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Power difference in a χ 2 test vs generalized linear mixed model in the presence of missing data – a simulation study

机译:在缺失数据存在下,χ2测试的功率差异与广义线性混合模型 - 模拟研究

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Longitudinal randomized controlled trials (RCTs) often aim to test and measure the effect of treatment between arms at a single time point. A two-sample χ2 test is a common statistical approach when outcome data are binary. However, only complete outcomes are used in the analysis. Missing responses are common in longitudinal RCTs and by only analyzing complete data, power may be reduced and estimates could be biased. Generalized linear mixed models (GLMM) with a random intercept can be used to test and estimate the treatment effect, which may increase power and reduce bias. We simulated longitudinal binary RCT data to compare the performance of a complete case χ2 test to a GLMM in terms of power, type I error, relative bias, and coverage under different missing data mechanisms (missing completely at random and missing at random). We considered how the baseline probability of the event, within subject correlation, and dropout rates under various missing mechanisms impacted each performance measure. When outcome data were missing completely at random, both χ2 and GLMM produced unbiased estimates; however, the GLMM returned an absolute power gain up to from 12.0% as compared to the χ2 test. When outcome data were missing at random, the GLMM yielded an absolute power gain up to 42.7% and estimates were unbiased or less biased compared to the χ2 test. Investigators wishing to test for a treatment effect between treatment arms in longitudinal RCTs with binary outcome data in the presence of missing data should use a GLMM to gain power and produce minimally unbiased estimates instead of a complete case χ2 test.
机译:纵向随机对照试验(RCT)通常旨在测试和测量单个时间点在臂之间的处理效果。当结果数据二进制时,两个样本χ2测试是一种常见的统计方法。但是,仅在分析中使用完整的结果。缺失的响应在纵向RCT中是常见的,并且仅通过分析完整数据,可以减少功率并且可以偏置估计。随机截距的广义线性混合模型(GLMM)可用于测试和估计治疗效果,这可能会增加功率并减少偏差。我们模拟了纵向二进制RCT数据,将完整情况χ2测试的性能与不同缺失数据机制下的电源,I型错误,相对偏置和覆盖范围进行了对GLMM的性能(随机缺少完全缺少)。我们考虑了在各种缺失机制下的对象相关性和辍学率内的基线概率如何影响每个绩效措施。当随机缺少结果数据时,χ2和GLMM都产生了无偏估计;然而,与χ2检验相比,GLMM返回绝对功率增益高达12.0%。当随机缺少结果数据时,GLMM产生绝对功率增益,高达42.7%,与χ2检验相比,估计是无偏见的或更少的偏见。希望在缺失数据存在下具有二元结果数据的纵向RCT在纵向RCT之间进行治疗效果的调查人员应该使用GLMM来获得功率并产生最小的无偏估计而不是完整的情况χ2测试。

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