论文标题
在与患者级数据有限的间接比较中,在间接比较中的回归调整治疗效果的边缘化
Marginalization of Regression-Adjusted Treatment Effects in Indirect Comparisons with Limited Patient-Level Data
论文作者
论文摘要
当作用修饰符和有限的患者级数据存在跨试验差异时,越来越多地使用了诸如匹配调整的间接比较(MAIC)之类的人口调整方法(MAIC)。 MAIC对较差的协变量重叠敏感,无法推断超出观察到的协变量空间。当前基于结果回归的替代方法可以推断,但针对间接比较中不兼容的条件治疗效应。调整协变量时,必须在关注人群中整合或平均有条件的估计值,以恢复兼容的边际治疗效果。我们提出了一种基于参数G-Compuntion的边缘化方法,在结果回归是广义线性模型或COX模型的情况下,可以轻松地应用该方法。此外,我们引入了一种基于多个插补的新型通用方法,我们将其称为多个插补边缘化(MIM),并且适用于广泛的模型。两种方法都可以容纳贝叶斯统计框架,从而自然地将分析整合到概率框架中。一项仿真研究为方法和基准对MAIC的性能和常规结果回归提供了原理证明。与MAIC相比,边缘化的结果回归方法获得了更精确,更准确的估计,尤其是当协变量重叠较差时,并且在没有假设失败的情况下产生无偏见的边际治疗效果估计值。此外,与传统结果回归产生的条件估计值相比,边缘化回归调整后的估计值具有更高的精度和准确性,而常规结果回归产生的条件估计值是系统地偏见的,因为效果量度不可碰撞。
Population adjustment methods such as matching-adjusted indirect comparison (MAIC) are increasingly used to compare marginal treatment effects when there are cross-trial differences in effect modifiers and limited patient-level data. MAIC is sensitive to poor covariate overlap and cannot extrapolate beyond the observed covariate space. Current outcome regression-based alternatives can extrapolate but target a conditional treatment effect that is incompatible in the indirect comparison. When adjusting for covariates, one must integrate or average the conditional estimate over the population of interest to recover a compatible marginal treatment effect. We propose a marginalization method based on parametric G-computation that can be easily applied where the outcome regression is a generalized linear model or a Cox model. In addition, we introduce a novel general-purpose method based on multiple imputation, which we term multiple imputation marginalization (MIM) and is applicable to a wide range of models. Both methods can accommodate a Bayesian statistical framework, which naturally integrates the analysis into a probabilistic framework. A simulation study provides proof-of-principle for the methods and benchmarks their performance against MAIC and the conventional outcome regression. The marginalized outcome regression approaches achieve more precise and more accurate estimates than MAIC, particularly when covariate overlap is poor, and yield unbiased marginal treatment effect estimates under no failures of assumptions. Furthermore, the marginalized regression-adjusted estimates provide greater precision and accuracy than the conditional estimates produced by the conventional outcome regression, which are systematically biased because the measure of effect is non-collapsible.