论文标题
使用广义线性模型的协变量自适应随机临床试验测试治疗效果,并省略了协变量
Testing for Treatment Effect in Covariate-Adaptive Randomized Clinical Trials with Generalized Linear Models and Omitted Covariates
论文作者
论文摘要
尽管在临床试验中广泛使用了协变量自适应随机分组中统计推断的有效性的有效性。在文献中,已主要研究了协变量自适应随机化下的推论特性以进行连续响应。特别是,众所周知,在实际的测试尺寸小于标称水平的情况下,通常的两个用于治疗效果的样本t检验通常是保守的。对于通用线性模型,也发现了无效测试的现象,而无需调整协变量,有时由于I型误差而更令人担忧。这项研究的目的是检查在广义线性模型和协变量自适应随机化下对治疗效果的未经调整测试。对于大量的协变量自适应随机化方法,我们在零假设下获得了测试统计量的渐近分布,并得出了测试是保守,有效或抗保守的条件。详细讨论了几种常用的通用线性模型,例如逻辑回归和泊松回归。还提出了一种根据渐近结果实现有效尺寸的调整方法。数值研究证实了理论发现,并证明了提出的调整方法的有效性。
Concerns have been expressed over the validity of statistical inference under covariate-adaptive randomization despite the extensive use in clinical trials. In the literature, the inferential properties under covariate-adaptive randomization have been mainly studied for continuous responses; in particular, it is well known that the usual two sample t-test for treatment effect is typically conservative, in the sense that the actual test size is smaller than the nominal level. This phenomenon of invalid tests has also been found for generalized linear models without adjusting for the covariates and are sometimes more worrisome due to inflated Type I error. The purpose of this study is to examine the unadjusted test for treatment effect under generalized linear models and covariate-adaptive randomization. For a large class of covariate-adaptive randomization methods, we obtain the asymptotic distribution of the test statistic under the null hypothesis and derive the conditions under which the test is conservative, valid, or anti-conservative. Several commonly used generalized linear models, such as logistic regression and Poisson regression, are discussed in detail. An adjustment method is also proposed to achieve a valid size based on the asymptotic results. Numerical studies confirm the theoretical findings and demonstrate the effectiveness of the proposed adjustment method.