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Understanding Variation in Transcription Factor Binding by Modeling Transcription Factor Genome-Epigenome Interactions

机译:通过建模转录因子基因组-表观基因组相互作用来了解转录因子结合的变化。

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摘要

Despite explosive growth in genomic datasets, the methods for studying epigenomic mechanisms of gene regulation remain primitive. Here we present a model-based approach to systematically analyze the epigenomic functions in modulating transcription factor-DNA binding. Based on the first principles of statistical mechanics, this model considers the interactions between epigenomic modifications and a cis-regulatory module, which contains multiple binding sites arranged in any configurations. We compiled a comprehensive epigenomic dataset in mouse embryonic stem (mES) cells, including DNA methylation (MeDIP-seq and MRE-seq), DNA hydroxymethylation (5-hmC-seq), and histone modifications (ChIP-seq). We discovered correlations of transcription factors (TFs) for specific combinations of epigenomic modifications, which we term epigenomic motifs. Epigenomic motifs explained why some TFs appeared to have different DNA binding motifs derived from in vivo (ChIP-seq) and in vitro experiments. Theoretical analyses suggested that the epigenome can modulate transcriptional noise and boost the cooperativity of weak TF binding sites. ChIP-seq data suggested that epigenomic boost of binding affinities in weak TF binding sites can function in mES cells. We showed in theory that the epigenome should suppress the TF binding differences on SNP-containing binding sites in two people. Using personal data, we identified strong associations between H3K4me2/H3K9ac and the degree of personal differences in NFκB binding in SNP-containing binding sites, which may explain why some SNPs introduce much smaller personal variations on TF binding than other SNPs. In summary, this model presents a powerful approach to analyze the functions of epigenomic modifications. This model was implemented into an open source program APEG (Affinity Prediction by Epigenome and Genome, ).
机译:尽管基因组数据的爆炸性增长,研究基因调控表观基因组机制的方法仍然很原始。在这里,我们提出了一种基于模型的方法来系统地分析表观基因组功能,以调节转录因子-DNA的结合。基于统计力学的第一原理,该模型考虑了表观基因组修饰与顺式调节模块之间的相互作用,该模块包含以任何配置排列的多个结合位点。我们在小鼠胚胎干(mES)细胞中编译了综合的表观基因组数据集,包括DNA甲基化(MeDIP-seq和MRE-seq),DNA羟甲基化(5-hmC-seq)和组蛋白修饰(ChIP-seq)。我们发现表观基因组修饰的特定组合的转录因子(TFs)的相关性,我们称之为表观基因组基序。表观基因组基序解释了为什么某些TF似乎具有源自体内(ChIP-seq)和体外实验的不同DNA结合基序。理论分析表明,表观基因组可以调节转录噪声并增强弱TF结合位点的协同作用。 ChIP-seq数据表明,弱TF结合位点的结合亲和力的表观基因组学增强可在mES细胞中发挥作用。我们从理论上证明表观基因组应该抑制两个人中含SNP的结合位点的TF结合差异。使用个人数据,我们确定了H3K4me2 / H3K9ac与含有SNP的结合位点中NFκB结合的个人差异程度之间的强关联,这可能解释了为什么某些SNP在TF结合中引入的个人变异比其他SNP小得多。总之,该模型提供了一种强大的方法来分析表观基因组修饰的功能。该模型已实施到开源程序APEG(表观基因组和基因组的亲和力预测)中。

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