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Gene Selection using a High-Dimensional Regression Model with Microarrays in Cancer Prognostic Studies

机译:在癌症预后研究中使用具有微阵列的高维回归模型进行基因选择

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Mining of gene expression data to identify genes associated with patient survival is an ongoing problem in cancer prognostic studies using microarrays in order to use such genes to achieve more accurate prognoses. The least absolute shrinkage and selection operator (lasso) is often used for gene selection and parameter estimation in high-dimensional microarray data. The lasso shrinks some of the coefficients to zero, and the amount of shrinkage is determined by the tuning parameter, often determined by cross validation. The model determined by this cross validation contains many false positives whose coefficients are actually zero. We propose a method for estimating the false positive rate (FPR) for lasso estimates in a high-dimensional Cox model. We performed a simulation study to examine the precision of the FPR estimate by the proposed method. We applied the proposed method to real data and illustrated the identification of false positive genes.
机译:为了使用这样的基因来实现更准确的预后,使用微阵列进行基因表达数据的挖掘以鉴定与患者存活相关的基因是癌症预后研究中的一个持续问题。最小绝对收缩和选择算子(lasso)通常用于高维微阵列数据中的基因选择和参数估计。套索将某些系数缩小为零,并且缩小量由调整参数确定,调整参数通常由交叉验证确定。通过这种交叉验证确定的模型包含许多误报,其系数实际上为零。我们提出了一种用于估计高维Cox模型中套索估计的误报率(FPR)的方法。我们进行了仿真研究,以检验所提出方法对FPR估算的精度。我们将提出的方法应用于真实数据并说明了假阳性基因的鉴定。

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