Addressing preference heterogeneity in public health policy by combining Cluster Analysis and Multi-Criteria Decision Analysis: Proof of Method

The use of subgroups based on biological-clinical and socio-demographic variables to deal with population heterogeneity is well-established in public policy. The use of subgroups based on preferences is rare, except when religion based, and controversial. If it were decided to treat subgroup prefere...

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Veröffentlicht in:Health economics review 2015-01, Vol.5 (10), p.1-11, Article 10
Hauptverfasser: Kaltoft, Mette Kjer, Turner, Robin, Cunich, Michelle, Salkeld, Glenn, Nielsen, Jesper Bo, Dowie, Jack
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container_issue 10
container_start_page 1
container_title Health economics review
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creator Kaltoft, Mette Kjer
Turner, Robin
Cunich, Michelle
Salkeld, Glenn
Nielsen, Jesper Bo
Dowie, Jack
description The use of subgroups based on biological-clinical and socio-demographic variables to deal with population heterogeneity is well-established in public policy. The use of subgroups based on preferences is rare, except when religion based, and controversial. If it were decided to treat subgroup preferences as valid determinants of public policy, a transparent analytical procedure is needed. In this proof of method study we show how public preferences could be incorporated into policy decisions in a way that respects both the multi-criterial nature of those decisions, and the heterogeneity of the population in relation to the importance assigned to relevant criteria. It involves combining Cluster Analysis (CA), to generate the subgroup sets of preferences, with Multi-Criteria Decision Analysis (MCDA), to provide the policy framework into which the clustered preferences are entered. We employ three techniques of CA to demonstrate that not only do different techniques produce different clusters, but that choosing among techniques (as well as developing the MCDA structure) is an important task to be undertaken in implementing the approach outlined in any specific policy context. Data for the illustrative, not substantive, application are from a Randomized Controlled Trial of online decision aids for Australian men aged 40-69 years considering Prostate-specific Antigen testing for prostate cancer. We show that such analyses can provide policy-makers with insights into the criterion-specific needs of different subgroups. Implementing CA and MCDA in combination to assist in the development of policies on important health and community issues such as drug coverage, reimbursement, and screening programs, poses major challenges -conceptual, methodological, ethical-political, and practical - but most are exposed by the techniques, not created by them.
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The use of subgroups based on preferences is rare, except when religion based, and controversial. If it were decided to treat subgroup preferences as valid determinants of public policy, a transparent analytical procedure is needed. In this proof of method study we show how public preferences could be incorporated into policy decisions in a way that respects both the multi-criterial nature of those decisions, and the heterogeneity of the population in relation to the importance assigned to relevant criteria. It involves combining Cluster Analysis (CA), to generate the subgroup sets of preferences, with Multi-Criteria Decision Analysis (MCDA), to provide the policy framework into which the clustered preferences are entered. 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Implementing CA and MCDA in combination to assist in the development of policies on important health and community issues such as drug coverage, reimbursement, and screening programs, poses major challenges -conceptual, methodological, ethical-political, and practical - but most are exposed by the techniques, not created by them.</abstract><cop>Heidelberg</cop><pub>Springer</pub><pmid>25992305</pmid><doi>10.1186/s13561-015-0048-4</doi><tpages>11</tpages><oa>free_for_read</oa></addata></record>
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subjects Antigens
Biopsy
Cluster analysis
Cost analysis
Decision analysis
Decision making
Health Care Management
Health care policy
Health Economics
Health Services Research
Heterogeneity
Medical screening
Medicine
Medicine & Public Health
Multi-criteria decision analysis
Multiple criteria decision making
Patient satisfaction
Pharmacoeconomics and Health Outcomes
Population
Preference subgroups
Preferences
Prostate cancer
Public Finance
Public Health
Public policy
Reimbursement
Sociodemographics
Studies
Tariffs
title Addressing preference heterogeneity in public health policy by combining Cluster Analysis and Multi-Criteria Decision Analysis: Proof of Method
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