Department of Biostatistics, Institute of Translational Medicine, University of Liverpool, Waterhouse Building, 1-5 Brownlow Street, Liverpool, L69 3GL, UK.
Department of Mathematics, Physics and Electrical Engineering, Northumbria University, Ellison Place, Newcastle upon Tyne, NE1 8ST, UK.
BMC Med Res Methodol. 2018 Jun 7;18(1):50. doi: 10.1186/s12874-018-0502-1.
Joint modelling of longitudinal and time-to-event outcomes has received considerable attention over recent years. Commensurate with this has been a rise in statistical software options for fitting these models. However, these tools have generally been limited to a single longitudinal outcome. Here, we describe the classical joint model to the case of multiple longitudinal outcomes, propose a practical algorithm for fitting the models, and demonstrate how to fit the models using a new package for the statistical software platform R, joineRML.
A multivariate linear mixed sub-model is specified for the longitudinal outcomes, and a Cox proportional hazards regression model with time-varying covariates is specified for the event time sub-model. The association between models is captured through a zero-mean multivariate latent Gaussian process. The models are fitted using a Monte Carlo Expectation-Maximisation algorithm, and inferences are based on approximate standard errors from the empirical profile information matrix, which are contrasted to an alternative bootstrap estimation approach. We illustrate the model and software on a real data example for patients with primary biliary cirrhosis with three repeatedly measured biomarkers.
An open-source software package capable of fitting multivariate joint models is available. The underlying algorithm and source code makes use of several methods to increase computational speed.
近年来,纵向和生存时间结局的联合建模受到了广泛关注。与之相应的是,适合这些模型的统计软件选项也在增加。然而,这些工具通常仅限于单个纵向结局。在这里,我们将经典联合模型扩展到多个纵向结局的情况,提出了一种用于拟合这些模型的实用算法,并演示了如何使用统计软件平台 R 的新软件包 joineRML 来拟合模型。
为纵向结局指定了多元线性混合子模型,为生存时间结局指定了具有时变协变量的 Cox 比例风险回归模型。通过零均值多元潜在高斯过程来捕捉模型之间的关联。使用蒙特卡罗期望最大化算法拟合模型,并基于经验轮廓信息矩阵的近似标准误差进行推断,与替代的自举估计方法进行对比。我们在一个原发性胆汁性肝硬化患者的三个重复测量生物标志物的真实数据示例上演示了该模型和软件。
提供了一个能够拟合多元联合模型的开源软件包。底层算法和源代码利用了几种方法来提高计算速度。