Longitudinal and high-dimensional measurements have become increasingly common in biomedical research. However, methods to predict survival outcomes using covariates that are both longitudinal and high-dimensional are currently missing. In this article, we propose penalized regression calibration (PRC), a method that can be employed to predict survival in such situations. PRC comprises three modeling steps: First, the trajectories described by the longitudinal predictors are flexibly modeled through the specification of multivariate mixed effects models. Second, subject-specific summaries of the longitudinal trajectories are derived from the fitted mixed models. Third, the time to event outcome is predicted using the subject-specific summaries as covariates in a penalized Cox model. To ensure a proper internal validation of the fitted PRC models, we furthermore develop a cluster bootstrap optimism correction procedure that allows to correct for the optimistic bias of apparent measures of predictiveness. PRC and the CBOCP are implemented in the R package pencal, available from CRAN. After studying the behavior of PRC via simulations, we conclude by illustrating an application of PRC to data from an observational study that involved patients affected by Duchenne muscular dystrophy, where the goal is predict time to loss of ambulation using longitudinal blood biomarkers.
翻译:在生物医学研究中,越来越常见的是纵向和高维测量;然而,目前缺少使用纵向和高维共变法预测生存结果的方法;在本篇文章中,我们提议采用惩罚性回归校准(PRC),这是在这种情况下可以用来预测生存情况的一种方法;PRC包括三个示范步骤:首先,长视预测器描述的轨迹通过多变混合效应模型的规格,灵活地建模;第二,从适合的混合模型中衍生出纵向轨迹的专题摘要。第三,利用特定主题摘要作为受罚的考克斯模型的共变式预测事件结果的时间预测。为了确保对适合的PRC模型进行适当的内部验证,我们还开发了一个集束靴状乐观性修正程序,以便能够纠正预测性明显计量的乐观偏差。PRC和CBOCCP在CR包中实施,从CRAN获得。在通过模拟研究PRC的行为后,我们通过从观察性研究将PRC用于数据,从观察性研究中显示PRC用于由生物细胞影响病人长期的磁测测测测目标。