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Likelihood and pseudo-likelihood methods for semiparametric joint models for a primary endpoint and longitudinal data

机译:主要参数和纵向数据的半参数联合模型的似然法和拟似然法

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Inference on the association between a primary endpoint and features of longitudinal profiles of a continuous response is of central interest in medical and public health research. Joint models that represent the association through shared dependence of the primary and longitudinal data on random effects are increasingly popular; however, existing inferential methods may be inefficient or sensitive to assumptions on the random effects distribution. We consider a semiparametric joint model that makes only mild assumptions on this distribution and develop likelihood-based inference on the association and distribution, which offers improved performance relative to existing methods that is insensitive to the true random effects distribution. Moreover, the estimated distribution can reveal interesting population features, as we demonstrate for a study of the association between longitudinal hormone levels and bone status in peri-menopausal women.
机译:在医学和公共卫生研究中,对主要终点与连续反应纵向特征之间的关联进行推断是非常重要的。通过主要和纵向数据对随机效应的共享依赖性来表示关联的联合模型越来越受欢迎;然而,现有的推论方法可能对随机效应分布的假设无效或敏感。我们考虑一个半参数联合模型,该模型仅对该分布进行温和假设,并针对关联和分布进行基于似然的推断,相对于对真实随机效应分布不敏感的现有方法,该模型提供了改进的性能。此外,估计分布可以揭示有趣的人群特征,正如我们为绝经前后妇女的纵向激素水平与骨骼状态之间的关联性研究所证明的那样。

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