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Variable selection in the accelerated failure time model via the bridge method

机译:通过桥接方法在加速故障时间模型中进行变量选择

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In high throughput genomic studies, an important goal is to identify a small number of genomic markers that are associated with development and progression of diseases. A representative example is microarray prognostic studies, where the goal is to identify genes whose expressions are associated with disease free or overall survival. Because of the high dimensionality of gene expression data, standard survival analysis techniques cannot be directly applied. In addition, among the thousands of genes surveyed, only a subset are disease-associated. Gene selection is needed along with estimation. In this article, we model the relationship between gene expressions and survival using the accelerated failure time (AFT) models. We use the bridge penalization for regularized estimation and gene selection. An efficient iterative computational algorithm is proposed. Tuning parameters are selected using V-fold cross validation. We use a resampling method to evaluate the prediction performance of bridge estimator and the relative stability of identified genes. We show that the proposed bridge estimator is selection consistent under appropriate conditions. Analysis of two lymphoma prognostic studies suggests that the bridge estimator can identify a small number of genes and can have better prediction performance than the Lasso.
机译:在高通量基因组研究中,一个重要的目标是鉴定与疾病的发展和进程相关的少量基因组标记。代表性的例子是微阵列预后研究,其目的是鉴定其表达与无病或总体生存相关的基因。由于基因表达数据的高度维度,标准的生存分析技术无法直接应用。此外,在调查的数千个基因中,只有一部分与疾病相关。需要基因选择和估计。在本文中,我们使用加速失败时间(AFT)模型对基因表达与生存之间的关系进行建模。我们使用桥梁惩罚来进行正则化估计和基因选择。提出了一种有效的迭代计算算法。使用V折交叉验证选择调整参数。我们使用重采样方法来评估桥梁估计器的预测性能和已鉴定基因的相对稳定性。我们表明,所提出的桥梁估计量在适当条件下是一致的选择。对两项淋巴瘤预后研究的分析表明,桥估计器可以识别少量基因,并且比套索具有更好的预测性能。

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