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Automatic evolution of bi-clusters from microarray data using self-organized multi-objective evolutionary algorithm

机译:使用自组织多目标进化算法从微阵列数据自动演变

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摘要

In the current paper, a novel approach is proposed for bi-clustering of gene expression data using the fusion of differential evolution framework and self-organizing map (SOM), named as BiClustSMEA. Variable number of gene and condition cluster centers are encoded in different solutions of the population to determine the number of bi-clusters from a dataset in an automated way. The concept of SOM is utilized in designing new genetic operators for both gene and condition clusters to reach to the optimal solution in a faster way. In order to measure the goodness of a bi-clustering solution, three bi-cluster quality measures, mean squared error, row variance, and bi-cluster size, are optimized simultaneously using differential evolution as the underlying optimization strategy. The concept of polynomial mutation is incorporated in our framework to generate highly diverse solutions which in turn helps in faster convergence. The proposed approach is applied on two real-life microarray gene expression datasets and results are compared with various state-of-the-art techniques. Results obtained clearly illustrate that our approach extracts high-quality bi-clusters as compared to other methods and also it converges much faster than other competitors. Further, the obtained results are validated using statistical significance test and biological significance test.
机译:在本文中,提出了一种新的方法,用于使用差分演进框架和自组织地图(SOM)的融合来进行基因表达数据的双聚类方法,命名为BIClustsmea。可变数量的基因和条件集群中心被编码在群体的不同解决方案中,以以自动化方式确定来自数据集的双簇数。 SOM的概念用于设计新的基因和病态簇的新遗传算子,以更快地达到最佳解决方案。为了测量双聚类解决方案的良好,三个双簇质量测量,平均平方误差,行差异和双簇大小,同时使用差分演变作为潜在的优化策略进行优化。多项式突变的概念纳入我们的框架中,以产生高度多样化的解决方案,反过来有助于更快的收敛。所提出的方法应用于两个现实生活中的微阵列基因表达数据集和结果与各种最先进的技术进行了比较。明确说明的结果表明,与其他方法相比,我们的方法提取高质量的双簇,而且它也会比其他竞争对手收敛得多。此外,使用统计显着性测试和生物意义测试验证所得结果。

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