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Dynamic pseudo-observations: A robust approach to dynamic prediction in competing risks

机译:动态伪观察:竞争风险动态预测的强大方法

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摘要

Summary: In this article, we propose a new approach to the problem of dynamic prediction of survival data in the presence of competing risks as an extension of the landmark model for ordinary survival data. The key feature of our method is the introduction of dynamic pseudo-observations constructed from the prediction probabilities at different landmark prediction times. They specifically address the issue of estimating covariate effects directly on the cumulative incidence scale in competing risks. A flexible generalized linear model based on these dynamic pseudo-observations and a generalized estimation equations approach to estimate the baseline and covariate effects will result in the desired dynamic predictions and robust standard errors. Our approach has a number of attractive features. It focuses directly on the prediction probabilities of interest, avoiding in this way complex modeling of cause-specific hazards or subdistribution hazards. As a result, it is robust against departures from these omnibus models. From a computational point of view an advantage of our approach is that it can be fitted with existing statistical software and that a variety of link functions and regression models can be considered, once the dynamic pseudo-observations have been estimated. We illustrate our approach on a real data set of chronic myeloid leukemia patients after bone marrow transplantation.
机译:摘要:在本文中,我们提出了一种新的方法来存在竞争风险存在的生存数据的动态预测问题作为普通生存数据的地标模型的延伸。我们方法的关键特征是引入从不同地标预测时间的预测概率构成的动态伪观察。他们专门针对竞争风险累计入学规模直接估算协变量影响的问题。基于这些动态伪观察的灵活的广义线性模型和估计基线和协变量效应的广义估计方程方法将导致所需的动态预测和鲁棒标准错误。我们的方法具有许多有吸引力的功能。它直接侧重于感兴趣的预测概率,以这种方式避免了对特异性危险或分区危害的复杂建模。因此,它对来自这些综合型号的偏离造成的强大。从计算的角度来看,一旦估计动态伪观察,就可以拟合现有统计软件并且可以考虑各种链路功能和回归模型。我们说明了骨髓移植后慢性骨髓白血病患者真实数据集的方法。

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