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An exploration of fixed and random effects selection for longitudinal binary outcomes in the presence of nonignorable dropout

机译:在非无知辍学存在下纵向二元成果的固定和随机效应选择的探索

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摘要

We explore a Bayesian approach to selection of variables that represent fixed and random effects in modeling of longitudinal binary outcomes with missing data caused by dropouts. We show via analytic results for a simple example that nonignorable missing data lead to biased parameter estimates. This bias results in selection of wrong effects asymptotically, which we can confirm via simulations for more complex settings. By jointly modeling the longitudinal binary data with the dropout process that possibly leads to nonignorable missing data, we are able to correct the bias in estimation and selection. Mixture priors with a point mass at zero are used to facilitate variable selection. We illustrate the proposed approach using a clinical trial for acute ischemic stroke.
机译:我们探索贝叶斯方法来选择变量,这些变量代表建模中的纵向二元结果的固定和随机效应,其中遗漏导致数据丢失。我们通过一个简单示例的分析结果表明,不可忽略的缺失数据导致参数估计有偏差。这种偏见会导致渐进地选择错误的效果,我们可以通过仿真来确认更复杂的设置。通过将纵向二进制数据与可能导致不可忽略的丢失数据的丢失过程进行联合建模,我们可以纠正估计和选择中的偏差。点质量为零的混合先验用于简化变量选择。我们使用急性缺血性中风的临床试验说明了建议的方法。

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