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首页> 外文期刊>International journal of machine learning and cybernetics >Simultaneous feature selection and clustering of micro-array and RNA-sequence gene expression data using multiobjective optimization
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Simultaneous feature selection and clustering of micro-array and RNA-sequence gene expression data using multiobjective optimization

机译:使用多目标优化的微阵和RNA序列基因表达数据的同时特征选择和聚类

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摘要

In this paper, we have devised a multiobjective optimization solution framework for solving the problem of gene expression data clustering in reduced feature space. Here clustering problem is viewed from two different aspects: clustering of genes in reduced sample space or clustering of samples in reduced gene space. Three objective functions: two internal cluster validity indices and the count on the number of features are optimized simultaneously by a popular multiobjective simulated annealing based approach, namely AMOSA. Here, point symmetry based distance is used for the assignment of gene data points to different clusters. Seven publicly available benchmark gene expression data sets are used for experimental purpose. Both aspects of clustering in reduced feature space is demonstrated. The proposed gene expression clustering technique outperforms the existing nine clustering techniques. Apart from this, also some statistical and biological significant tests have been carried out to show that the proposed FSC-MOO technique is more statistically and biologically enriched
机译:在本文中,我们设计了一种多目标优化解决方案框架,用于解决减少特征空间中基因表达数据聚类问题。这里从两个不同的方面观看聚类问题:在降低的样本空间或降低基因空间中的样品聚类中的基因聚类。三个客观函数:两个内部集群有效性指数和特征数量的计数通过基于流行的多目标模拟退火的方法同时进行优化,即amosa。这里,基于点对称的距离用于将基因数据指向分配给不同的簇。七种公开可用的基准基因表达数据集用于实验目的。证明了减少特征空间中聚类的两个方面。所提出的基因表达聚类技术优于现有的九个聚类技术。除此之外,还进行了一些统计和生物学重大测试,表明所提出的FSC-Moo技术更统计学和生物学富集

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