Department of Health Economics, Public Health Building, University of Birmingham, Birmingham B15 2TT, UK.
Popul Health Metr. 2008 Oct 22;6:6. doi: 10.1186/1478-7954-6-6.
Researchers are increasingly investigating the potential for ordinal tasks such as ranking and discrete choice experiments to estimate QALY health state values. However, the assumptions of random utility theory, which underpin the statistical models used to provide these estimates, have received insufficient attention. In particular, the assumptions made about the decisions between living states and the death state are not satisfied, at least for some people. Estimated values are likely to be incorrectly anchored with respect to death (zero) in such circumstances.
Data from the Investigating Choice Experiments for the preferences of older people CAPability instrument (ICECAP) valuation exercise were analysed. The values (previously anchored to the worst possible state) were rescaled using an ordinal model proposed previously to estimate QALY-like values. Bootstrapping was conducted to vary artificially the proportion of people who conformed to the conventional random utility model underpinning the analyses.
Only 26% of respondents conformed unequivocally to the assumptions of conventional random utility theory. At least 14% of respondents unequivocally violated the assumptions. Varying the relative proportions of conforming respondents in sensitivity analyses led to large changes in the estimated QALY values, particularly for lower-valued states. As a result these values could be either positive (considered to be better than death) or negative (considered to be worse than death).
Use of a statistical model such as conditional (multinomial) regression to anchor quality of life values from ordinal data to death is inappropriate in the presence of respondents who do not conform to the assumptions of conventional random utility theory. This is clearest when estimating values for that group of respondents observed in valuation samples who refuse to consider any living state to be worse than death: in such circumstances the model cannot be estimated. Only a valuation task requiring respondents to make choices in which both length and quality of life vary can produce estimates that properly reflect the preferences of all respondents.
研究人员越来越多地研究等级任务(例如排序和离散选择实验)的潜力,以估计 QALY 健康状态值。然而,为提供这些估计值而使用的统计模型所依据的随机效用理论的假设尚未得到充分关注。特别是,在某些情况下,对于生存状态和死亡状态之间的决策所作的假设并不满足,至少对于某些人来说是不满足的。在这种情况下,估计值可能相对于死亡(零)不正确地固定。
分析了Investigating Choice Experiments for the preferences of older people CAPability instrument(ICECAP)估值研究中的数据。使用先前提出的等级模型对(先前固定在最差状态的)值进行重新缩放,以估计类似于 QALY 的值。进行了引导,人为地改变了符合分析所依据的常规随机效用模型的人的比例。
只有 26%的受访者明确符合常规随机效用理论的假设。至少有 14%的受访者明确违反了假设。在敏感性分析中改变符合条件的受访者的相对比例会导致估计的 QALY 值发生很大变化,尤其是对于价值较低的状态。因此,这些值可能为正(被认为比死亡好)或负(被认为比死亡差)。
在存在不符合常规随机效用理论假设的受访者的情况下,使用条件(多项式)回归等统计模型将来自等级数据的生活质量值锚定到死亡是不适当的。在评估样本中观察到的拒绝考虑任何生存状态比死亡差的那组受访者的价值时,这一点最为明显:在这种情况下,无法估计模型。只有要求受访者在其中进行长度和生活质量都变化的选择的评估任务才能产生适当反映所有受访者偏好的估计值。