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Inference for binomial probability based on dependent Bernoulli random variables with applications to meta-analysis and group level studies

机译:基于相关伯努利随机变量的二项式概率推断及其在荟萃分析和小组水平研究中的应用

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摘要

We study bias arising as a result of nonlinear transformations of random variables in random or mixed effects models and its effect on inference in group-level studies or in meta-analysis. The findings are illustrated on the example of overdispersed binomial distributions, where we demonstrate considerable biases arising from standard log-odds and arcsine transformations of the estimated probability (p) over cap, both for single-group studies and in combining results from several groups or studies in meta-analysis. Our simulations confirm that these biases are linear in rho, for small values of rho, the intracluster correlation coefficient. These biases do not depend on the sample sizes or the number of studies K in a meta-analysis and result in abysmal coverage of the combined effect for large K. We also propose bias-correction for the arcsine transformation. Our simulations demonstrate that this bias-correction works well for small values of the intraclass correlation. The methods are applied to two examples of meta-analyses of prevalence.
机译:我们研究由于随机变量或混合效应模型中随机变量的非线性变换而引起的偏差及其在小组水平研究或荟萃分析中对推理的影响。研究结果在二项分布过度分散的示例中得到了说明,在此示例中,我们证明了标准对数奇数和上限估计概率(p)的反正弦变换所产生的巨大偏差,无论是单组研究还是组合多个组或荟萃分析研究。我们的模拟结果证实,对于小的rho值(群内相关系数),这些偏差在rho中是线性的。这些偏倚不依赖于样本大小或荟萃分析中研究K的数量,并导致对大K的组合效应产生深深的覆盖。我们还建议对反正弦变换进行偏倚校正。我们的仿真表明,这种偏差校正对于较小的类内相关值有效。该方法适用于患病率荟萃分析的两个例子。

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