基于 ChIP-seq 数据对模式植物基因组中多个转录因子结合情况的统计估算。

IF 1.5 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Journal of Integrative Bioinformatics Pub Date : 2021-12-21 DOI:10.1515/jib-2020-0036
Arthur I Dergilev, Nina G Orlova, Oxana B Dobrovolskaya, Yuriy L Orlov
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引用次数: 0

摘要

高通量基因组测序技术和染色质免疫沉淀技术的发展,使得研究蛋白质转录因子(TF)的结合位点成为可能。实验测定的结合位点数据量的增长为基因表达调控分析、转录因子靶基因预测和调控基因网络重建带来了新的问题。尽管植物的基因表达和对环境胁迫的响应具有复杂的分子调控机制,但基因组调控仍然是一个研究不足的领域。开发新的软件工具来分析植物基因组中转录因子结合位点的位置及其聚类、可视化以及后续的统计估算非常重要。本研究介绍了在三种进化距离较远的模式植物中分析多个 TF 结合图谱的应用。早些时候曾讨论过利用类似的生物信息学方法构建和分析哺乳动物胚胎干细胞中不同TF的非随机ChIP-seq结合簇。这些TF结合位点群可指示基因调控区域、增强子和基因转录调控中心。它可用于分析基因启动子,也可作为转录网络重建的背景。我们讨论了对模型植物基因组中 TF 结合位点群的统计估计。在所研究的所有基因组中,每个结合簇的不同 TF 数量的分布都遵循相同的幂律分布。这里详细讨论了拟南芥基因组中的结合簇。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Statistical estimates of multiple transcription factors binding in the model plant genomes based on ChIP-seq data.

The development of high-throughput genomic sequencing coupled with chromatin immunoprecipitation technologies allows studying the binding sites of the protein transcription factors (TF) in the genome scale. The growth of data volume on the experimentally determined binding sites raises qualitatively new problems for the analysis of gene expression regulation, prediction of transcription factors target genes, and regulatory gene networks reconstruction. Genome regulation remains an insufficiently studied though plants have complex molecular regulatory mechanisms of gene expression and response to environmental stresses. It is important to develop new software tools for the analysis of the TF binding sites location and their clustering in the plant genomes, visualization, and the following statistical estimates. This study presents application of the analysis of multiple TF binding profiles in three evolutionarily distant model plant organisms. The construction and analysis of non-random ChIP-seq binding clusters of the different TFs in mammalian embryonic stem cells were discussed earlier using similar bioinformatics approaches. Such clusters of TF binding sites may indicate the gene regulatory regions, enhancers and gene transcription regulatory hubs. It can be used for analysis of the gene promoters as well as a background for transcription networks reconstruction. We discuss the statistical estimates of the TF binding sites clusters in the model plant genomes. The distributions of the number of different TFs per binding cluster follow same power law distribution for all the genomes studied. The binding clusters in Arabidopsis thaliana genome were discussed here in detail.

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来源期刊
Journal of Integrative Bioinformatics
Journal of Integrative Bioinformatics Medicine-Medicine (all)
CiteScore
3.10
自引率
5.30%
发文量
27
审稿时长
12 weeks
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