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Sustainable deployment of QTLs conferring quantitative resistance to crops: first lessons from a stochastic model
Author(s) -
Bourget Romain,
Chaumont Loïc,
Durel CharlesEric,
Sapoukhitalia
Publication year - 2015
Publication title -
new phytologist
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.742
H-Index - 244
eISSN - 1469-8137
pISSN - 0028-646X
DOI - 10.1111/nph.13295
Subject(s) - quantitative trait locus , biology , pathogen , adaptation (eye) , resistance (ecology) , population , quantitative genetics , plant disease resistance , genetics , trait , ecology , microbiology and biotechnology , genetic variation , gene , computer science , demography , neuroscience , sociology , programming language
Summary Quantitative plant disease resistance is believed to be more durable than qualitative resistance, since it exerts less selective pressure on the pathogens. However, the process of progressive pathogen adaptation to quantitative resistance is poorly understood, which makes it difficult to predict its durability or to derive principles for its sustainable deployment. Here, we study the dynamics of pathogen adaptation in response to quantitative plant resistance affecting pathogen reproduction rate and its colonizing capacity. We developed a stochastic model for the continuous evolution of a pathogen population within a quantitatively resistant host. We assumed that pathogen can adapt to a host by the progressive restoration of reproduction rate or of colonizing capacity, or of both. Our model suggests that a combination of quantitative trait loci ( QTL s) affecting distinct pathogen traits was more durable if the evolution of repressed traits was antagonistic. Otherwise, quantitative resistance that depressed only pathogen reproduction was more durable. In order to decelerate the progressive pathogen adaptation, QTL s that decrease the pathogen's maximum capacity to colonize must be combined with QTL s that decrease the spore production per lesion or the infection efficiency or that increase the latent period. Our theoretical framework can help breeders to develop principles for sustainable deployment of QTL s.