Faculty of Statistics, TU Dortmund University, Dortmund, Germany.
Department of Mathematics, Vrije Universiteit Amsterdam, Amsterdam, Netherlands.
Stat Methods Med Res. 2021 Mar;30(3):875-891. doi: 10.1177/0962280220980784. Epub 2020 Dec 21.
Factorial survival designs with right-censored observations are commonly inferred by Cox regression and explained by means of hazard ratios. However, in case of non-proportional hazards, their interpretation can become cumbersome; especially for clinicians. We therefore offer an alternative: median survival times are used to estimate treatment and interaction effects and null hypotheses are formulated in contrasts of their population versions. Permutation-based tests and confidence regions are proposed and shown to be asymptotically valid. Their type-1 error control and power behavior are investigated in extensive simulations, showing the new methods' wide applicability. The latter is complemented by an illustrative data analysis.
带有右删失观测值的析因生存设计通常通过 Cox 回归进行推断,并通过风险比进行解释。然而,在非比例风险的情况下,其解释可能会变得很麻烦;特别是对于临床医生来说。因此,我们提供了一种替代方法:使用中位生存时间来估计治疗效果和交互作用,并通过其总体版本的对比来构建零假设。我们提出了基于置换的检验和置信区间,并证明了它们在渐近意义上是有效的。在广泛的模拟中研究了它们的Ⅰ类错误控制和功效行为,表明了新方法的广泛适用性。后者通过一个说明性的数据分析来补充。