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Construction and Analysis of an Integrated Regulatory Network Derived from High-Throughput Sequencing Data

机译:高通量测序数据衍生的综合监管网络的构建与分析

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摘要

We present a network framework for analyzing multi-level regulation in higher eukaryotes based on systematic integration of various high-throughput datasets. The network, namely the integrated regulatory network, consists of three major types of regulation: TF→gene, TF→miRNA and miRNA→gene. We identified the target genes and target miRNAs for a set of TFs based on the ChIP-Seq binding profiles, the predicted targets of miRNAs using annotated 3′UTR sequences and conservation information. Making use of the system-wide RNA-Seq profiles, we classified transcription factors into positive and negative regulators and assigned a sign for each regulatory interaction. Other types of edges such as protein-protein interactions and potential intra-regulations between miRNAs based on the embedding of miRNAs in their host genes were further incorporated. We examined the topological structures of the network, including its hierarchical organization and motif enrichment. We found that transcription factors downstream of the hierarchy distinguish themselves by expressing more uniformly at various tissues, have more interacting partners, and are more likely to be essential. We found an over-representation of notable network motifs, including a FFL in which a miRNA cost-effectively shuts down a transcription factor and its target. We used data of C. elegans from the modENCODE project as a primary model to illustrate our framework, but further verified the results using other two data sets. As more and more genome-wide ChIP-Seq and RNA-Seq data becomes available in the near future, our methods of data integration have various potential applications.
机译:我们基于各种高通量数据集的系统集成,提出了一个用于分析高等真核生物多级调控的网络框架。该网络,即综合调控网络,由三种主要调控类型组成:TF→基因,TF→miRNA和miRNA→基因。我们基于ChIP-Seq结合谱,使用带注释的3'UTR序列的miRNA的预测靶标,为一组TF鉴定了靶基因和靶标miRNA。利用系统范围内的RNA-Seq图谱,我们将转录因子分为正调节剂和负调节剂,并为每个调节相互作用分配一个符号。进一步纳入了其他类型的边缘,例如基于miRNA嵌入宿主基因的miRNA之间的蛋白质-蛋白质相互作用和潜在的内部调控。我们检查了网络的拓扑结构,包括其层次结构和主题丰富性。我们发现,层次结构下游的转录因子通过在各种组织中更均匀地表达,具有更多的相互作用伙伴以及更有可能是必不可少的特征而与众不同。我们发现了明显的网络基序的过度表现,包括FFL,其中miRNA有效地关闭了转录因子及其靶标。我们使用来自modENCODE项目的秀丽隐杆线虫数据作为主要模型来说明我们的框架,但使用其他两个数据集进一步验证了结果。随着越来越多的全基因组ChIP-Seq和RNA-Seq数据在不久的将来变得可用,我们的数据集成方法具有各种潜在的应用。

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