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Power and Sample Size Calculations for Generalized Estimating Equations via Local Asymptotics

机译:通过局部渐近学的广义估计方程的功率和样本量计算

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摘要

We consider the problem of calculating power and sample size for tests based on generalized estimating equations (GEE), that arise in studies involving clustered or correlated data (e.g., longitudinal studies and sibling studies). Previous approaches approximate the power of such tests using the asymptotic behavior of the test statistics under fixed alternatives. We develop a more accurate approach in which the asymptotic behavior is studied under a sequence of local alternatives that converge to the null hypothesis at root-m rate, where m is the number of clusters. Based on this approach, explicit sample size formulae are derived for Wald and quasi-score test statistics in a variety of GEE settings. Simulation results show that in the important special case of logistic regression with exchangeable correlation structure, previous approaches can inflate the projected sample size (to obtain nominal 90% power using the Wald statistic) by over 10%, whereas the proposed approach provides an accuracy of around 2%.
机译:我们考虑了基于广义估计方程(GEE)计算测试的功效和样本量的问题,该问题在涉及聚类或相关数据的研究(例如纵向研究和兄弟研究)中出现。先前的方法使用固定选择下的测试统计量的渐近行为来近似此类测试的功效。我们开发了一种更准确的方法,其中在一系列以根m速率收敛到零假设的局部替代方案下研究渐近行为,其中m是簇数。基于这种方法,可以在各种GEE设置中为Wald和准得分测试统计数据得出明确的样本量公式。仿真结果表明,在具有可交换相关结构的逻辑回归的重要特殊情况下,以前的方法可使预测的样本量膨胀(使用Wald统计量获得标称的90%功效),而所提出的方法提供的准确性为大约2%。

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