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Identification of prognostic genes and gene sets for early-stage non-small cell lung cancer using bi-level selection methods

机译:使用Bi-Level选择方法鉴定早期非小细胞肺癌的预后基因和基因套

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In contrast to feature selection and gene set analysis, bi-level selection is a process of selecting not only important gene sets but also important genes within those gene sets. Depending on the order of selections, a bi-level selection method can be classified into three categories – forward selection, which first selects relevant gene sets followed by the selection of relevant individual genes; backward selection which takes the reversed order; and simultaneous selection, which performs the two tasks simultaneously usually with the aids of a penalized regression model. To test the existence of subtype-specific prognostic genes for non-small cell lung cancer (NSCLC), we had previously proposed the Cox-filter method that examines the association between patients’ survival time after diagnosis with one specific gene, the disease subtypes, and their interaction terms. In this study, we further extend it to carry out forward and backward bi-level selection. Using simulations and a NSCLC application, we demonstrate that the forward selection outperforms the backward selection and other relevant algorithms in our setting. Both proposed methods are readily understandable and interpretable. Therefore, they represent useful tools for the researchers who are interested in exploring the prognostic value of gene expression data for specific subtypes or stages of a disease.
机译:与特征选择和基因集分析相反,Bi-Level选择是不仅选择重要基因集的过程,而且选择这些基因集中的重要基因。根据选择的顺序,双级选择方法可以分为三类 - 前进选择,首先选择相关的基因集,然后选择相关的个体基因;落后选择,采用逆转顺序;并同时选择,它通常使用惩罚回归模型的辅助执行两个任务。为了测试非小细胞肺癌(NSCLC)的亚型特异性预后基因的存在,我们先前提出了Cox过滤方法,该方法检查诊断后患者存活时间与一个特定基因,疾病亚型,及其互动条款。在这项研究中,我们进一步扩展了它以进行前进和后向双级选择。使用模拟和NSCLC应用程序,我们证明了前瞻选择优于我们的设置中的后向选择和其他相关算法。两个提出的方法都易于理解和可解释。因此,它们代表了有兴趣探索基因表达数据的预后值的研究人员对疾病的特定亚型或阶段的预后价值。

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