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Integrative analysis of genomic, functional and protein interaction data predicts long-range enhancer-target gene interactions

机译:基因组,功能和蛋白质相互作用数据的综合分析可预测远程增强子-靶基因相互作用

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Multicellular organismal development is controlled by a complex network of transcription factors, promoters and enhancers. Although reliable computational and experimental methods exist for enhancer detection, prediction of their target genes remains a major challenge. On the basis of available literature and ChIP-seq and ChIP-chip data for enhanceosome factor p300 and the transcriptional regulator Gli3, we found that genomic proximity and conserved synteny predict target genes with a relatively low recall of 12-27% within 2 Mb intervals centered at the enhancers. Here, we show that functional similarities between enhancer binding proteins and their transcriptional targets and proximity in the protein-protein interactome improve prediction of target genes. We used all four features to train random forest classifiers that predict target genes with a recall of 58% in 2 Mb intervals that may contain dozens of genes, representing a better than two-fold improvement over the performance of prediction based on single features alone. Genome-wide ChIP data is still relatively poorly understood, and it remains difficult to assign biological significance to binding events. Our study represents a first step in integrating various genomic features in order to elucidate the genomic network of long-range regulatory interactions.
机译:多细胞生物体的发育受转录因子,启动子和增强子的复杂网络控制。尽管存在用于增强子检测的可靠的计算和实验方法,但是对其靶基因的预测仍然是主要挑战。根据现有文献以及增强体因子p300和转录调节子Gli3的ChIP-seq和ChIP芯片数据,我们发现基因组邻近性和保守同义可预测目标基因,在2 Mb间隔内召回率相对较低,为12-27%集中在增强子上。在这里,我们显示增强子结合蛋白和它们的转录靶之间的功能相似性以及在蛋白质-蛋白质相互作用组中的邻近性改善了靶基因的预测。我们使用所有四个功能来训练随机森林分类器,这些随机森林分类器以2 Mb的间隔(可能包含数十个基因)预测58%的召回目标基因,比仅基于单个特征的预测性能高出两倍以上。全基因组的ChIP数据仍然了解相对较少,并且仍然难以确定结合事件的生物学意义。我们的研究代表了整合各种基因组特征的第一步,以便阐明长期调控相互作用的基因组网络。

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