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Power and sample size for the S:T repeated measures design combined with a linear mixed-effects model allowing for missing data

机译:S:T的电源和样本大小,重复测量设计结合线性混合效果模型,允许缺少数据

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摘要

Tango (Biostatistics 2016) proposed a new repeated measures design called the S:T repeated measures design, combined with generalized linear mixed-effects models and sample size calculations for a test of the average treatment effect that depend not only on the number of subjects but on the number of repeated measures before and after randomization per subject used for analysis. The main advantages of the proposed design combined with the generalized linear mixed-effects models are (1) it can easily handle missing data by applying the likelihood-based ignorable analyses under the missing at random assumption and (2) it may lead to a reduction in sample size compared with the simple pre-post design. In this article, we present formulas for calculating power and sample sizes for a test of the average treatment effect allowing for missing data within the framework of the S:T repeated measures design with a continuous response variable combined with a linear mixed-effects model. Examples are provided to illustrate the use of these formulas.
机译:探戈(生物统计学2016)提出了一种新的重复措施设计,称为S:T重复措施设计,结合广义的线性混合效果模型和样品尺寸计算,以测试不仅取决于受试者的数量但是在用于分析的每个受试者之前和随机化之前和之后的重复措施的数量。所提出的设计的主要优点与广义的线性混合效果模型相结合的是(1)它可以通过在随机假设下缺少的缺失的忽略分析来容易地处理缺失数据,并且(2)可能导致减少在样本大小与简单的后设计相比。在本文中,我们提供了用于计算电源和样本尺寸的公式,以测试平均处理效果的测试,允许使用连续响应变量与线性混合效果模型组合的连续响应变量在S:T的框架内丢失数据。提供了实施例以说明这些配方的使用。

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