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.

Authors
Dergilev Arthur I.1, 2 , Orlova Nina G.3, 4 , Dobrovolskaya Oxana B.2, 5 , Orlov Yuriy L. 1, 2, 5, 6
Publisher
De Gruyter
Number of issue
0
Language
English
Status
Published
Volume
0
Year
2021
Organizations
  • 1 Novosibirsk State University , 630090 Novosibirsk , Russia
  • 2 Institute of Cytology and Genetics, Siberian Branch of the Russian Academy of Sciences , 630090 Novosibirsk , Russia
  • 3 Financial University under the Government of the Russian Federation , 125993 Moscow , Russia
  • 4 Moscow State Technical University of Civil Aviation , 125993 Moscow , Russia
  • 5 Agrarian and Technological Institute, Peoples’ Friendship University of Russia, 117198 Moscow , Russia
  • 6 The Digital Health Institute, I.M.Sechenov First Moscow State Medical University (Sechenov University) , 119991 Moscow , Russia
Keywords
ChIP-seq; gene expression; plant genomes; regulatory gene networks; transcription factor binding sites; transcription regulation
Date of creation
18.03.2022
Date of change
18.03.2022
Short link
https://repository.rudn.ru/en/records/article/record/82743/
Share

Other records

Русина Надежда Владимировна
2015. 17 p.