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RESEARCH PRODUCT

7C: Computational Chromosome Conformation Capture by Correlation of ChIP-seq at CTCF motifs.

Jonas Ibn-salemMiguel A. Andrade-navarro

subject

CCCTC-Binding Factorlcsh:QH426-470Protein Conformationlcsh:Biotechnologygenetic processesComputational biologyBiologyGenomeChromosomesBioconductorChromosome conformation capture03 medical and health sciences0302 clinical medicine6CHi-Clcsh:TP248.13-248.65GeneticsTranscription factorsHumansnatural sciencesNucleotide Motifs4CChIA-PET030304 developmental biologyChromatin loops0303 health sciencesThree-dimensional genome architectureChromatinChromatinChIP-seq7Clcsh:Genetics5CCTCFChromatin Immunoprecipitation SequencingHuman genomeDNA microarrayChIA-PET3CPrediction030217 neurology & neurosurgeryChromatin interactionsBiotechnologyHeLa CellsResearch Article

description

Abstract Background Knowledge of the three-dimensional structure of the genome is necessary to understand how gene expression is regulated. Recent experimental techniques such as Hi-C or ChIA-PET measure long-range chromatin interactions genome-wide but are experimentally elaborate, have limited resolution and such data is only available for a limited number of cell types and tissues. Results While ChIP-seq was not designed to detect chromatin interactions, the formaldehyde treatment in the ChIP-seq protocol cross-links proteins with each other and with DNA. Consequently, also regions that are not directly bound by the targeted TF but interact with the binding site via chromatin looping are co-immunoprecipitated and sequenced. This produces minor ChIP-seq signals at loop anchor regions close to the directly bound site. We use the position and shape of ChIP-seq signals around CTCF motif pairs to predict whether they interact or not. We implemented this approach in a prediction method, termed Computational Chromosome Conformation Capture by Correlation of ChIP-seq at CTCF motifs (7C). We applied 7C to all CTCF motif pairs within 1 Mb in the human genome and validated predicted interactions with high-resolution Hi-C and ChIA-PET. A single ChIP-seq experiment from known architectural proteins (CTCF, Rad21, Znf143) but also from other TFs (like TRIM22 or RUNX3) predicts loops accurately. Importantly, 7C predicts loops in cell types and for TF ChIP-seq datasets not used in training. Conclusion 7C predicts chromatin loops which can help to associate TF binding sites to regulated genes. Furthermore, profiling of hundreds of ChIP-seq datasets results in novel candidate factors functionally involved in chromatin looping. Our method is available as an R/Bioconductor package: http://bioconductor.org/packages/sevenC.

10.1186/s12864-019-6088-0https://pubmed.ncbi.nlm.nih.gov/31653198