论文标题
贝叶斯动态力量的倾向得分综合方法事先借贷
A Propensity-Score Integrated Approach to Bayesian Dynamic Power Prior Borrowing
论文作者
论文摘要
在随机控制试验(RCT)中使用历史控制数据来增强小型内部控制臂,可以显着提高该试验的效率。它引入了潜在偏见的风险,因为历史控制人群通常与RCT有所不同。已经引入了权力先验方法来打折历史数据,以减轻人口差异的影响。但是,即使有了贝叶斯动态借贷,它可以根据两个人群的结果相似性来打折历史数据,但人口差异很大也可能导致适度的偏见。因此,使用诸如逆概率加权或匹配等方法对人群差异的强大调整可以使借贷效率更高和稳健。在本文中,我们提出了一种新颖的方法,该方法整合了协变量调整的倾向得分,并使用权力先验进行了贝叶斯动态借贷。所提出的方法将贝叶斯引导程序与经验贝叶斯方法结合使用,利用准可能性来确定先验的功率。通过模拟研究检查了我们方法的性能。我们将方法应用于两个急性髓样白血病(AML)研究以进行例证。
Use of historical control data to augment a small internal control arm in a randomized control trial (RCT) can lead to significant improvement of the efficiency of the trial. It introduces the risk of potential bias, since the historical control population is often rather different from the RCT. Power prior approaches have been introduced to discount the historical data to mitigate the impact of the population difference. However, even with a Bayesian dynamic borrowing which can discount the historical data based on the outcome similarity of the two populations, a considerable population difference may still lead to a moderate bias. Hence, a robust adjustment for the population difference using approaches such as the inverse probability weighting or matching, can make the borrowing more efficient and robust. In this paper, we propose a novel approach integrating propensity score for the covariate adjustment and Bayesian dynamic borrowing using power prior. The proposed approach uses Bayesian bootstrap in combination with the empirical Bayes method utilizing quasi-likelihood for determining the power prior. The performance of our approach is examined by a simulation study. We apply the approach to two Acute Myeloid Leukemia (AML) studies for illustration.