Murray S
Department of Biostatistics, University of Michigan, Ann Arbor 48109, USA.
Biometrics. 2001 Jun;57(2):361-8. doi: 10.1111/j.0006-341x.2001.00361.x.
This research introduces methods for nonparametric testing of weighted integrated survival differences in the context of paired censored survival designs. The current work extends work done by Pepe and Fleming (1989, Biometrics 45, 497-507), which considered similar test statistics directed toward independent treatment group comparisons. An asymptotic closed-form distribution of the proposed family of tests is presented, along with variance estimates constructed under null and alternative hypotheses using nonparametric maximum likelihood estimates of the closed-form quantities. The described method allows for additional information from individuals with no corresponding matched pair member to be incorporated into the test statistic in sampling scenarios where singletons are not prone to selection bias. Simulations presented over a range of potential dependence in the paired censored survival data demonstrate substantial power gains associated with taking into account the dependence structure. Consequences of ignoring the paired nature of the data include overly conservative tests in terms of power and size. In fact, simulation results using tests for independent samples in the presence of positive correlation consistently undershot both size and power targets that would have been attained in the absence of correlation. This additional worrisome effect on operating characteristics highlights the need for accounting for dependence in this popular family of tests.
本研究介绍了在配对删失生存设计背景下对加权综合生存差异进行非参数检验的方法。当前的工作扩展了Pepe和Fleming(1989年,《生物统计学》45卷,497 - 507页)所做的工作,他们考虑了针对独立治疗组比较的类似检验统计量。给出了所提出的检验族的渐近封闭形式分布,以及在原假设和备择假设下使用封闭形式量的非参数最大似然估计构建的方差估计。所描述的方法允许在单例不易产生选择偏差的抽样场景中,将来自没有相应匹配对成员的个体的额外信息纳入检验统计量。在配对删失生存数据中一系列潜在相关性上进行的模拟表明,考虑相关性结构会带来显著的功效提升。忽略数据的配对性质的后果包括在功效和规模方面检验过于保守。事实上,在存在正相关的情况下使用独立样本检验的模拟结果始终低于在不存在相关性时本可达到的规模和功效目标。对操作特性的这种额外的令人担忧的影响凸显了在这个常用检验族中考虑相关性的必要性。