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A dependent Dirichlet process model for survival data with competing risks

机译:具有竞争风险的生存数据的依赖Dirichlet过程模型

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In this paper, we first propose a dependent Dirichlet process (DDP) model using a mixture of Weibull models with each mixture component resembling a Cox model for survival data. We then build a Dirichlet process mixture model for competing risks data without regression covariates. Next we extend this model to a DDP model for competing risks regression data by using a multiplicative covariate effect on subdis-tribution hazards in the mixture components. Though built on proportional hazards (or subdistribution hazards) models, the proposed nonparametric Bayesian regression models do not require the assumption of constant hazard (or subdistribution hazard) ratio. An external time-dependent covariate is also considered in the survival model. After describing the model, we discuss how both cause-specific and subdistribution hazard ratios can be estimated from the same nonparametric Bayesian model for competing risks regression. For use with the regression models proposed, we introduce an omnibus prior that is suitable when little external information is available about covariate effects. Finally we compare the models' performance with existing methods through simulations. We also illustrate the proposed competing risks regression model with data from a breast cancer study. An R package "DPWeibull" implementing all of the proposed methods is available at CRAN.
机译:在本文中,我们首先使用与生存数据类似COX模型的威布尔模型的混合物,提出依赖的Dirichlet方法(DDP)模型。然后,我们建立一个Dirichlet过程混合模型,用于竞争风险数据,没有回归协变量。接下来,我们将该模型扩展到DDP模型,用于通过使用混合物组分中的子系统趋势危害的乘法协变量影响来竞争风险回归数据。虽然基于比例危险(或分区危险)模型,但所提出的非参数贝叶斯回归模型不需要假设恒定危险(或分区危险)的比率。在生存模型中也考虑了外部时间依赖的协变量。在描述模型后,我们讨论如何从相同的非参数贝叶斯模型估算原因特定和分区危险比如何竞争风险回归。对于提出的回归模型,我们之前引入了一个综合性,这是适合的,当时的外部信息可用于协变量。最后,我们通过模拟将模型的性能与现有方法进行比较。我们还通过来自乳腺癌研究的数据说明了提议的竞争力风险回归模型。 CRAN提供了实现所有提出的方法的R包“DPWEIBULL”。

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