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Selecting informative genes from leukemia gene expression data using a hybrid approach for cancer classification

机译:使用混合方法从白血病基因表达数据中选择信息基因进行癌症分类

摘要

The development of microarray-based high-throughput gene profiling has led to the hope that this technology could provide an efficient and accurate means of diagnosing and classifying cancers. However, the large amount of data generated by microarrays requires effective selection of informative genes for cancer classification. Key issue that needs to be addressed is a selection of small number of informative genes that contribute to a disease from the thousands of genes measured on microarrays. This work deals with finding the small subset of informative genes from gene expression microarray data which maximize the classification accuracy. We introduce an improved version of hybrid of genetic algorithm and support vector machine for genes selection and classification. We show that the classification accuracy of the proposed approach is superior to a number of current state-of-the-art methods of one widely used benchmark dataset. The informative genes from the best subset are validated and verified by comparing them with the biological results produced from biology and computer scientist researchers in order to explore the biological plausibility.
机译:基于微阵列的高通量基因谱分析技术的发展,导致人们希望该技术可以提供一种有效且准确的癌症诊断和分类方法。然而,由微阵列产生的大量数据需要有效选择信息基因以进行癌症分类。需要解决的关键问题是从微阵列上测得的数千种基因中选择少数有助于疾病的信息基因。这项工作涉及从基因表达微阵列数据中找到信息基因的小子集,从而最大程度地提高分类准确性。我们介绍了遗传算法和支持向量机混合的改进版本,用于基因选择和分类。我们表明,提出的方法的分类精度优于一种广泛使用的基准数据集的许多当前最新技术。通过将最佳子集的信息基因与生物学和计算机科学家研究人员产生的生物学结果进行比较,来验证和验证这些信息基因,以探讨生物学上的合理性。

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