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Characteristic gene selection via L2,1-norm Sparse Principal Component Analysis

机译:通过L2,1-NOM稀疏主成分分析的特征基因选择

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Sparse Principal Component Analysis (SPCA) is a method that can get the sparse loadings of the principal components (PCs), and it may formulate PCA as a regression-type optimization problem by using the elastic net. But the selected features are different with each PC and generally independent. A new method named SPCA has been proposed for removing these detect, which replaces the elastic net with L2,1-norm penalty. The results of the method on gene expression data are still unknown. Therefore, we will take a test to prove this point in this paper. Firstly, this method is applied to the simulated data for obtaining an optimal parameter. Secondly, the L2,1SPCA method is applied to the gene expression data, that is the head and neck squamous carcinoma data (HNSC). Thirdly, the characteristic genes are selected according the PCs. The results consist of very lower P-value and very higher hit count, which shows the method of L2,1SPCA can obtain higher recognition accuracy and higher relevancy to the genes. Finally, the experimental results demonstrate that the L2,1SPCA works well and has good performances in the gene expression data.
机译:稀疏主成分分析(SPCA)是一种方法,可以通过使用弹性网将PCA作为回归型优化问题标记为回归型优化问题。但是所选功能与每个PC不同,通常是独立的。已经提出了一种名为SPCA的新方法来删除这些检测,该检测将弹性网替换为L2,1-NOM罚款。基因表达数据的方法的结果仍然未知。因此,我们将参加考试证明这一点。首先,该方法应用于用于获得最佳参数的模拟数据。其次,将L2,1SPCA方法应用于基因表达数据,即头部和颈部鳞状癌数据(HNSC)。第三,根据PC选择特征基因。结果包括非常低的p值和非常高的命中计数,其显示L2,1SpCa的方法可以获得更高的识别精度和对基因的相关性。最后,实验结果表明,L2,1SPCA良好,在基因表达数据中具有良好的性能。

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