Conigliani Caterina, Tancredi Andrea
Dipartimento di Economia, Università Roma Tre, Roma, Italy.
Health Econ. 2009 Jul;18(7):807-21. doi: 10.1002/hec.1404.
We consider the problem of assessing new and existing technologies for their cost-effectiveness in the case where data on both costs and effects are available from a clinical trial, and we address it by means of the cost-effectiveness acceptability curve. The main difficulty in these analyses is that cost data usually exhibit highly skew and heavy-tailed distributions so that it can be extremely difficult to produce realistic probabilistic models for the underlying population distribution, and in particular to model accurately the tail of the distribution, which is highly influential in estimating the population mean. Here, in order to integrate the uncertainty about the model into the analysis of cost data and into cost-effectiveness analyses, we consider an approach based on Bayesian model averaging: instead of choosing a single parametric model, we specify a set of plausible models for costs and estimate the mean cost with a weighted mean of its posterior expectations under each model, with weights given by the posterior model probabilities. The results are compared with those obtained with a semi-parametric approach that does not require any assumption about the distribution of costs.
我们考虑在可从临床试验获得成本和效果数据的情况下,评估新技术和现有技术成本效益的问题,并通过成本效益可接受性曲线来解决该问题。这些分析中的主要困难在于,成本数据通常呈现高度偏态和重尾分布,因此要为基础总体分布生成现实的概率模型极为困难,尤其是要准确模拟分布的尾部,而尾部在估计总体均值时具有很大影响。在此,为了将模型的不确定性纳入成本数据分析和成本效益分析中,我们考虑一种基于贝叶斯模型平均的方法:不是选择单个参数模型,而是为成本指定一组合理的模型,并通过每个模型下其后验期望的加权均值来估计平均成本,权重由后验模型概率给出。将结果与通过不要求对成本分布做任何假设的半参数方法获得的结果进行比较。