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Feature Genes Selection Using Supervised Locally Linear Embedding and Correlation Coefficient for Microarray Classification

机译:使用监督局部线性嵌入和相关系数进行微阵列分类的特征基因选择

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摘要

The selection of feature genes with high recognition ability from the gene expression profiles has gained great significance in biology. However, most of the existing methods have a high time complexity and poor classification performance. Motivated by this, an effective feature selection method, called supervised locally linear embedding and Spearman's rank correlation coefficient (SLLE-SC2), is proposed which is based on the concept of locally linear embedding and correlation coefficient algorithms. Supervised locally linear embedding takes into account class label information and improves the classification performance. Furthermore, Spearman's rank correlation coefficient is used to remove the coexpression genes. The experiment results obtained on four public tumor microarray datasets illustrate that our method is valid and feasible.
机译:从基因表达谱中选择具有高识别能力的特征基因在生物学上具有重要意义。但是,大多数现有方法具有较高的时间复杂度和较差的分类性能。为此,基于局部线性嵌入和相关系数算法的概念,提出了一种有效的特征选择方法,称为监督局部线性嵌入和Spearman秩相关系数(SLLE-SC 2 )。 。有监督的局部线性嵌入考虑了类别标签信息,并提高了分类性能。此外,使用Spearman的秩相关系数删除共表达基因。在四个公共肿瘤微阵列数据集上获得的实验结果表明,该方法是有效可行的。

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