Variation in the Venom of Parasitic Wasps, Drift, or Selection? Insights From a Multivariate QST Analysis

Differentiation of traits among populations can evolve by drift when gene flow is low relative to drift or selection when there are different local optima in each population (heterogeneous selection), whereas homogeneous selection tends to prevent evolution of such a differentiation. Analyses of geo...

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Main Authors: Hugo Mathé-Hubert, Laurent Kremmer, Dominique Colinet, Jean-Luc Gatti, Joan Van Baaren, Émilie Delava, Marylène Poirié
Format: Article
Language:English
Published: Frontiers Media S.A. 2019-05-01
Series:Frontiers in Ecology and Evolution
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fevo.2019.00156/full
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spelling doaj-1e60da954f4f4decaedcaa5f8134f6b12020-11-25T00:10:23ZengFrontiers Media S.A.Frontiers in Ecology and Evolution2296-701X2019-05-01710.3389/fevo.2019.00156457751Variation in the Venom of Parasitic Wasps, Drift, or Selection? Insights From a Multivariate QST AnalysisHugo Mathé-Hubert0Laurent Kremmer1Dominique Colinet2Jean-Luc Gatti3Joan Van Baaren4Émilie Delava5Marylène Poirié6Université Côte d'Azur, INRA, CNRS, ISA, Sophia Antipolis, FranceUniversité Côte d'Azur, INRA, CNRS, ISA, Sophia Antipolis, FranceUniversité Côte d'Azur, INRA, CNRS, ISA, Sophia Antipolis, FranceUniversité Côte d'Azur, INRA, CNRS, ISA, Sophia Antipolis, FranceUniversité de Rennes 1, UMR-CNRS ECOBIO 6553, Campus de Beaulieu, Rennes, FranceUniversité Lyon 1, Laboratoire de Biométrie et Biologie Évolutive, UMR CNRS 5558, Villeurbanne, FranceUniversité Côte d'Azur, INRA, CNRS, ISA, Sophia Antipolis, FranceDifferentiation of traits among populations can evolve by drift when gene flow is low relative to drift or selection when there are different local optima in each population (heterogeneous selection), whereas homogeneous selection tends to prevent evolution of such a differentiation. Analyses of geographical variations in venom composition have been done in several taxa such as wasps, spiders, scorpions, cone snails and snakes, but surprisingly never in parasitoid wasps, although their venom should constrain their ability to succeed on locally available hosts. Such a study is now facilitated by the development of an accurate method (quantitative digital analysis) that allows analyzing the quantitative variation of large sets of proteins from several individuals. This method was used here to analyse the venom-based differentiation of four samples of Leptopilina boulardi and five samples of L. heterotoma from populations along a 300 km long south-north gradient in the Rhône-Saône valley (South-East of France). A major result is that the composition of the venom allows to differentiate the populations studied even when separated by few kilometers. We further analyzed these differentiations on the populations (reared under similar conditions to exclude environmental variance) with a QST analysis which compared the variance of a quantitative trait (Q) among the subpopulations (S) to the total variance (T). We also used random forest clustering analyses to detect the venom components the most likely to be adapted locally. The signature of the natural selection was strong for L. heterotoma and L. boulardi. For the latter, the comparison with the differentiation observed at some neutral markers revealed that differentiation was partly due to some local adaptation. The combination of methods used here appears to be a powerful framework for population proteomics and for the study of eco-evolutionary feedbacks between proteomic level and population and ecosystem levels. This is of interest not only for studying field evolution at an intermediate level between the genome and phenotypes, or for understanding the role of evolution in chemical ecology, but also for more applied issues in biological control.https://www.frontiersin.org/article/10.3389/fevo.2019.00156/fulladaptive divergencelocal adaptationmultivariate QSTantagonistic coevolutionindividual 1D SDS-PAGEpopulation proteomics
collection DOAJ
language English
format Article
sources DOAJ
author Hugo Mathé-Hubert
Laurent Kremmer
Dominique Colinet
Jean-Luc Gatti
Joan Van Baaren
Émilie Delava
Marylène Poirié
spellingShingle Hugo Mathé-Hubert
Laurent Kremmer
Dominique Colinet
Jean-Luc Gatti
Joan Van Baaren
Émilie Delava
Marylène Poirié
Variation in the Venom of Parasitic Wasps, Drift, or Selection? Insights From a Multivariate QST Analysis
Frontiers in Ecology and Evolution
adaptive divergence
local adaptation
multivariate QST
antagonistic coevolution
individual 1D SDS-PAGE
population proteomics
author_facet Hugo Mathé-Hubert
Laurent Kremmer
Dominique Colinet
Jean-Luc Gatti
Joan Van Baaren
Émilie Delava
Marylène Poirié
author_sort Hugo Mathé-Hubert
title Variation in the Venom of Parasitic Wasps, Drift, or Selection? Insights From a Multivariate QST Analysis
title_short Variation in the Venom of Parasitic Wasps, Drift, or Selection? Insights From a Multivariate QST Analysis
title_full Variation in the Venom of Parasitic Wasps, Drift, or Selection? Insights From a Multivariate QST Analysis
title_fullStr Variation in the Venom of Parasitic Wasps, Drift, or Selection? Insights From a Multivariate QST Analysis
title_full_unstemmed Variation in the Venom of Parasitic Wasps, Drift, or Selection? Insights From a Multivariate QST Analysis
title_sort variation in the venom of parasitic wasps, drift, or selection? insights from a multivariate qst analysis
publisher Frontiers Media S.A.
series Frontiers in Ecology and Evolution
issn 2296-701X
publishDate 2019-05-01
description Differentiation of traits among populations can evolve by drift when gene flow is low relative to drift or selection when there are different local optima in each population (heterogeneous selection), whereas homogeneous selection tends to prevent evolution of such a differentiation. Analyses of geographical variations in venom composition have been done in several taxa such as wasps, spiders, scorpions, cone snails and snakes, but surprisingly never in parasitoid wasps, although their venom should constrain their ability to succeed on locally available hosts. Such a study is now facilitated by the development of an accurate method (quantitative digital analysis) that allows analyzing the quantitative variation of large sets of proteins from several individuals. This method was used here to analyse the venom-based differentiation of four samples of Leptopilina boulardi and five samples of L. heterotoma from populations along a 300 km long south-north gradient in the Rhône-Saône valley (South-East of France). A major result is that the composition of the venom allows to differentiate the populations studied even when separated by few kilometers. We further analyzed these differentiations on the populations (reared under similar conditions to exclude environmental variance) with a QST analysis which compared the variance of a quantitative trait (Q) among the subpopulations (S) to the total variance (T). We also used random forest clustering analyses to detect the venom components the most likely to be adapted locally. The signature of the natural selection was strong for L. heterotoma and L. boulardi. For the latter, the comparison with the differentiation observed at some neutral markers revealed that differentiation was partly due to some local adaptation. The combination of methods used here appears to be a powerful framework for population proteomics and for the study of eco-evolutionary feedbacks between proteomic level and population and ecosystem levels. This is of interest not only for studying field evolution at an intermediate level between the genome and phenotypes, or for understanding the role of evolution in chemical ecology, but also for more applied issues in biological control.
topic adaptive divergence
local adaptation
multivariate QST
antagonistic coevolution
individual 1D SDS-PAGE
population proteomics
url https://www.frontiersin.org/article/10.3389/fevo.2019.00156/full
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