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Identification of lung cancer miRNA-miRNA co-regulation networks through a progressive data refining approach

机译:通过渐进数据提炼方法鉴定肺癌miRNA-miRNA共同调控网络

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Co-regulations of miRNAs have been much less studied than the research on regulations between miRNAs and their target genes, although these two problems are equally important for understanding the entire mechanisms of complex post-transcriptional regulations. The difficulty to construct a miRNA-miRNA co-regulation network lies in how to determine reliable miRNA pairs from various resources of data related to the same disease such as expression levels, gene ontology (GO) databases, and protein-protein interactions. Here we take a novel integrative approach to the discovery of miRNA-miRNA co-regulation networks. This approach can progressively refine the various types of data and the computational analysis results. Applied to three lung cancer miRNA expression data sets of different subtypes, our method has identified a miRNA-miRNA co-regulation network and co-regulating functional modules common to lung cancer. An example of these functional modules consists of genes SMAD2, ACVR1B, ACVR2A and ACVR2B. This module is synergistically regulated by let-7a/b/c/f, is enriched in the same GO category, and has a close proximity in the protein interaction network. We also find that the co-regulation network is scale free and that lung cancer related miRNAs have more synergism in the network. According to our literature survey and database validation, many of these results are biologically meaningful for understanding the mechanism of the complex post-transcriptional regulations in lung cancer. (C) 2015 Elsevier Ltd. All rights reserved.
机译:与miRNA及其靶基因之间调控的研究相比,对miRNA的共调控的研究少得多,尽管这两个问题对于理解复杂的转录后调控的整个机制同样重要。构建miRNA-miRNA共同调控网络的困难在于如何从与同一疾病相关的各种数据资源中确定可靠的miRNA对,例如表达水平,基因本体(GO)数据库以及蛋白质-蛋白质相互作用。在这里,我们采用一种新颖的整合方法来发现miRNA-miRNA共同调控网络。这种方法可以逐步完善各种类型的数据和计算分析结果。我们的方法应用于三个不同亚型的肺癌miRNA表达数据集,已经确定了miRNA-miRNA共同调控网络和共同调控肺癌常见的功能模块。这些功能模块的示例包括基因SMAD2,ACVR1B,ACVR2A和ACVR2B。该模块由let-7a / b / c / f协同调节,富含同一GO类别,并且在蛋白质相互作用网络中非常接近。我们还发现,共调控网络是无标度的,并且与肺癌相关的miRNA在网络中具有更多的协同作用。根据我们的文献调查和数据库验证,许多结果对于理解肺癌中复杂的转录后调控机制具有生物学意义。 (C)2015 Elsevier Ltd.保留所有权利。

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