Valuation of preference-based measures: Can existing preference data be used to generate better estimates?

Loading...
Thumbnail Image

Date

Journal Title

Journal ISSN

Volume Title

Publisher

BioMed Central Ltd.

Abstract

Background: Experimental studies to develop valuations of health state descriptive systems like EQ-5D or SF-6D need to be conducted in different countries, because social and cultural differences are likely to lead to systematically different valuations. There is a scope utilize the evidence in one country to help with the design and the analysis of a study in another, for this to enable the generation of utility estimates of the second country much more precisely than would have been possible when collecting and analyzing the country's data alone. Methods: We analyze SF-6D valuation data elicited from representative samples corresponding to the Hong Kong (HK) and United Kingdom (UK) general adult populations through the use of the standard gamble technique to value 197 and 249 health states respectively. We apply a nonparametric Bayesian model to estimate a HK value set using the UK dataset as informative prior to improve its estimation. Estimates are compared to a HK value set estimated using HK values alone using mean predictions and root mean square error. Results: The novel method of modelling utility functions permitted the UK valuations to contribute significant prior information to the Hong Kong analysis. The results suggest that using HK data alongside the existing UK data produces HK utility estimates better than using the HK study data by itself. Conclusion: The promising results suggest that existing preference data could be combined with valuation study in a new country to generate preference weights, making own country value sets more achievable for low and middle income countries. Further research is encouraged. © 2018 The Author(s).

Description

Keywords

Eq-5d, Non-parametric bayesian methods, Preference-based health measure, Time trade-off, Adult, Bayes theorem, Cost-benefit analysis, Cross-cultural comparison, Female, Health status indicators, Hong kong, Humans, Male, Middle aged, Models, statistical, Quality of life, Quality-adjusted life years, United kingdom, Article, Clinical article, Controlled study, Health status, Human, Middle income country, Prediction, Cost benefit analysis, Cultural factor, Health status indicator, Quality adjusted life year, Statistical model

Citation

Endorsement

Review

Supplemented By

Referenced By