Literature DB >> 31584093

Unique and assay specific features of NOMe-, ATAC- and DNase I-seq data.

Karl J V Nordström1, Florian Schmidt2,3, Nina Gasparoni1, Abdulrahman Salhab1, Gilles Gasparoni1, Kathrin Kattler1, Fabian Müller2, Peter Ebert2, Ivan G Costa4, Nico Pfeifer2, Thomas Lengauer2, Marcel H Schulz2,3, Jörn Walter1.   

Abstract

Chromatin accessibility maps are important for the functional interpretation of the genome. Here, we systematically analysed assay specific differences between DNase I-seq, ATAC-seq and NOMe-seq in a side by side experimental and bioinformatic setup. We observe that most prominent nucleosome depleted regions (NDRs, e.g. in promoters) are roboustly called by all three or at least two assays. However, we also find a high proportion of assay specific NDRs that are often 'called' by only one of the assays. We show evidence that these assay specific NDRs are indeed genuine open chromatin sites and contribute important information for accurate gene expression prediction. While technically ATAC-seq and DNase I-seq provide a superb high NDR calling rate for relatively low sequencing costs in comparison to NOMe-seq, NOMe-seq singles out for its genome-wide coverage allowing to not only detect NDRs but also endogenous DNA methylation and as we show here genome wide segmentation into heterochromatic B domains and local phasing of nucleosomes outside of NDRs. In summary, our comparisons strongly suggest to consider assay specific differences for the experimental design and for generalized and comparative functional interpretations.
© The Author(s) 2019. Published by Oxford University Press on behalf of Nucleic Acids Research.

Entities:  

Year:  2019        PMID: 31584093      PMCID: PMC6847574          DOI: 10.1093/nar/gkz799

Source DB:  PubMed          Journal:  Nucleic Acids Res        ISSN: 0305-1048            Impact factor:   16.971


  68 in total

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