| Literature DB >> 28544882 |
Christopher Koch1, Jay Konieczka2, Toni Delorey2, Ana Lyons3, Amanda Socha4, Kathleen Davis5, Sara A Knaack6, Dawn Thompson2, Erin K O'Shea7, Aviv Regev8, Sushmita Roy9.
Abstract
Changes in transcriptional regulatory networks can significantly contribute to species evolution and adaptation. However, identification of genome-scale regulatory networks is an open challenge, especially in non-model organisms. Here, we introduce multi-species regulatory network learning (MRTLE), a computational approach that uses phylogenetic structure, sequence-specific motifs, and transcriptomic data, to infer the regulatory networks in different species. Using simulated data from known networks and transcriptomic data from six divergent yeasts, we demonstrate that MRTLE predicts networks with greater accuracy than existing methods because it incorporates phylogenetic information. We used MRTLE to infer the structure of the transcriptional networks that control the osmotic stress responses of divergent, non-model yeast species and then validated our predictions experimentally. Interrogating these networks reveals that gene duplication promotes network divergence across evolution. Taken together, our approach facilitates study of regulatory network evolutionary dynamics across multiple poorly studied species.Entities:
Keywords: comparative functional genomics; evolution of gene regulatory networks; evolution of stress response; network inference; phylogeny; probabilistic graphical model; regulatory networks; yeast
Mesh:
Year: 2017 PMID: 28544882 PMCID: PMC5515301 DOI: 10.1016/j.cels.2017.04.010
Source DB: PubMed Journal: Cell Syst ISSN: 2405-4712 Impact factor: 10.304