首页> 外文会议>2008 International Conference on Machine Learning and Cybernetics(2008机器学习与控制论国际会议)论文集 >THE APPLICATION OF ANT COLONY OPTIMIZATION FOR GENE SELECTION IN MICROARRAY-BASED CANCER CLASSIFICATION
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THE APPLICATION OF ANT COLONY OPTIMIZATION FOR GENE SELECTION IN MICROARRAY-BASED CANCER CLASSIFICATION

机译:蚁群算法在基因选择中的应用

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DNA mieroarrays technology enables us to obtain information about expression levels of thousands of genes at the same time. This technology promises to monitor the whole genome on a single chip so that researchers can have a better picture of the interactions among thousands of genes at the same time. It becomes a challenge to extract information from the large amount of data through data mining. One important application of gene expression microarray data is cancer classification. However, gene expression data collected for cancer classification usually has the property of the number of genes far exceeding the number of samples. Work in such a high dimensional space is extremely difficult. Previous researches have used two-stage classification method to deal with the gene expression data. Such approaches select genes to reduce problem dimension in the first stage and classify tumors in the second stage. In the study, the ant colony optimization (ACO) algorithm is introduced to select genes relevant to cancers first, then the multi-layer perccptrons (MI.P) neural network and support vector machine (SVM) classifiers are used for cancer classification. Experimental results show that selecting genes by using ACO algorithm can improve the accuracy of BP and SVM classifiers. The optimal number of genes selected for cancer classification should be set according to both the microarray dataset and gene selection methods.
机译:DNA微阵列技术使我们能够同时获取有关数千个基因表达水平的信息。这项技术有望在单个芯片上监控整个基因组,从而使研究人员可以同时更好地了解数千个基因之间的相互作用。通过数据挖掘从大量数据中提取信息已成为一项挑战。基因表达微阵列数据的一项重要应用是癌症分类。然而,为癌症分类收集的基因表达数据通常具有远远超过样本数量的基因数量的特性。在如此高维度的空间中工作非常困难。先前的研究已经使用两阶段分类方法来处理基因表达数据。这样的方法选择基因以减少第一阶段的问题范围,并在第二阶段对肿瘤进行分类。在研究中,引入蚁群优化(ACO)算法来首先选择与癌症相关的基因,然后使用多层Perccptrons(MI.P)神经网络和支持向量机(SVM)分类器进行癌症分类。实验结果表明,利用ACO算法选择基因可以提高BP和SVM分类器的准确性。应当根据微阵列数据集和基因选择方法来设定为癌症分类选择的最佳基因数。

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