Cortese Giuliana, Andersen Per K
Department of Statistical Science, University of Padova, Italy.
Biom J. 2010 Feb;52(1):138-58. doi: 10.1002/bimj.200900076.
Time-dependent covariates are frequently encountered in regression analysis for event history data and competing risks. They are often essential predictors, which cannot be substituted by time-fixed covariates. This study briefly recalls the different types of time-dependent covariates, as classified by Kalbfleisch and Prentice [The Statistical Analysis of Failure Time Data, Wiley, New York, 2002] with the intent of clarifying their role and emphasizing the limitations in standard survival models and in the competing risks setting. If random (internal) time-dependent covariates are to be included in the modeling process, then it is still possible to estimate cause-specific hazards but prediction of the cumulative incidences and survival probabilities based on these is no longer feasible. This article aims at providing some possible strategies for dealing with these prediction problems. In a multi-state framework, a first approach uses internal covariates to define additional (intermediate) transient states in the competing risks model. Another approach is to apply the landmark analysis as described by van Houwelingen [Scandinavian Journal of Statistics 2007, 34, 70-85] in order to study cumulative incidences at different subintervals of the entire study period. The final strategy is to extend the competing risks model by considering all the possible combinations between internal covariate levels and cause-specific events as final states. In all of those proposals, it is possible to estimate the changes/differences of the cumulative risks associated with simple internal covariates. An illustrative example based on bone marrow transplant data is presented in order to compare the different methods.
在事件史数据和竞争风险的回归分析中,经常会遇到随时间变化的协变量。它们通常是重要的预测因素,不能被固定时间的协变量所替代。本研究简要回顾了卡尔弗莱什和普伦蒂斯(《失效时间数据的统计分析》,威利出版社,纽约,2002年)所分类的不同类型的随时间变化的协变量,目的是阐明它们的作用,并强调标准生存模型和竞争风险设定中的局限性。如果要将随机(内部)随时间变化的协变量纳入建模过程,那么仍然可以估计特定病因的风险,但基于这些协变量预测累积发病率和生存概率就不再可行。本文旨在提供一些处理这些预测问题的可能策略。在多状态框架中,第一种方法是使用内部协变量在竞争风险模型中定义额外的(中间)瞬态状态。另一种方法是应用范豪韦林根(《斯堪的纳维亚统计杂志》2007年,第34卷,70 - 85页)所描述的标志性分析,以便研究整个研究期间不同子区间的累积发病率。最后的策略是通过将内部协变量水平和特定病因事件之间的所有可能组合视为最终状态来扩展竞争风险模型。在所有这些提议中,都可以估计与简单内部协变量相关的累积风险的变化/差异。本文给出了一个基于骨髓移植数据的示例,以比较不同的方法。