Shape matters: differential peak detection for Chip-seq data sets

Authors

  • Gabriele Schweikert University of Edinburgh, Edinburgh
  • Guido Sanguinetti University of Edinburgh, Edinburgh

DOI:

https://doi.org/10.14806/ej.19.A.643

Keywords:

Chip-Seq, differential peak detection, Kernel methods, machine learning, histone modifications, H3K4me3

Abstract

Statistical analysis of ChIP-Seq data remains challenging, due to the highly structured nature of the data and the paucity of replicates. Current approaches to detect differentially bound or modified regions are mainly borrowedfrom RNA-Seq data analysis, thus focusing on total counts of reads mapped to a region, ignoring any information encoded in the peak shape. We suggest that higher order features play an important role in detecting differentialhistone modifications and present MMDiff, a Kernel-based testing methodology. Our analysis shows that the method detects functional changes in histone modifications, which are complementary to changes detected bycount-based methods.

Author Biographies

  • Gabriele Schweikert, University of Edinburgh, Edinburgh

    School of Informatics,

    Wellcome Trust Centre for Cell Biology

    Marie Curie Research Fellow

     

  • Guido Sanguinetti, University of Edinburgh, Edinburgh

    School of Informatics

    Lecturer

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Published

2013-04-08

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