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Base-resolution methylation patterns accurately predict transcription factor bindings in vivo

机译:基本分辨率的甲基化模式可准确预测体内转录因子的结合

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摘要

Detecting in vivo transcription factor (TF) binding is important for understanding gene regulatory circuitries. ChIP-seq is a powerful technique to empirically define TF binding in vivo. However, the multitude of distinct TFs makes genome-wide profiling for them all labor-intensive and costly. Algorithms for in silico prediction of TF binding have been developed, based mostly on histone modification or DNase I hypersensitivity data in conjunction with DNA motif and other genomic features. However, technical limitations of these methods prevent them from being applied broadly, especially in clinical settings. We conducted a comprehensive survey involving multiple cell lines, TFs, and methylation types and found that there are intimate relationships between TF binding and methylation level changes around the binding sites. Exploiting the connection between DNA methylation and TF binding, we proposed a novel supervised learning approach to predict TF-DNA interaction using data from base-resolution whole-genome methylation sequencing experiments. We devised beta-binomialmodels to characterize methylation data around TF binding sites and the background. Along with other static genomic features, we adopted a random forest framework to predict TF-DNA interaction. After conducting comprehensive tests, we saw that the proposed method accurately predicts TF binding and performs favorably versus competing methods.
机译:检测体内转录因子(TF)的结合对于理解基因调控电路很重要。 ChIP-seq是在体内凭经验定义TF结合的强大技术。但是,众多不同的TF使得它们的全基因组分布图分析都非常费力且昂贵。已经开发了用于计算机模拟TF结合的算法,主要基于组蛋白修饰或DNase I超敏性数据以及DNA基序和其他基因组特征。但是,这些方法的技术局限性使其无法广泛应用,尤其是在临床环境中。我们进行了一项涉及多个细胞系,TF和甲基化类型的综合调查,发现TF结合与结合位点周围的甲基化水平变化之间存在密切的关系。利用DNA甲基化和TF结合之间的联系,我们提出了一种新的监督学习方法,可使用来自基本分辨率全基因组甲基化测序实验的数据预测TF-DNA相互作用。我们设计了β-二项式模型来表征TF结合位点和背景周围的甲基化数据。与其他静态基因组特征一起,我们采用了随机森林框架来预测TF-DNA相互作用。经过全面的测试后,我们发现所提出的方法可以准确地预测TF的结合力,并且与竞争方法相比,表现出色。

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