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首页> 外文期刊>Computational Biology and Bioinformatics, IEEE/ACM Transactions on >Gene Selection Integrated with Biological Knowledge for Plant Stress Response Using Neighborhood System and Rough Set Theory
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Gene Selection Integrated with Biological Knowledge for Plant Stress Response Using Neighborhood System and Rough Set Theory

机译:基于邻域系统和粗糙集理论的结合生物知识的植物抗逆基因选择

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摘要

Mining knowledge from gene expression data is a hot research topic and direction of bioinformatics. Gene selection and sample classification are significant research trends, due to the large amount of genes and small size of samples in gene expression data. Rough set theory has been successfully applied to gene selection, as it can select attributes without redundancy. To improve the interpretability of the selected genes, some researchers introduced biological knowledge. In this paper, we first employ neighborhood system to deal directly with the new information table formed by integrating gene expression data with biological knowledge, which can simultaneously present the information in multiple perspectives and do not weaken the information of individual gene for selection and classification. Then, we give a novel framework for gene selection and propose a significant gene selection method based on this framework by employing reduction algorithm in rough set theory. The proposed method is applied to the analysis of plant stress response. Experimental results on three data sets show that the proposed method is effective, as it can select significant gene subsets without redundancy and achieve high classification accuracy. Biological analysis for the results shows that the interpretability is well.
机译:从基因表达数据中挖掘知识是生物信息学研究的热点和方向。由于基因表达数据中大量的基因和较小的样本量,因此基因选择和样本分类是重要的研究趋势。粗糙集理论已经成功地应用于基因选择,因为它可以选择属性而没有冗余。为了提高所选基因的可解释性,一些研究人员介绍了生物学知识。在本文中,我们首先采用邻域系统直接处理通过将基因表达数据与生物学知识整合而形成的新信息表,该信息表可以同时从多个角度呈现信息,而不会削弱单个基因的选择和分类信息。然后,我们给出了一个新的基因选择框架,并在粗糙集理论中采用归约算法,提出了一种基于该框架的重要基因选择方法。该方法用于植物胁迫响应分析。在三个数据集上的实验结果表明,该方法是有效的,因为它可以选择重要的基因子集而没有冗余,并且具有很高的分类精度。结果的生物学分析表明,可解释性很好。

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