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Author Notes:

Email: sk157@aub.edu.ib; Tel.: +961-1-350-000

S.A.K., Y.B. and E.A.F. designed research; analyzed data and performed statistical analysis; S.A.K., Y.B. and T.Y. wrote the paper and had primary responsibility for final content. All authors have read and agreed to the published version of the manuscript.

The authors would like to thank the National Council for Scientific Research in Lebanon and the University Research Bureau at the American University of Beirut, Lebanon for funding this study.

The authors declare no conflict of interest.

Subject:

Research Funding:

This study was funded by the National Council for Scientific Research in Lebanon and the University Research Board at the American University of Beirut.

Keywords:

  • parameter uncertainty
  • health utility
  • Bayesian methods
  • SF-6D

The Importance of Accounting for Parameter Uncertainty in SF-6D Value Sets and Its Impact on Studies that Use the SF-6D to Measure Health Utility

Tools:

Journal Title:

International Journal of Environmental Research and Public Health

Volume:

Volume 17, Number 11

Publisher:

Type of Work:

Article | Final Publisher PDF

Abstract:

Background: The parameter uncertainty in the six-dimensional health state short form (SF-6D) value sets is commonly ignored. There are two sources of parameter uncertainty: uncertainty around the estimated regression coefficients and uncertainty around the model’s specification. This study explores these two sources of parameter uncertainty in the value sets using probabilistic sensitivity analysis (PSA) and a Bayesian approach. Methods: We used data from the original UK/SF-6D valuation study to evaluate the extent of parameter uncertainty in the value set. First, we re-estimated the Brazier model to replicate the published estimated coefficients. Second, we estimated standard errors around the predicted utility of each SF-6D state to assess the impact of parameter uncertainty on these estimated utilities. Third, we used Monte Carlo simulation technique to account for the uncertainty on these estimates. Finally, we used a Bayesian approach to quantifying parameter uncertainty in the value sets. The extent of parameter uncertainty in SF-6D value sets was assessed using data from the Hong Kong valuation study. Results: Including parameter uncertainty results in wider confidence/credible intervals and improved coverage probability using both approaches. Using PSA, the mean 95% confidence intervals widths for the mean utilities were 0.1394 (range: 0.0565–0.2239) and 0.0989 (0.0048–0.1252) with and without parameter uncertainty whilst, using the Bayesian approach, this was 0.1478 (0.053–0.1665). Upon evaluating the impact of parameter uncertainty on estimates of a population’s mean utility, the true standard error was underestimated by 79.1% (PSA) and 86.15% (Bayesian) when parameter uncertainty was ignored. Conclusions: Parameter uncertainty around the SF-6D value set has a large impact on the predicted utilities and estimated confidence intervals. This uncertainty should be accounted for when using SF-6D utilities in economic evaluations. Ignoring this additional information could impact misleadingly on policy decisions.

Copyright information:

© 2020 by the authors.

This is an Open Access work distributed under the terms of the Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/rdf).
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