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Impact of missing data on type 1 error rates in non-inferiority trials.

机译:非劣效性试验中缺失数据对1型错误率的影响。

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摘要

In this paper, a simulation study is conducted to systematically investigate the impact of different types of missing data on six different statistical analyses: four different likelihood-based linear mixed effects models and analysis of covariance (ANCOVA) using two different data sets, in non-inferiority trial settings for the analysis of longitudinal continuous data. ANCOVA is valid when the missing data are completely at random. Likelihood-based linear mixed effects model approaches are valid when the missing data are at random. Pattern-mixture model (PMM) was developed to incorporate non-random missing mechanism. Our simulations suggest that two linear mixed effects models using unstructured covariance matrix for within-subject correlation with no random effects or first-order autoregressive covariance matrix for within-subject correlation with random coefficient effects provide well control of type 1 error (T1E) rate when the missing data are completely at random or at random. ANCOVA using last observation carried forward imputed data set is the worst method in terms of bias and T1E rate. PMM does not show much improvement on controlling T1E rate compared with other linear mixed effects models when the missing data are not at random but is markedly inferior when the missing data are at random.
机译:在本文中,进行了一项仿真研究,系统地研究了六种不同的统计分析对不同类型的缺失数据的影响:四种不同的基于似然的线性混合效应模型和使用两个不同数据集的协方差分析(ANCOVA),自卑性试验设置,用于分析纵向连续数据。当丢失的数据完全随机时,ANCOVA有效。当丢失的数据随机时,基于似然的线性混合效应模型方法是有效的。模式混合模型(PMM)被开发来结合非随机丢失机制。我们的仿真结果表明,使用无结构协方差矩阵进行无对象随机相关的对象内部相关性的两个线性混合效应模型,或使用具有随机系数影响的被摄对象内部相关的一阶自回归协方差矩阵,可以很好地控制1类错误(T1E)发生率丢失的数据完全是随机的还是随机的。就偏差和T1E率而言,使用最后观测结转推算数据集的ANCOVA是最差的方法。与其他线性混合效应模型相比,当丢失数据不是随机的时,PMM在控制T1E速率方面没有表现出很大的改进,而在丢失数据是随机时,则明显较差。

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