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A multi-scale coevolutionary approach to predict interactions between protein domains.

Giancarlo CroceThomas GueudréMaria Virginia Ruiz CuevasVictoria KeidelMatteo FigliuzziHendrik SzurmantMartin Weigt
Published in: PLoS computational biology (2019)
Interacting proteins and protein domains coevolve on multiple scales, from their correlated presence across species, to correlations in amino-acid usage. Genomic databases provide rapidly growing data for variability in genomic protein content and in protein sequences, calling for computational predictions of unknown interactions. We first introduce the concept of direct phyletic couplings, based on global statistical models of phylogenetic profiles. They strongly increase the accuracy of predicting pairs of related protein domains beyond simpler correlation-based approaches like phylogenetic profiling (80% vs. 30-50% positives out of the 1000 highest-scoring pairs). Combined with the direct coupling analysis of inter-protein residue-residue coevolution, we provide multi-scale evidence for direct but unknown interaction between protein families. An in-depth discussion shows these to be biologically sensible and directly experimentally testable. Negative phyletic couplings highlight alternative solutions for the same functionality, including documented cases of convergent evolution. Thereby our work proves the strong potential of global statistical modeling approaches to genome-wide coevolutionary analysis, far beyond the established use for individual protein complexes and domain-domain interactions.
Keyphrases
  • amino acid
  • protein protein
  • binding protein
  • small molecule
  • gene expression
  • copy number
  • dna methylation
  • artificial intelligence
  • protein kinase
  • genetic diversity