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A simple method for deriving the confidence regions for the penalized Cox's model via the minimand perturbation

机译:通过MINIMAND扰动导出惩罚COX模型的置信区的简单方法

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We propose a minimand perturbation method to derive the confidence regions for the regularized estimators for the Cox's proportional hazards model. Although the regularized estimation procedure produces a more stable point estimate, it remains challenging to provide an interval estimator or an analytic variance estimator for the associated point estimate. Based on the sandwich formula, the current variance estimator provides a simple approximation, but its finite-sample performance is not entirely satisfactory. Besides, the sandwich formula can only provide variance estimates for the non zero coefficients. In this article, we present a generic description for the perturbation method and then introduce a computation algorithm using the adaptive least absolute shrinkage and selection operator (LASSO) penalty. Through simulation studies, we demonstrate that our method can better approximate the limiting distribution of the adaptive LASSO estimator and produces more accurate inference compared with the sandwich formula. The simulation results also indicate the possibility of extending the applications to the adaptive elastic-net penalty. We further demonstrate our method using data from a Phase III clinical trial in prostate cancer.
机译:我们提出了一种最小的扰动方法来导出COX比例危害模型的正规化估计的置信区。尽管正则化估计程序产生了更稳定的点估计,但是提供了间隔估计器或用于相关点估计的分析方差估计值仍然具有挑战性。基于三明治公式,电流方差估计器提供了简单的近似,但其有限样本性能并不完全令人满意。此外,夹层公式只能为非零系数提供方差估计。在本文中,我们介绍了扰动方法的通用描述,然后使用自适应最小绝对收缩和选择运算符(套索)惩罚引入计算算法。通过仿真研究,我们证明我们的方法可以更好地近似自适应套索估计器的限制分布,并与夹层配方相比产生更准确的推理。仿真结果还表明将应用扩展到自适应弹性净罚款的可能性。我们进一步证明了我们使用来自前列腺癌中的III期临床试验的数据的方法。

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