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Integration of pathway knowledge into a reweighted recursive feature elimination approach for risk stratification of cancer patients.

机译:将途径知识集成到加权加权的递归特征消除方法中,以实现癌症患者的风险分层。

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MOTIVATION: One of the main goals of high-throughput gene-expression studies in cancer research is to identify prognostic gene signatures, which have the potential to predict the clinical outcome. It is common practice to investigate these questions using classification methods. However, standard methods merely rely on gene-expression data and assume the genes to be independent. Including pathway knowledge a priori into the classification process has recently been indicated as a promising way to increase classification accuracy as well as the interpretability and reproducibility of prognostic gene signatures. RESULTS: We propose a new method called Reweighted Recursive Feature Elimination. It is based on the hypothesis that a gene with a low fold-change should have an increased influence on the classifier if it is connected to differentially expressed genes. We used a modified version of Google's PageRank algorithm to alter the ranking criterion of the SVM-RFE algorithm. Evaluations of our method on an integrated breast cancer dataset comprising 788 samples showed an improvement of the area under the receiver operator characteristic curve as well as in the reproducibility and interpretability of selected genes. AVAILABILITY: The R code of the proposed algorithm is given in Supplementary Material.
机译:动机:高通量基因表达研究在癌症研究中的主要目标之一是鉴定预后基因特征,这些特征可以预测临床结果。通常使用分类方法来研究这些问题。但是,标准方法仅依赖于基因表达数据并假定基因是独立的。将途径知识包括在分类过程中的先验方法最近已被表明是一种提高分类准确性以及预后基因签名的可解释性和可再现性的有前途的方法。结果:我们提出了一种新方法,称为加权递归特征消除。基于这样的假说,如果低倍数变化的基因与差异表达的基因连接,那么它对分类器的影响就会增加。我们使用Google PageRank算法的修改版本来更改SVM-RFE算法的排名标准。我们对包含788个样本的综合乳腺癌数据集进行的方法评估显示,接收者操作员特征曲线下的面积以及所选基因的可重复性和可解释性都有所改善。可用性:所提出算法的R代码在补充材料中给出。

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