1 Department of Biostatistics, The University of Texas MD Anderson Cancer Center, USA.
2 UMRS 1138, CRC, INSERM, University Paris 5, University Paris 6, France.
Stat Methods Med Res. 2019 Feb;28(2):404-418. doi: 10.1177/0962280217726803. Epub 2017 Sep 5.
A Bayesian methodology is proposed for constructing a parametric prior on two treatment effect parameters, based on graphical information elicited from a group of expert physicians. The motivating application is a 70-patient randomized trial to compare two treatments for idiopathic nephrotic syndrome in children. The methodology relies on histograms of the treatment parameters constructed manually by each physician, applying the method of Johnson et al. (2010). For each physician, a marginal prior for each treatment parameter characterized by location and precision hyperparameters is fit to the elicited histogram. A bivariate prior is obtained by averaging the marginals over a latent physician effect distribution. An overall prior is constructed as a mixture of the individual physicians' priors. A simulation study evaluating several versions of the methodology is presented. A framework is given for performing a sensitivity analysis of posterior inferences to prior location and precision and illustrated based on the idiopathic nephrotic syndrome trial.
提出了一种贝叶斯方法,用于根据一组专家医生提供的图形信息,为两个治疗效果参数构建参数先验。这个动机应用是一个 70 名患者的随机试验,用于比较两种治疗儿童特发性肾病综合征的方法。该方法依赖于每位医生手动构建的治疗参数直方图,应用 Johnson 等人(2010 年)的方法。对于每位医生,通过拟合到提取的直方图,对每个治疗参数的位置和精度超参数进行边缘先验建模。通过在潜在医生效果分布上平均边缘,获得双变量先验。通过混合每个医生的先验,构建一个总体先验。提出了一种评价该方法的几个版本的模拟研究。基于特发性肾病综合征试验,给出了一种对后验推断到先验位置和精度的敏感性分析的框架。