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High Resolution Genome Wide Binding Event Finding and Motif Discovery Reveals Transcription Factor Spatial Binding Constraints

机译:高分辨率基因组宽结合事件发现和母题发现揭示了转录因子空间结合约束。

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An essential component of genome function is the syntax of genomic regulatory elements that determine how diverse transcription factors interact to orchestrate a program of regulatory control. A precise characterization of in vivo spacing constraints between key transcription factors would reveal key aspects of this genomic regulatory language. To discover novel transcription factor spatial binding constraints in vivo, we developed a new integrative computational method, genome wide event finding and motif discovery (GEM). GEM resolves ChIP data into explanatory motifs and binding events at high spatial resolution by linking binding event discovery and motif discovery with positional priors in the context of a generative probabilistic model of ChIP data and genome sequence. GEM analysis of 63 transcription factors in 214 ENCODE human ChIP-Seq experiments recovers more known factor motifs than other contemporary methods, and discovers six new motifs for factors with unknown binding specificity. GEM's adaptive learning of binding-event read distributions allows it to further improve upon previous methods for processing ChIP-Seq and ChIP-exo data to yield unsurpassed spatial resolution and discovery of closely spaced binding events of the same factor. In a systematic analysis of in vivo sequence-specific transcription factor binding using GEM, we have found hundreds of spatial binding constraints between factors. GEM found 37 examples of factor binding constraints in mouse ES cells, including strong distance-specific constraints between Klf4 and other key regulatory factors. In human ENCODE data, GEM found 390 examples of spatially constrained pair-wise binding, including such novel pairs as c-Fos:c-Jun/USF1, CTCF/Egr1, and HNF4A/FOXA1. The discovery of new factor-factor spatial constraints in ChIP data is significant because it proposes testable models for regulatory factor interactions that will help elucidate genome function and the implementation of combinatorial control.
机译:基因组功能的基本组成部分是基因组调控元件的语法,它决定了各种转录因子如何相互作用以协调调控程序。关键转录因子之间的体内间隔限制的精确表征将揭示这种基因组调控语言的关键方面。为了发现体内新颖的转录因子空间结合约束,我们开发了一种新的综合计算方法,全基因组事件发现和基序发现(GEM)。在ChIP数据和基因组序列的生成概率模型的背景下,GEM通过将结合事件发现和基序发现与位置先验联系起来,以高空间分辨率将ChIP数据解析为解释性基序和结合事件。对214个ENCODE人ChIP-Seq实验中的63个转录因子的GEM分析比其他当代方法能回收更多已知的因子基序,并为结合特异性未知的因子发现了六个新的基序。 GEM对绑定事件读取分布的自适应学习使它可以进一步改进以前处理ChIP-Seq和ChIP-exo数据的方法,以产生无与伦比的空间分辨率,并发现相同因子的紧密间隔的绑定事件。在使用GEM对体内序列特异性转录因子结合进行系统分析的过程中,我们发现了数百个因子之间的空间结合约束。 GEM在小鼠ES细胞中发现了37个因子结合约束的实例,包括Klf4与其他关键调控因子之间的距离特异性强约束。在人类ENCODE数据中,GEM发现了390个受空间限制的成对绑定的示例,包括c-Fos:c-Jun / USF1,CTCF / Egr1和HNF4A / FOXA1等新颖的对。在ChIP数据中发现新的因子-因子空间约束非常重要,因为它为调节因子相互作用提出了可测试的模型,这将有助于阐明基因组功能和组合控制的实现。

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