Abstract

BackgroundConventionally, models used for health state valuation data have been frequentists. Recently a number of researchers have investigated the use of Bayesian methods in this area. The aim of this paper is to put on the map of modelling a new approach to estimating SF-6D health state utility values using Bayesian methods. This will help health care professionals in deriving better health state utilities of the original UK SF-6D for their specialized applications.MethodsThe valuation study is composed of 249 SF-6D health states valued by a representative sample of the UK population using the standard gamble technique. Throughout this paper, we present four different models, including one simple linear regression model and three random effect models. The predictive ability of these models is assessed by comparing predicted and observed mean SF-6D scores, R2/adjusted R2 and RMSE. All analyses were carried out using Bayesian Markov chain Monte Carlo (MCMC) simulation methods freely available in the specialist software WinBUGS.ResultsThe random effects model with interaction model performs best under all criterions, with mean predicted error of 0.166, R2/adjusted R2 of 0.683 and RMSE of 0.218.ConclusionsThe Bayesian models provide flexible approaches to estimate mean SF-6D utility estimates, including characterizing the full range of uncertainty inherent in these estimates. We hope that this work will provide applied researchers with a practical set of tools to appropriately model outcomes in cost-effectiveness analysis.

Highlights

  • Models used for health state valuation data have been frequentists

  • The Social Functioning (SF)-6D As a generic measure of health, the Short form 6 dimensions health survey (SF-6D) has been derived from the original health based preference Short form health survey (SF-36) [1], resulting in a total of six dimensions: physical functioning, role limitations, social functioning, pain, mental health, and vitality

  • Statistical software for Bayesian analysis using MCMC (WinBUGS) is used for all the analyses in this paper and the relevant code is available from the author

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Summary

Introduction

Models used for health state valuation data have been frequentists. Recently a number of researchers have investigated the use of Bayesian methods in this area. The aim of this paper is to put on the map of modelling a new approach to estimating SF-6D health state utility values using Bayesian methods. This will help health care professionals in deriving better health state utilities of the original UK SF-6D for their specialized applications. The utility, defined as the reference to a measure of HRQoL in health economics, may be commonly captured by adopting a standardized multi-attribute utility (MAU) questionnaire with preexisting utility weights derived from the general population, and the overall term “health related utility” refers. Constructing a utility measure to describe the overall quality of life for such a complex multidimensional descriptive system that defines millions of potential health states is a very difficult task, and health economists have instead based their utility measures on simpler health state descriptions, including the EQ-5D [2, 3], Health Utilities Index

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