Title of article
Modelling covariates for the SF-6D standard gamble health state preference data using a nonparametric Bayesian method
Author/Authors
Samer Kharroubi، نويسنده , , John E. Brazier، نويسنده , , Anthony O’Hagan، نويسنده ,
Issue Information
دوهفته نامه با شماره پیاپی سال 2007
Pages
11
From page
1242
To page
1252
Abstract
It has long been recognised that respondent characteristics can impact on the values they give to health states. This paper reports on the findings from applying a non-parametric approach to estimate the covariates in a model of SF-6D health state values using Bayesian methods. The data set is the UK SF-6D valuation study, where a sample of 249 states defined by the SF-6D (a derivate of the SF-36) was valued by a sample of the UK general population using standard gamble. Advantages of the nonparametric model are that it can be used to predict scores in populations with different distributions of characteristics and that it allows for an impact to vary by health state (whilst ensuring that full health passes through unity). The results suggest an important age effect, with sex, class, education, employment and physical functioning probably having some effect, but the remaining covariates having no discernable effect. Adjusting for covariates in the UK sample made little difference to mean health state values. The paper discusses the implications of these results for policy.
Keywords
Preference-based health measure , Nonparametric Bayesian methods , Covariates
Journal title
Social Science and Medicine
Serial Year
2007
Journal title
Social Science and Medicine
Record number
603286
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