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Rank-based estimation in the ℓ1-regularized partly linear model for censored outcomes with application to integrated analyses of clinical predictors and gene expression data

机译:ℓ1正则化部分线性模型中基于秩的估计用于审查结果并应用于临床预测因子和基因表达数据的综合分析

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摘要

We consider estimation and variable selection in the partial linear model for censored data. The partial linear model for censored data is a direct extension of the accelerated failure time model, the latter of which is a very important alternative model to the proportional hazards model. We extend rank-based lasso-type estimators to a model that may contain nonlinear effects. Variable selection in such partial linear model has direct application to high-dimensional survival analyses that attempt to adjust for clinical predictors. In the microarray setting, previous methods can adjust for other clinical predictors by assuming that clinical and gene expression data enter the model linearly in the same fashion. Here, we select important variables after adjusting for prognostic clinical variables but the clinical effects are assumed nonlinear. Our estimator is based on stratification and can be extended naturally to account for multiple nonlinear effects. We illustrate the utility of our method through simulation studies and application to the Wisconsin prognostic breast cancer data set.
机译:我们考虑了部分线性模型中被估计数据的估计和变量选择。删失数据的部分线性模型是加速失效时间模型的直接扩展,后者是比例风险模型的非常重要的替代模型。我们将基于等级的套索类型估计量扩展到可能包含非线性效应的模型。这种局部线性模型中的变量选择已直接应用于试图针对临床预测因素进行调整的高维生存分析。在微阵列设置中,通过假设临床和基因表达数据以相同的方式线性进入模型,先前的方法可以调整其他临床预测因子。在这里,我们在调整预后临床变量后选择重要变量,但假定临床效果是非线性的。我们的估算器基于分层,可以自然扩展以解决多种非线性效应。我们通过仿真研究和将其应用于威斯康星州预后乳腺癌数据集,说明了我们方法的实用性。

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