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Recursive Partitioning Method on Competing Risk Outcomes

机译:竞争风险结果的递归划分方法

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摘要

In some cancer clinical studies, researchers have interests to explore the risk factors associated with competing risk outcomes such as recurrence-free survival. We develop a novel recursive partitioning framework on competing risk data for both prognostic and predictive model constructions. We define specific splitting rules, pruning algorithm, and final tree selection algorithm for the competing risk tree models. This methodology is quite flexible that it can corporate both semiparametric method using Cox proportional hazards model and parametric competing risk model. Both prognostic and predictive tree models are developed to adjust for potential confounding factors. Extensive simulations show that our methods have well-controlled type I error and robust power performance. Finally, we apply both Cox proportional hazards model and flexible parametric model for prognostic tree development on a retrospective clinical study on oropharyngeal cancer patients.
机译:在一些癌症临床研究中,研究人员有兴趣探索与竞争风险结果(例如无复发生存期)相关的风险因素。我们针对竞争性风险数据开发了一种新的递归分区框架,用于预测和预测模型的构建。我们为竞争风险树模型定义了特定的拆分规则,修剪算法和最终树选择算法。这种方法非常灵活,可以同时使用Cox比例风险模型和参数竞争风险模型来结合半参数方法。开发了预后树模型和预测树模型以适应潜在的混杂因素。大量的仿真表明,我们的方法具有良好控制的I型误差和强大的电源性能。最后,在口咽癌患者的回顾性临床研究中,我们将Cox比例风险模型和弹性参数模型应用于预后树的开发。

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