Scientific Reports (Oct 2021)

An automated and combinative method for the predictive ranking of candidate effector proteins of fungal plant pathogens

  • Darcy A. B. Jones,
  • Lina Rozano,
  • Johannes W. Debler,
  • Ricardo L. Mancera,
  • Paula M. Moolhuijzen,
  • James K. Hane

DOI
https://doi.org/10.1038/s41598-021-99363-0
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 13

Abstract

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Abstract Fungal plant-pathogens promote infection of their hosts through the release of ‘effectors’—a broad class of cytotoxic or virulence-promoting molecules. Effectors may be recognised by resistance or sensitivity receptors in the host, which can determine disease outcomes. Accurate prediction of effectors remains a major challenge in plant pathology, but if achieved will facilitate rapid improvements to host disease resistance. This study presents a novel tool and pipeline for the ranking of predicted effector candidates—Predector—which interfaces with multiple software tools and methods, aggregates disparate features that are relevant to fungal effector proteins, and applies a pairwise learning to rank approach. Predector outperformed a typical combination of secretion and effector prediction methods in terms of ranking performance when applied to a curated set of confirmed effectors derived from multiple species. We present Predector ( https://github.com/ccdmb/predector ) as a useful tool for the ranking of predicted effector candidates, which also aggregates and reports additional supporting information relevant to effector and secretome prediction in a simple, efficient, and reproducible manner.