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Weighted Generalized Estimating Functions for Longitudinal Response and Covariate Data That Are Missing at Random

机译:纵向响应和随机丢失的协变量数据的加权广义估计函数

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摘要

Longitudinal studies often feature incomplete response and covariate data. It is well known that biases can arise from naive analyses of available data, but the precise impact of incomplete data depends on the frequency of missing data and the strength of the association between the response variables and covariates and the missing-data indicators. Various factors may influence the availability of response and covariate data at scheduled assessment times, and at any given assessment time the response may be missing, covariate data may be missing, or both response and covariate data may be missing. Here we show that it is important to take the association between the missing data indicators for these two processes into account through joint models. Inverse probability-weighted generalized estimating equations offer an appealing approach for doing this. Here we develop these equations for a particular model generating intermittently missing-at-random data. Empirical studies demonstrate that the consistent estimators arising from the proposed methods have very small empirical biases in moderate samples. Supplemental materials are available online.
机译:纵向研究通常以响应不完整和协变量数据为特征。众所周知,对可用数据的幼稚分析可能会产生偏差,但是不完整数据的精确影响取决于丢失数据的频率以及响应变量和协变量与丢失数据指标之间的关联强度。各种因素可能影响计划的评估时间的响应和协变量数据的可用性,并且在任何给定的评估时间,响应可能会丢失,协变量数据可能会丢失,或者响应和协变量数据都可能会丢失。在这里,我们表明通过联合模型考虑这两个过程的缺失数据指标之间的关联非常重要。逆概率加权广义估计方程式提供了一种吸引人的方法。在这里,我们针对生成间歇性随机丢失数据的特定模型开发这些方程式。实证研究表明,由拟议方法得出的一致估计量在中等样本中具有很小的经验偏差。补充材料可在线获得。

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