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Conditional Monte Carlo Randomization Tests for Regression Models

机译:回归模型的条件蒙特卡洛随机检验

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摘要

We discuss the computation of randomization tests for clinical trials of two treatments when the primary outcome is based on a regression model. We begin by revisiting the seminal paper of Gail, Tan, and Piantadosi (1988), and then describe a method based on Monte Carlo generation of randomization sequences. The tests based on this Monte Carlo procedure are design-based, in that they incorporate the particular randomization procedure used. We discuss permuted block designs, complete randomization, and biased coin designs. We also use a new technique by Plamadeala and Rosenberger (2012) for simple computation of conditional randomization tests. Like Gail, Tan, and Piantadosi, we focus on residuals from generalized linear models and martingale residuals from survival models. Such techniques do not apply to longitudinal data analysis, and we introduce a method for computation of randomization tests based on the predicted rate of change from a generalized linear mixed model when outcomes are longitudinal. We show, by simulation, that these randomization tests preserve the size and power well under model misspecification.
机译:当主要结果基于回归模型时,我们讨论两种疗法的临床试验的随机化测试的计算。我们首先回顾Gail,Tan和Piantadosi(1988)的开创性论文,然后描述一种基于Monte Carlo随机序列生成的方法。基于此蒙特卡洛程序的测试是基于设计的,因为它们结合了使用的特定随机程序。我们讨论置换块设计,完全随机化和偏向硬币设计。我们还使用Plamadeala和Rosenberger(2012)的新技术对条件随机化检验进行简单计算。像盖尔(Gail),谭(Tan)和皮安塔多西(Piantadosi)一样,我们专注于广义线性模型的残差和生存模型的mar残差。此类技术不适用于纵向数据分析,因此我们引入了一种基于结果为纵向的广义线性混合模型的预测变化率来计算随机检验的方法。通过仿真我们显示,这些随机化测试在模型错误指定的情况下很好地保留了大小和功效。

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