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Bayesian quantile regression joint models: Inference and dynamic predictions

机译:贝叶斯分位数回归联合模型:推论和动态预测

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摘要

In the traditional joint models of a longitudinal and time-to-event outcome, a linear mixed model assuming normal random errors is used to model the longitudinal process. However, in many circumstances, the normality assumption is violated and the linear mixed model is not an appropriate sub-model in the joint models. In addition, as the linear mixed model models the conditional mean of the longitudinal outcome, it is not appropriate if clinical interest lies in making inference or prediction on median, lower, or upper ends of the longitudinal process. To this end, quantile regression provides a flexible, distribution-free way to study covariate effects at different quantiles of the longitudinal outcome and it is robust not only to deviation from normality, but also to outlying observations. In this article, we present and advocate the linear quantile mixed model for the longitudinal process in the joint models framework. Our development is motivated by a large prospective study of Huntington's disease where primary clinical interest is in utilizing longitudinal motor scores and other early covariates to predict the risk of developing Huntington's disease. We develop a Bayesian method based on the location-scale representation of the asymmetric Laplace distribution, assess its performance through an extensive simulation study, and demonstrate how this linear quantile mixed model-based joint models approach can be used for making subject-specific dynamic predictions of survival probability.
机译:在传统的纵向和时间结果的联合模型中,假设正常随机误差的线性混合模型用于模拟纵向过程。然而,在许多情况下,违反正常假设,线性混合模型不是联合模型中的合适子模型。另外,随着线性混合模型模型纵向结果的条件平均值,如果临床兴趣在于对纵向过程的中值,下部或上端进行推断或预测,则不合适。为此,量化回归提供了一种灵活的分布方式,以研究纵向结果的不同量级的协变量,并且不仅偏离正常性,而且还具有远方的观察。在本文中,我们展示并倡导了联合模型框架中的纵向过程的线性定位混合模型。我们的发展受到了亨廷顿疾病的大型前瞻性研究,主要临床兴趣是利用纵向运动分数和其他早期协变量来预测发育亨廷顿疾病的风险。我们基于非对称LAPLACE分布的位置刻度表示的贝叶斯方法,通过广泛的仿真研究评估其性能,并演示了这种基于线性定量的混合模型的联合模型方法如何用于制作特定于主题的动态预测生存概率。

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