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Integration of Hi-C and ChIP-seq data reveals distinct types of chromatin linkages

机译:Hi-C和ChIP-seq数据的整合揭示了染色质键的不同类型

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We have analyzed publicly available K562 Hi-C data, which enable genome-wide unbiased capturing of chromatin interactions, using a Mixture Poisson Regression Model and a power-law decay background to define a highly specific set of interacting genomic regions. We integrated multiple ENCODE Consortium resources with the Hi-C data, using DNase-seq data and ChIP-seq data for 45 transcription factors and 9 histone modifications. We classified 12 different sets (clusters) of interacting loci that can be distinguished by their chromatin modifications and which can be categorized into two types of chromatin linkages. The different clusters of loci display very different relationships with transcription factor-binding sites. As expected, many of the transcription factors show binding patterns specific to clusters composed of interacting loci that encompass promoters or enhancers. However, cluster 9, which is distinguished by marks of open chromatin but not by active enhancer or promoter marks, was not bound by most transcription factors but was highly enriched for three transcription factors (GATA1, GATA2 and c-Jun) and three chromatin modifiers (BRG1, INI1 and SIRT6). To investigate the impact of chromatin organization on gene regulation, we performed ribonucleicacid-seq analyses before and after knockdown of GATA1 or GATA2. We found that knockdown of the GATA factors not only alters the expression of genes having a nearby bound GATA but also affects expression of genes in interacting loci. Our work, in combination with previous studies linking regulation by GATA factors with c-Jun and BRG1, provides genome-wide evidence that Hi-C data identify sets of biologically relevant interacting loci.
机译:我们已经分析了公开可用的K562 Hi-C数据,使用混合泊松回归模型和幂律衰减背景来定义一组高度特定的相互作用基因组区域,从而能够在全基因组范围内无偏见地捕获染色质相互作用。我们将DNase-seq数据和ChIP-seq数据用于45个转录因子和9个组蛋白修饰,将多个ENCODE Con​​sortium资源与Hi-C数据集成在一起。我们将12个不同的相互作用位点集(簇)分类,这些位点可以通过它们的染色质修饰来区分,并且可以分为两种类型的染色质键。基因座的不同簇显示出与转录因子结合位点非常不同的关系。如所预期的,许多转录因子显示出对由相互作用的基因座组成的簇特异的结合模式,所述相互作用的基因座包含启动子或增强子。但是,簇9的特征是开放染色质的标记,而不是活性增强子或启动子的标记,它不受大多数​​转录因子的束缚,但高度富集三种转录因子(GATA1,GATA2和c-Jun)和三种染色质修饰剂(BRG1,INI1和SIRT6)。为了研究染色质组织对基因调控的影响,我们在敲除GATA1或GATA2之前和之后进行了核糖核酸seq分析。我们发现,GATA因子的敲除不仅改变了具有附近结合的GATA的基因的表达,而且还影响了相互作用位点中基因的表达。我们的工作与先前的研究结合,将GATA因子与c-Jun和BRG1的调节联系起来,提供了全基因组证据,证明Hi-C数据可识别出生物学相关的相互作用基因座。

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