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The impact of covariate adjustment at randomization and analysis for binary outcomes: understanding differences between superiority and noninferiority trials

机译:协变量调整对随机结果和二元结果分析的影响:了解优劣试验之间的差异

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The question of when to adjust for important prognostic covariates often arises in the design of clinical trials, and there remain various opinions on whether to adjust during both randomization and analysis, at randomization alone, or at analysis alone. Furthermore, little is known about the impact of covariate adjustment in the context of noninferiority (NI) designs. The current simulation-based research explores this issue in the NI setting, as compared with the typical superiority setting, by assessing the differential impact on power, type I error, and bias in the treatment estimate as well as its standard error, in the context of logistic regression under both simple and covariate adjusted permuted block randomization algorithms.In both the superiority and NI settings, failure to adjust for covariates that influence outcome in the analysis phase, regardless of prior adjustment at randomization, results in treatment estimates that are biased toward zero, with standard errors that are deflated. However, as no treatment difference is approached under the null hypothesis in superiority and under the alternative in NI, this results in decreased power and nominal or conservative (deflated) type I error in the context of superiority but inflated power and type I error under NI. Results from the simulation study suggest that, regardless of the use of the covariate in randomization, it is appropriate to adjust for important prognostic covariates in analysis, as this yields nearly unbiased estimates of treatment as well as nominal type I error. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:在临床试验的设计中经常出现何时对重要的预后协变量进行调整的问题,对于是否在随机化和分析过程中进行调整,仅在随机分组中还是在单独的分析中进行调整,仍然存在各种意见。此外,关于协变量调整在非劣效性(NI)设计中的影响知之甚少。与典型的优势设置相比,当前基于仿真的研究在NI设置中探索了这个问题,方法是评估对功率,I型误差和治疗估计偏差以及标准误差的不同影响,以及上下文中的标准误差。在优势变量和NI设置下,无论在分析阶段是否进行了先验调整,均未能在影响分析阶段的协变量上进行调整,无论在优度和NI设置上,均无法对治疗估计值产生偏倚零,带有已缩小的标准误差。但是,由于在优势的零假设和NI的替代方案下均未达到治疗差异,因此,在优势的情况下,功率会降低,名义或保守(放气)的I型错误会降低,但在NI下则会夸大功效和I型错误。模拟研究的结果表明,无论在随机化中使用协变量如何,均应针对分析中重要的预后协变量进行调整,因为这会产生几乎无偏的治疗估计以及名义I型错误。版权所有(c)2015 John Wiley&Sons,Ltd.

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