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A Novel Hybrid Approach to Selecting Marker Genes for Cancer Classification Using Gene Expression Data

机译:一种使用基因表达数据选择癌症分类标记基因的新型杂化方法

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Selecting a subset of marker genes from thousands of genes is an important topic in microarray experiments for diseases classification and prediction. In this paper, we proposed a novel hybrid approach that combines gene ranking, heuristic clustering analysis and wrapper method to select marker genes for tumor classification. In our method, we firstly employed gene filtering to select the informative genes; secondly, we extracted a set of prototype genes as the representative of the informative genes by heuristic K-means clustering; finally, employed SVMRFE to find marker genes from the representative genes based on recursive feature elimination. The performance of our method was evaluated by AML/ALL microarray dataset. The experimental results revealed that our method could find very small subset of marker genes with minimum redundancy but got better classification accuracy.
机译:选择来自数千个基因的标记基因子集是疾病分类和预测的微阵列实验中的重要课题。在本文中,我们提出了一种新的混合方法,将基因排名,启发式聚类分析和包装方法结合,选择肿瘤分类的标记基因。在我们的方法中,我们首先使用基因滤波来选择信息性基因;其次,我们通过启发式K-Means聚类提取了一组原型基因作为信息基因的代表;最后,使用SVMRFE根据递归特征消除,从代表性基因中找到标记基因。我们的方法的性能由AML /所有微阵列数据集进行评估。实验结果表明,我们的方法可以找到非常小的标记基因子集,具有最小冗余,但具有更好的分类准确性。

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