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A filter feature selection method based LLRFC and redundancy analysis for tumor classification using gene expression data

机译:基于滤波器特征选择方法的LLRFC和使用基因表达数据肿瘤分类冗余分析

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Tumor gene expression data has the characteristic of high dimensionality and small sample size, which pose a rigorous challenge for tumor classification. Since not all the genes are associated with tumor phenotypes, the irrelevant features seriously reduce the learning performance. It is necessary to select relevant features from the original data. In this paper, we propose a new filter feature selection method based on the graph embedding framework for manifold learning, which is named as LLRFC score. The relationship between sample classes and features is considered in this method. But the selected features via this method may contain some redundancy. Thus it is improved through eliminating redundancy among the features. The improved method is named LLRFC score+. Several other feature selection approaches are used to compare with our method on nine public tumor gene expression datasets, the experimental results demonstrate that our presented method is quite promising and valid for tumor classification.
机译:肿瘤基因表达数据具有高维度和小样本尺寸的特征,对肿瘤分类构成严格的挑战。由于并非所有基因与肿瘤表型相关,因此无关的特征严重降低了学习性能。有必要从原始数据中选择相关的功能。在本文中,我们提出了一种基于嵌入式媒体学习框架的新滤波器特征选择方法,该方法被命名为LLRFC分数。在此方法中考虑了样本类和特征之间的关系。但是通过此方法所选功能可能包含一些冗余。因此,通过消除特征之间的冗余来改善。改进的方法被命名为LLRFC得分+。几种其他特征选择方法用于与我们在九个公共肿瘤基因表达数据集中的方法进行比较,实验结果表明,我们所提出的方法非常有希望和有效的肿瘤分类。

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