Genomic background sequences systematically outperform synthetic ones in de novo motif discovery for ChIP-seq data

Author:

Raditsa Vladimir V1,Tsukanov Anton V1,Bogomolov Anton G2,Levitsky Victor G13ORCID

Affiliation:

1. Department of System Biology, Institute of Cytology and Genetics , Novosibirsk  630090 , Russia

2. Department of Cell Biology, Institute of Cytology and Genetics , Novosibirsk  630090 , Russia

3. Department of Natural Science, Novosibirsk State University , Novosibirsk  630090 , Russia

Abstract

Abstract Efficient de novo motif discovery from the results of wide-genome mapping of transcription factor binding sites (ChIP-seq) is dependent on the choice of background nucleotide sequences. The foreground sequences (ChIP-seq peaks) represent not only specific motifs of target transcription factors, but also the motifs overrepresented throughout the genome, such as simple sequence repeats. We performed a massive comparison of the ‘synthetic’ and ‘genomic’ approaches to generate background sequences for de novo motif discovery. The ‘synthetic’ approach shuffled nucleotides in peaks, while in the ‘genomic’ approach selected sequences from the reference genome randomly or only from gene promoters according to the fraction of A/T nucleotides in each sequence. We compiled the benchmark collections of ChIP-seq datasets for mouse, human and Arabidopsis, and performed de novo motif discovery. We showed that the genomic approach has both more robust detection of the known motifs of target transcription factors and more stringent exclusion of the simple sequence repeats as possible non-specific motifs. The advantage of the genomic approach over the synthetic approach was greater in plants compared to mammals. We developed the AntiNoise web service (https://denovosea.icgbio.ru/antinoise/) that implements a genomic approach to extract genomic background sequences for twelve eukaryotic genomes.

Funder

Russian Science Foundation

Publisher

Oxford University Press (OUP)

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