Copyright: © 2022 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group.
Keywords: Simulation, credit scoring, health services, regression, risk

Identifiers

Local EPrints ID: 469062
URI: http://eprints.soton.ac.uk/id/eprint/469062
ISSN: 0160-5682
PURE UUID: a71f2f8f-da20-4f78-a928-2bed3d9b44da
ORCID for Christina E. Saville: ORCID iD orcid.org/0000-0001-7718-5689
ORCID for Honora K. Smith: ORCID iD orcid.org/0000-0002-4974-3011
ORCID for Katarzyna Bijak: ORCID iD orcid.org/0000-0003-1416-9045
ORCID for Pauline Leonard: ORCID iD orcid.org/0000-0002-8112-0631

Catalogue record

Date deposited: 05 Sep 2022 17:05
Last modified: 17 Mar 2024 07:26

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