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Information criteria for Firths penalized partial likelihood approach in Cox regression models

机译:Cox回归模型中Firth的惩罚部分似然法的信息标准

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摘要

In the estimation of Cox regression models, maximum partial likelihood estimates might be infinite in a monotone likelihood setting, where partial likelihood converges to a finite value and parameter estimates converge to infinite values. To address monotone likelihood, previous studies have applied Firth's bias correction method to Cox regression models. However, while the model selection criteria for Firth's penalized partial likelihood approach have not yet been studied, a heuristic AIC‐type information criterion can be used in a statistical package. Application of the heuristic information criterion to data obtained from a prospective observational study of patients with multiple brain metastases indicated that the heuristic information criterion selects models with many parameters and ignores the adequacy of the model. Moreover, we showed that the heuristic information criterion tends to select models with many regression parameters as the sample size increases. Thereby, in the present study, we propose an alternative AIC‐type information criterion based on the risk function. A Bayesian information criterion type was also evaluated. Further, the presented simulation results confirm that the proposed criteria performed well in a monotone likelihood setting. The proposed AIC‐type criterion was applied to prospective observational study data. © 2017 The Authors. Statistics in Medicine Published by John Wiley & Sons Ltd
机译:在Cox回归模型的估计中,最大的部分似然估计在单调似然设置中可能是无限的,其中部分似然会收敛到有限值,而参数估计会收敛到无穷大。为了解决单调可能性,以前的研究已经将Firth的偏差校正方法应用于Cox回归模型。但是,虽然尚未研究Firth的惩罚性部分似然法的模型选择标准,但可以在统计软件包中使用启发式AIC类型的信息标准。将启发式信息标准应用于从对多发性脑转移患者的前瞻性观察研究中获得的数据表明,启发式信息标准选择具有许多参数的模型,而忽略了模型的充分性。此外,我们表明,随着样本量的增加,启发式信息准则倾向于选择具有许多回归参数的模型。因此,在本研究中,我们基于风险函数提出了另一种AIC类型的信息准则。还评估了贝叶斯信息标准类型。此外,提出的仿真结果证实了所提出的标准在单调似然设置中表现良好。拟议的AIC类型标准已应用于前瞻性观察研究数据。 ©2017作者。 John Wiley&Sons Ltd发布的医学统计学

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