一种用于癌症分类的混合过滤-包装基因选择方法

O. Alomari, A. Khader, M. Al-Betar, Zaid Abdi Alkareem Alyasseri
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引用次数: 28

摘要

DNA微阵列技术的出现为分子生物学家在一次实验中分析数千个基因(特征)的表达水平提供了更多的机会。基因表达水平为癌症等多种疾病的诊断提供了可能。在这方面,可以应用一些计算技术,如模式分类方法。然而,大量基因的存在和很少的患者样本阻碍了分类器或机器学习技术产生准确的分类结果。这些基因大多是无关的和冗余的,这可能会降低分类性能。因此,需要进行基因选择,选择最相关的基因。本文提出了以最小冗余最大相关性(MRMR)为过滤方法,以花授粉算法(FPA)为包装方法的混合过滤-包装基因选择方法。利用MRMR从基因表达数据中的所有基因中寻找最重要的基因,利用FPA从MRMR获得的约简集中定位最具信息量的基因子集。为了测试该研究提出的方法的准确性和性能,进行了广泛的实验,并使用了三个微阵列数据集。它们包括结肠、乳房和卵巢。在遗传算法(GA)上执行了类似的程序,并与本研究提出的方法(MRMR-FPA)进行了比较。结果表明,MRMR-FPA可以作为解决基因选择问题的一种替代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Filter-Wrapper Gene Selection Method for Cancer Classification
The advent of DNA microarray technology has paved the way to providing increased opportunities to the molecular biologists to analyze the expression level of thousands of genes (features) in one experiment. The gene expression level provides the possibility of diagnosing various diseases such as cancer. In this regard, several computational techniques such as pattern classification approaches can be applied. However, the existence of a huge quantity of genes and very few patients' samples available hinders the classifier or machine learning techniques from producing accurate classification results. Most of these genes are irrelevant and redundant, which may deteriorate the classification performance. Therefore, gene selection is needed to select the most relevant genes. This paper proposes hybrid filter-wrapper gene selection method using Minimum Redundancy Maximum Relevancy (MRMR) as the filter approach and flower pollination algorithm (FPA) as the wrapper approach. MRMR was used to find the most important genes from all genes in the gene expression data, and FPA is employed in order to locate the most informative gene subset from the reduce set that obtained by MRMR. To test the accuracy and performance of the study's proposed method, extensive experiments are conducted and three microarray datasets are used. They include Colon, Breast, and Ovarian. A similar procedure has been performed on the Genetic algorithm (GA) in comparison with the proposed method (MRMR-FPA) in this study. The results concluded that the MRMR-FPA can be used as an alternative method to address the gene selection problem.
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