Carollo Angela, Eilers Paul, Putter Hein, Gampe Jutta
Max Planck Institute for Demographic Research, Rostock, Germany.
Department of Biomedical Data Sciences, Leiden University Medical Center, Leiden, The Netherlands.
Stat Med. 2025 Jan 15;44(1-2):e10297. doi: 10.1002/sim.10297. Epub 2024 Dec 9.
Hazard models are the most commonly used tool to analyze time-to-event data. If more than one time scale is relevant for the event under study, models are required that can incorporate the dependence of a hazard along two (or more) time scales. Such models should be flexible to capture the joint influence of several time scales, and nonparametric smoothing techniques are obvious candidates. -splines offer a flexible way to specify such hazard surfaces, and estimation is achieved by maximizing a penalized Poisson likelihood. Standard observation schemes, such as right-censoring and left-truncation, can be accommodated in a straightforward manner. Proportional hazards regression with a baseline hazard varying over two time scales is presented. Efficient computation is possible by generalized linear array model (GLAM) algorithms or by exploiting a sparse mixed model formulation. A companion R-package is provided.
风险模型是分析事件发生时间数据最常用的工具。如果对于所研究的事件有多个时间尺度相关,那么就需要能够纳入风险在两个(或更多)时间尺度上的依赖性的模型。这样的模型应该具有灵活性,以捕捉多个时间尺度的联合影响,而非参数平滑技术显然是合适的选择。样条提供了一种灵活的方式来指定此类风险曲面,并且通过最大化惩罚泊松似然来实现估计。标准的观测方案,如右删失和左截断,可以直接纳入。本文提出了一种基线风险在两个时间尺度上变化的比例风险回归。通过广义线性阵列模型(GLAM)算法或利用稀疏混合模型公式可以实现高效计算。并提供了一个配套的R包。