首页> 外文会议>International Conference on Computational Science(ICCS 2005) pt.2; 20050522-25; Atlanta, GA(US) >Virtual Gene: A Gene Selection Algorithm for Sample Classification on Microarray Datasets
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Virtual Gene: A Gene Selection Algorithm for Sample Classification on Microarray Datasets

机译:虚拟基因:用于微阵列数据集样本分类的基因选择算法

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摘要

Gene Selection is one class of most used data analysis algorithms on microarray dataset. The goal of gene selection algorithms is to filter out a small set of informative genes that best explains experimental variations. Traditional gene selection algorithms are mostly single-gene based. Some discriminative scores are calculated and sorted for each gene. Top ranked genes are then selected as informative genes for further study. Such algorithms ignore completely correlations between genes, although such correlations is widely known. Genes interact with each other through various pathways and regulative networks. In this paper, we propose to use, instead of ignoring, such correlations for gene selection. Experiments performed on three public available datasets show promising results.
机译:基因选择是微阵列数据集上最常用的一类数据分析算法。基因选择算法的目的是过滤出最能解释实验变异的少量信息基因。传统的基因选择算法大多基于单基因。为每个基因计算并分类一些判别分数。然后选择排名最高的基因作为信息基因,以供进一步研究。尽管众所周知,这种算法完全忽略了基因之间的相关性。基因通过各种途径和调控网络相互影响。在本文中,我们建议使用而不是忽略这样的相关性进行基因选择。在三个公共可用数据集上进行的实验显示出令人鼓舞的结果。

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