Comparative Analysis of DNA Microarray Data through the Use of Feature Selection Techniques

D. Dittman, T. Khoshgoftaar, Randall Wald, J. V. Hulse
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引用次数: 49

Abstract

One of today’s most important scientific research topics is discovering the genetic links between cancers. This paper contains the results of a comparison of three different cancers (breast, colon, and lung) based on the results of feature selection techniques on a data set created from DNA micro array data consisting of samples from all three cancers. The data was run through a set of eighteen feature rankers which ordered the genes by importance with respect to a targeted cancer. This process was repeated three times, each time with a different target cancer. The rankings were then compared, keeping each feature ranker static while varying the cancers being compared. The cancers were evaluated both in pairs and all together, for matching genes. The results of the comparison show a large correlation between the two known hereditary cancers, breast and colon, and little correlation between lung cancer and the other cancers. This is the first study to apply eighteen different feature rankers in a bioinformatics case study, eleven of which were recently proposed and implemented by our research team.
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利用特征选择技术对DNA微阵列数据进行比较分析
当今最重要的科学研究课题之一是发现癌症之间的遗传联系。这篇论文包含了三种不同癌症(乳腺癌、结肠癌和肺癌)的比较结果,基于特征选择技术对由所有三种癌症样本组成的DNA微阵列数据创建的数据集的结果。这些数据是通过一组18个特征排序器来运行的,这些特征排序器根据基因对目标癌症的重要性进行排序。这个过程重复了三次,每次针对不同的目标癌症。然后对这些排名进行比较,保持每个特征的排名不变,同时改变被比较的癌症。为了匹配基因,研究人员对这些癌症进行了成对或一起评估。比较的结果显示,乳腺癌和结肠癌这两种已知的遗传性癌症之间有很大的相关性,而肺癌和其他癌症之间的相关性很小。这是第一次在生物信息学案例研究中应用18种不同的特征排序器,其中11种是我们的研究团队最近提出并实施的。
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