Biostatistics Research Group, Department of Health Sciences, University of Leicester, Leicester, UK.
GlaxoSmithKline R&D Centre, GlaxoSmithKline, Stevenage, UK.
Stat Med. 2022 Nov 10;41(25):4961-4981. doi: 10.1002/sim.9547. Epub 2022 Aug 5.
Bivariate meta-analysis provides a useful framework for combining information across related studies and has been utilized to combine evidence from clinical studies to evaluate treatment efficacy on two outcomes. It has also been used to investigate surrogacy patterns between treatment effects on the surrogate endpoint and the final outcome. Surrogate endpoints play an important role in drug development when they can be used to measure treatment effect early compared to the final outcome and to predict clinical benefit or harm. The standard bivariate meta-analytic approach models the observed treatment effects on the surrogate and the final outcome outcomes jointly, at both the within-study and between-studies levels, using a bivariate normal distribution. For binomial data, a normal approximation on log odds ratio scale can be used. However, this method may lead to biased results when the proportions of events are close to one or zero, affecting the validation of surrogate endpoints. In this article, we explore modeling the two outcomes on the original binomial scale. First, we present a method that uses independent binomial likelihoods to model the within-study variability avoiding to approximate the observed treatment effects. However, the method ignores the within-study association. To overcome this issue, we propose a method using a bivariate copula with binomial marginals, which allows the model to account for the within-study association. We applied the methods to an illustrative example in chronic myeloid leukemia to investigate the surrogate relationship between complete cytogenetic response and event-free-survival.
双变量荟萃分析为合并相关研究信息提供了一个有用的框架,已被用于合并来自临床研究的证据,以评估两种结局的治疗效果。它还被用于研究替代终点与最终结局之间治疗效果的替代模式。替代终点在药物开发中起着重要作用,因为它们可以在最终结局之前更早地用于衡量治疗效果,并预测临床获益或危害。标准的双变量荟萃分析方法使用双变量正态分布联合模型化在研究内和研究间水平上对替代终点和最终结局的观察治疗效果。对于二项数据,可以在对数比值比尺度上使用正态逼近。然而,当事件比例接近 1 或 0 时,这种方法可能会导致有偏结果,影响替代终点的验证。在本文中,我们探索了在原始二项规模上对两个结局进行建模的方法。首先,我们提出了一种使用独立二项式似然函数来建模研究内变异性的方法,避免了对观察治疗效果的近似。然而,该方法忽略了研究内的关联。为了克服这个问题,我们提出了一种使用二项边缘的二元 Copula 的方法,该方法允许模型考虑研究内的关联。我们将该方法应用于慢性髓性白血病的一个说明性示例中,以研究完全细胞遗传学反应与无事件生存之间的替代关系。