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Bayesian informative dropout model for longitudinal binary data with random effects using conditional and joint modeling approaches

机译:使用条件和联合建模方法的具有随机效应的纵向二进制数据的贝叶斯信息缺失模型

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Dropouts are common in longitudinal study. If the dropout probability depends on the missing observations at or after dropout, this type of dropout is called informative (or nonignorable) dropout (ID). Failure to accommodate such dropout mechanism into the model will bias the parameter estimates. We propose a conditional autoregressive model for longitudinal binary data with an ID model such that the probabilities of positive outcomes as well as the drop-out indicator in each occasion are logit linear in some covariates and outcomes. This model adopting a marginal model for outcomes and a conditional model for dropouts is called a selection model. To allow for the heterogeneity and clustering effects, the outcome model is extended to incorporate mixture and random effects. Lastly, the model is further extended to a novel model that models the outcome and dropout jointly such that their dependency is formulated through an odds ratio function. Parameters are estimated by a Bayesian approach implemented using the user-friendly Bayesian software Win BUGS. A methadone clinic dataset is analyzed to illustrate the proposed models. Result shows that the treatment time effect is still significant but weaker after allowing for an ID process in the data. Finally the effect of drop-out on parameter estimates is evaluated through simulation studies.
机译:辍学在纵向研究中很常见。如果辍学概率取决于辍学时或辍学后缺少的观测值,则这种辍学称为信息性(或不可忽略的)辍学(ID)。如果无法将此类退出机制纳入模型,则会使参数估计值产生偏差。我们为纵向二进制数据提供了一个具有ID模型的条件自回归模型,这样在某些协变量和结果中,阳性结果的概率以及每种情况下的辍学指标都是对数线性的。该模型采用针对结果的边际模型和针对辍学的条件模型,称为选择模型。为了考虑异质性和聚类效应,将结果模型扩展为包含混合效应和随机效应。最后,该模型进一步扩展到一个新颖的模型,该模型共同对结果和辍学进行建模,从而通过比值比函数来表达它们的依赖性。通过使用用户友好的贝叶斯软件Win BUGS实施的贝叶斯方法估计参数。对美沙酮诊所数据集进行了分析,以说明所建议的模型。结果表明,在对数据进行ID处理后,处理时间效果仍然很明显,但效果较弱。最后,通过仿真研究评估了辍学对参数估计的影响。

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