Epigenomic annotation-based interpretation of genomic data: from enrichment analysis to machine learning.

Journal: Bioinformatics (Oxford, England)
Published Date:

Abstract

MOTIVATION: One of the goals of functional genomics is to understand the regulatory implications of experimentally obtained genomic regions of interest (ROIs). Most sequencing technologies now generate ROIs distributed across the whole genome. The interpretation of these genome-wide ROIs represents a challenge as the majority of them lie outside of functionally well-defined protein coding regions. Recent efforts by the members of the International Human Epigenome Consortium have generated volumes of functional/regulatory data (reference epigenomic datasets), effectively annotating the genome with epigenomic properties. Consequently, a wide variety of computational tools has been developed utilizing these epigenomic datasets for the interpretation of genomic data.

Authors

  • Mikhail G Dozmorov
    Department of Biostatistics, Virginia Commonwealth University, Richmond, VA 23298, USA.