Novartis Pharma AG, CH-4002, Basel, Switzerland.
Stat Med. 2012 Dec 10;31(28):3504-15. doi: 10.1002/sim.5440. Epub 2012 Jul 4.
In clinical trials with time-to-event outcomes, it is common to estimate the marginal hazard ratio from the proportional hazards model, even when the proportional hazards assumption is not valid. This is unavoidable from the perspective that the estimator must be specified a priori if probability statements about treatment effect estimates are desired. Marginal hazard ratio estimates under non-proportional hazards are still useful, as they can be considered to be average treatment effect estimates over the support of the data. However, as many have shown, under non-proportional hazard, the 'usual' unweighted marginal hazard ratio estimate is a function of the censoring distribution, which is not normally considered to be scientifically relevant when describing the treatment effect. In addition, in many practical settings, the censoring distribution is only conditionally independent (e.g., differing across treatment arms), which further complicates the interpretation. In this paper, we investigate an estimator of the hazard ratio that removes the influence of censoring and propose a consistent robust variance estimator. We compare the coverage probability of the estimator to both the usual Cox model estimator and an estimator proposed by Xu and O'Quigley (2000) when censoring is independent of the covariate. The new estimator should be used for inference that does not depend on the censoring distribution. It is particularly relevant to adaptive clinical trials where, by design, censoring distributions differ across treatment arms.
在以时间为事件结局的临床试验中,即使比例风险假设不成立,也通常从比例风险模型中估计边缘风险比。 从期望关于治疗效果估计的概率陈述的角度来看,这是不可避免的,因为必须事先指定估计器。 在非比例风险下的边缘风险比估计仍然有用,因为它们可以被视为数据支持上的平均治疗效果估计。 然而,正如许多人所表明的那样,在非比例风险下,“通常”未加权的边缘风险比估计是 censoring 分布的函数,当描述治疗效果时,这通常不被认为具有科学相关性。 此外,在许多实际情况下,censoring 分布仅条件独立(例如,在不同的治疗臂之间),这进一步增加了解释的复杂性。 在本文中,我们研究了一种消除 censoring 影响的风险比估计器,并提出了一种一致的稳健方差估计器。 当 censoring 与协变量无关时,我们将该估计器的覆盖率概率与通常的 Cox 模型估计器和 Xu 和 O'Quigley(2000)提出的估计器进行了比较。 新估计器应用于不依赖 censoring 分布的推断。 它特别适用于适应性临床试验,在这些临床试验中,通过设计,censoring 分布在不同的治疗臂之间有所不同。