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Measuring significant changes in chromatin conformation with ACCOST

Authors :
Karine G. Le Roch
Jean-Philippe Vert
William Stafford Noble
Borislav H Hristov
Kate B. Cook
Department of Genome Sciences [Seattle] (GS)
University of Washington [Seattle]
Department of Cell Biology and Neuroscience [Riverside] (CBNS)
University of California [Riverside] (UCR)
University of California-University of California
Google Brain, Paris
Centre de Bioinformatique (CBIO)
MINES ParisTech - École nationale supérieure des mines de Paris
Université Paris sciences et lettres (PSL)-Université Paris sciences et lettres (PSL)
Paul G. Allen School of Computer Science & Engineering, University of Washington, Seattle
Source :
Nucleic Acids Research, Nucleic Acids Research, Oxford University Press, 2020, 48 (5), pp.2303-2311. ⟨10.1093/nar/gkaa069⟩, Nucleic acids research, vol 48, iss 5
Publication Year :
2020
Publisher :
HAL CCSD, 2020.

Abstract

Chromatin conformation assays such as Hi-C cannot directly measure differences in 3D architecture between cell types or cell states. For this purpose, two or more Hi-C experiments must be carried out, but direct comparison of the resulting Hi-C matrices is confounded by several features of Hi-C data. Most notably, the genomic distance effect, whereby contacts between pairs of genomic loci that are proximal along the chromosome exhibit many more Hi-C contacts that distal pairs of loci, dominates every Hi-C matrix. Furthermore, the form that this distance effect takes often varies between different Hi-C experiments, even between replicate experiments. Thus, a statistical confidence measure designed to identify differential Hi-C contacts must accurately account for the genomic distance effect or risk being misled by large-scale but artifactual differences. ACCOST (Altered Chromatin Conformation STatistics) accomplishes this goal by extending the statistical model employed by DEseq, re-purposing the “size factors,” which were originally developed to account for differences in read depth between samples, to instead model the genomic distance effect. We show via analysis of simulated and real data that ACCOST provides unbiased statistical confidence estimates that compare favorably with competing methods such as diffHiC, FIND, and HiCcompare. ACCOST is freely available with an Apache license at https://bitbucket.org/noblelab/accost.

Details

Language :
English
ISSN :
03051048 and 13624962
Database :
OpenAIRE
Journal :
Nucleic Acids Research, Nucleic Acids Research, Oxford University Press, 2020, 48 (5), pp.2303-2311. ⟨10.1093/nar/gkaa069⟩, Nucleic acids research, vol 48, iss 5
Accession number :
edsair.doi.dedup.....ea5050f7da57f5c01334ab82c4fdc503
Full Text :
https://doi.org/10.1093/nar/gkaa069⟩