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首页> 外文期刊>Journal of Theoretical Biology >Recognition of the long range enhancer-promoter interactions by further adding DNA structure properties and transcription factor binding motifs in human cell lines
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Recognition of the long range enhancer-promoter interactions by further adding DNA structure properties and transcription factor binding motifs in human cell lines

机译:通过在人细胞系中进一步添加DNA结构性能和转录因子结合基序来识别远程增强剂 - 启动子相互作用

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摘要

The enhancer-promoter interactions (EPIs) with strong tissue-specificity play an important role in cis-regulatory mechanism of human cell lines. However, it still remains a challenging work to predict these interactions so far. Due to that these interactions are regulated by the cooperativeness of diverse functional genomic signatures, DNA spatial structure and DNA sequence elements. In this paper, by adding DNA structure properties and transcription factor binding motifs, we presented an improved computational method to predict EPIs in human cell lines. In comparison with the results of other group on the same datasets, our best accuracies by cross-validation test were about 15%-24% higher in the same cell lines, and the accuracies by independent test were about 11%-15% higher in new cell lines. Meanwhile, we found that transcription factor binding motifs and DNA structure properties have important information that would largely determine long range EPIs prediction. From the distribution comparisons, we also found their distinct differences between interacting and non-interacting sets in each cell line. Then, the correlation analysis and network models for relationships among top-ranked functional genomic signatures indicated that diverse genomic signatures would cooperatively establish a complex regulatory network to facilitate long range EPIs. The experimental results provided additional insights about the roles of DNA intrinsic properties and functional genomic signatures in EPIs prediction. (C) 2018 Elsevier Ltd. All rights reserved.
机译:具有强大组织特异性的增强剂 - 启动子相互作用(EPI)在人类细胞系的CIS-COMMISOCATION机制中起重要作用。然而,到目前为止预测这些互动仍然是一个具有挑战性的工作。由于这些相互作用受到不同功能基因组特征,DNA空间结构和DNA序列元素的协作。本文通过添加DNA结构性能和转录因子结合基序,我们介绍了一种改进的计算方法来预测人体细胞系中的Epis。与相同数据集的其他组的结果相比,同交叉验证测试的最佳精度在相同的细胞系中较高约15%-24%,独立测试的准确性高约11%-15%新的细胞系。同时,我们发现转录因子结合基序和DNA结构特性具有重要信息,这些信息在很大程度上决定了远程EPIS预测。从分布比较,我们还发现了它们在每个细胞系中的相互作用和非交互集之间的不同差异。然后,排名官能基因组特征中关系的相关性分析和网络模型表明,不同的基因组特征将合作地建立复杂的监管网络,以促进远程EPIS。实验结果提供了关于DNA内在特性和功能基因组特征在EPIS预测中的作用的额外见解。 (c)2018年elestvier有限公司保留所有权利。

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