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首页> 外文期刊>Journal of biopharmaceutical statistics >GENERALIZED F TEST AND GENERALIZED DEVIANCE TEST IN TWO-WAY ANOVA MODELS FOR RANDOMIZED TRIALS
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GENERALIZED F TEST AND GENERALIZED DEVIANCE TEST IN TWO-WAY ANOVA MODELS FOR RANDOMIZED TRIALS

机译:随机试验的双向方差分析模型中的广义F检验和广义偏差检验

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摘要

We consider the problem of detecting treatment effects in a randomized trial in the presence of an additional covariate. By reexpressing a two-way analysis of variance (ANOVA) model in a logistic regression framework, we derive generalized F tests and generalized deviance tests, which provide better power in detecting common location-scale changes of treatment outcomes than the classical F test. The null distributions of the test statistics are independent of the nuisance parameters in the models, so the critical values can be easily determined by Monte Carlo methods. We use simulation studies to demonstrate how the proposed tests perform compared with the classical F test.We also use data from a clinical study to illustrate possible savings in sample sizes.
机译:我们考虑在存在其他协变量的情况下在随机试验中检测治疗效果的问题。通过在逻辑回归框架中重新表达双向方差分析(ANOVA)模型,我们得出了广义F检验和广义偏差检验,与经典F检验相比,它们提供了更好的检测治疗结果的常见位置范围变化的能力。测试统计的零分布与模型中的扰动参数无关,因此可以通过蒙特卡洛方法轻松确定临界值。我们使用模拟研究来证明所提出的测试与经典F检验相比表现如何;我们还使用来自临床研究的数据来说明可能节省的样本量。

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