It is becoming increasingly popular to elicit informative priors on the basis of historical data. Popular existing priors, including the power prior, commensurate prior, and robust meta-analytic prior provide blanket discounting. Thus, if only a subset of participants in the historical data are exchangeable with the current data, these priors may not be appropriate. In order to combat this issue, propensity score (PS) approaches have been proposed. However, PS approaches are only concerned with the covariate distribution, whereas exchangeability is typically assessed with parameters pertaining to the outcome. In this paper, we introduce the latent exchangeability prior (LEAP), where observations in the historical data are classified into exchangeable and non-exchangeable groups. The LEAP discounts the historical data by identifying the most relevant subjects from the historical data. We compare our proposed approach against alternative approaches in simulations and present a case study using our proposed prior to augment a control arm in a phase 3 clinical trial in plaque psoriasis with an unbalanced randomization scheme.
翻译:根据历史数据获取信息前科越来越受欢迎,现有的现有前科,包括以前、以前相应和稳健的元分析前科的权力,提供了全面折扣,因此,如果历史数据中只有一组参与者可以与当前数据交换,这些前科可能不合适,为了解决这一问题,提出了倾向性分数(PS)方法,不过,PS方法只涉及共变分布,而可交换性通常与结果有关的参数一起评估。在本文件中,我们引入了前隐性互换能力(LEAP),将历史数据中的观察分类为可互换和不可互换群体。LEAP通过从历史数据中找出最相关的主题,对历史数据进行折扣。我们比较了我们提议的模拟方法,并用我们之前提议的案例研究,用不平衡的随机计划在白线虫病临床试验的第三阶段加强控制装置。</s>