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Bayesian Modeling and Inference for Nonignorably Missing Longitudinal Binary Response Data with Applications to HIV Prevention Trials

机译:不可遗漏的纵向二元反应数据的贝叶斯建模与推断及其在HIV预防试验中的应用

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摘要

Missing data are frequently encountered in longitudinal clinical trials. To better monitor and understand the progress over time, one must handle the missing data appropriately and examine whether the missing data mechanism is ignorable or nonignorable. In this article, we develop a new probit model for longitudinal binary response data. It resolves a challenging issue for estimating the variance of the random effects, and substantially improves the convergence and mixing of the Gibbs sampling algorithm. We show that when improper uniform priors are specified for the regression coefficients of the joint multinomial model via a sequence of one-dimensional conditional distributions for the missing data indicators under nonignorable missingness, the joint posterior distribution is improper. A variation of Jeffreys prior is thus established as a remedy for the improper posterior distribution. In addition, an efficient Gibbs sampling algorithm is developed using a collapsing technique. Two model assessment criteria, the deviance information criterion (DIC) and the logarithm of the pseudomarginal likelihood (LPML), are used to guide the choices of prior specifications and to compare the models under different missing data mechanisms. We report on extensive simulations conducted to investigate the empirical performance of the proposed methods. The proposed methodology is further illustrated using data from an HIV prevention clinical trial.
机译:在纵向临床试验中经常会遇到数据丢失的情况。为了更好地监视和了解一段时间内的进度,必须适当处理丢失的数据,并检查丢失的数据机制是可忽略的还是不可忽略的。在本文中,我们为纵向二进制响应数据开发了一个新的概率模型。它解决了一个估计随机效应方差的难题,并大大提高了吉布斯采样算法的收敛性和混合性。我们表明,当针对不可忽略的缺失情况下的缺失数据指标的一维条件分布序列为联合多项式模型的回归系数指定不适当的统一先验时,联合后验分布是不正确的。杰弗里斯先验的变化因此被确立为对不适当的后验分布的补救。另外,使用折叠技术开发了一种有效的吉布斯采样算法。两种模型评估标准,偏差信息标准(DIC)和伪边际似然(LPML)的对数,用于指导先验规格的选择并比较不同缺失数据机制下的模型。我们报告进行了广泛的模拟,以调查所提出的方法的经验性能。艾滋病预防临床试验的数据进一步说明了所提出的方法。

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