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A Bayesian inference method for the analysis of transcriptional regulatory networks in metagenomic data.

Elizabeth T HobbsTalmo PereiraPatrick K O'NeillIvan Erill
Published in: Algorithms for molecular biology : AMB (2016)
We introduce and validate a method for the analysis of transcriptional regulatory networks from metagenomic data that enables inference of meta-regulons in a systematic and interpretable way. Validation of this method on the CsoR meta-regulon of gut microbiome Firmicutes illustrates the usefulness of the approach, revealing novel properties of the copper-homeostasis network in poorly characterized bacterial species and putting forward evidence of new mechanisms of DNA binding for this transcriptional regulator. Our approach will enable the comparative analysis of regulatory networks across metagenomes, yielding novel insights into the evolution of transcriptional regulatory networks.
Keyphrases
  • transcription factor
  • dna binding
  • gene expression
  • single cell
  • big data
  • antibiotic resistance genes
  • machine learning
  • oxidative stress
  • artificial intelligence
  • data analysis
  • genetic diversity
  • heat stress