论文标题
与时变协变量的生存函数估计的合奏方法
Ensemble methods for survival function estimation with time-varying covariates
论文作者
论文摘要
在实践中,带有时变协变量的生存数据很常见。如果相关,它们可以改善生存功能的估计。但是,传统的生存森林(有条件的推理森林,相对风险森林和随机生存林)仅容纳了时间不变的协变量。我们概括了条件推断和相对风险森林,以允许时变的协变量。我们还提出了一个通用框架,用于在存在时变协变量的情况下估算生存功能。我们通过全面的仿真研究将它们与Cox模型和转化森林的性能进行比较,以适应时间变化的协变量,在该研究中,Kaplan-Meier估计值是基准,并且使用真实和估计的生存功能之间的综合L2差异来比较性能。总的来说,这两个拟议森林的表现显着改善了卡普兰 - 梅尔估计。考虑到所有其他因素,在比例危害(pH)设置下,最好的方法始终是拟议的森林之一,而在非ph设置下,这是适应性的转化森林。 K折交叉验证用作实践中方法之间选择的有效工具。
Survival data with time-varying covariates are common in practice. If relevant, they can improve on the estimation of survival function. However, the traditional survival forests - conditional inference forest, relative risk forest and random survival forest - have accommodated only time-invariant covariates. We generalize the conditional inference and relative risk forests to allow time-varying covariates. We also propose a general framework for estimation of a survival function in the presence of time-varying covariates. We compare their performance with that of the Cox model and transformation forest, adapted here to accommodate time-varying covariates, through a comprehensive simulation study in which the Kaplan-Meier estimate serves as a benchmark, and performance is compared using the integrated L2 difference between the true and estimated survival functions. In general, the performance of the two proposed forests substantially improves over the Kaplan-Meier estimate. Taking into account all other factors, under the proportional hazard (PH) setting, the best method is always one of the two proposed forests, while under the non-PH setting, it is the adapted transformation forest. K-fold cross-validation is used as an effective tool to choose between the methods in practice.