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A Novel Biclustering Algorithm for the Discovery of Meaningful Biological Correlations between microRNAs and their Target Genes

机译:发现微小RNA及其靶基因之间有意义的生物学关联的新型双聚类算法

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摘要

BackgroundmicroRNAs (miRNAs) are a class of small non-coding RNAs which have been recognized as ubiquitous post-transcriptional regulators. The analysis of interactions between different miRNAs and their target genes is necessary for the understanding of miRNAs' role in the control of cell life and death. In this paper we propose a novel data mining algorithm, called HOCCLUS2, specifically designed to bicluster miRNAs and target messenger RNAs (mRNAs) on the basis of their experimentally-verified and/or predicted interactions. Indeed, existing biclustering approaches, typically used to analyze gene expression data, fail when applied to miRNA:mRNA interactions since they usually do not extract possibly overlapping biclusters (miRNAs and their target genes may have multiple roles), extract a huge amount of biclusters (difficult to browse and rank on the basis of their importance) and work on similarities of feature values (do not limit the analysis to reliable interactions).
机译:背景微RNA(miRNA)是一类小的非编码RNA,已被公认是普遍存在的转录后调节子。为了了解miRNA在控制细胞生死中的作用,必须分析不同miRNA及其靶基因之间的相互作用。在本文中,我们提出了一种称为HOCCLUS2的新型数据挖掘算法,该算法专门设计用于根据经过实验验证和/或预测的相互作用对miRNA和目标信使RNA(mRNA)进行聚类。确实,通常用于分析基因表达数据的现有双聚类方法在应用于miRNA:mRNA相互作用时会失败,因为它们通常不会提取可能重叠的双聚类(miRNA及其靶基因可能具有多种作用),会提取大量双聚类(难以根据重要性进行浏览和排名),也无法处理特征值的相似性(不要将分析限于可靠的交互)。

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