BMC Genomics (Nov 2018)

Automatic detection of genomic regions with informative epigenetic patterns

  • Florencio Pazos,
  • Adrian Garcia-Moreno,
  • Juan C. Oliveros

DOI
https://doi.org/10.1186/s12864-018-5286-5
Journal volume & issue
Vol. 19, no. 1
pp. 1 – 12

Abstract

Read online

Abstract Background Epigenetic phenomena are crucial for explaining the phenotypic plasticity seen in the cells of different tissues, developmental stages and diseases, all holding the same DNA sequence. As technology is allowing to retrieve epigenetic information in a genome-wide fashion, massive epigenomic datasets are being accumulated in public repositories. New approaches are required to mine those data to extract useful knowledge. We present here an automatic approach for detecting genomic regions with epigenetic variation patterns across samples related to a grouping of these samples, as a way of detecting regions functionally associated to the phenomenon behind the classification. Results We show that the regions automatically detected by the method in the whole human genome associated to three different classifications of a set of epigenomes (cancer vs. healthy, brain vs. other organs, and fetal vs. adult tissues) are enriched in genes associated to these processes. Conclusions The method is fully automatic and can exhaustively scan the whole human genome at any resolution using large collections of epigenomes as input, although it also produces good results with small datasets. Consequently, it will be valuable for obtaining functional information from the incoming epigenomic information as it continues to accumulate.

Keywords