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Improving an evolutionary multi-objective algorithm for the biclustering of gene expression data

机译:改进用于基因表达数据的聚类的进化多目标算法

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The development of new technologies for the design of DNA microarrays has boosted the generation of large volumes of biological data, which requires the development of efficient computational methods for their analysis and annotation. Among these methods, biclusters generation algorithms attempt to identify coherent associations of genes and experimental conditions. In this paper, we introduce an improved version of a multi-objective genetic algorithm to find large biclusters that are, at the same time, highly homogeneous. The proposed improvement uses a group based representation for the genes-conditions associations rather than long binary strings. To assess the proposal performance the algorithm is applied to generate biclusters for two real gene expression data: Saccharomyces Cerevisiae with 2884 genes and 17 conditions, and the human B cells Lymphoma with 4026 genes and 96 conditions. The results of computational experiments show that the proposed approach outperforms current state-of-the-art algorithms on these data sets.
机译:用于DNA微阵列设计的新技术的发展促进了大量生物数据的产生,这需要开发用于其分析和注释的有效计算方法。在这些方法中,双峰生成算法试图识别基因和实验条件的连贯关联。在本文中,我们介绍了一种多目标遗传算法的改进版本,可以找到同时具有高度同质性的大型双聚类。提出的改进使用了基于组的表示形式来表达基因-条件,而不是使用长二进制字符串。为了评估提案的性能,该算法用于生成两个真实基因表达数据的双聚体:具有2884个基因和17个条件的酿酒酵母和具有4026个基因和96个条件的人B细胞淋巴瘤。计算实验结果表明,该方法在这些数据集上的性能优于当前的最新算法。

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