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Plasticity and G E in Evolutionary Genetics Gerdien de Jong Utrecht University
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Overview talk phenotypic plasticity selection gradient predictable selection unpredictable selection life history complications – density – zygote migration
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Phenotypic Plasticity
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27.5 C 17.5 C a systematic change in morphology of an organism due to a developmental response to environmental conditions phenotypic plasticity Drosophila melanogaster
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temperature Drosophila wing length reaction norm: genotype represents a function: genotypic value is function value in given environment function value: character state phenotypic plasticity
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temperature Drosophila wing length Genotype-by- Environment Interaction G E reaction norms different slope or shape phenotypic plasticity
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Genotype-by- Environment Interaction G E genetically large low temperature genetically small high temperature 47°N 17.5°C 9°N 27.5°C Drosophila melanogaster
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phenotypic plasticity Genotype-by- Environment Interaction Drosophila melanogaster two populations: tropical temperate two temperatures 17.5°C 27.5°C IN: body size adults gene expression pupation probability larval glycogen level development time larval competitive ability female fecundity
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Selection Gradient
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multivariate selection phenotypic trait i z i =g i + e i vector of changes in phenotypic means z phenotypic variance covariance matrix P
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One trait Selection differential equals the covariance between phenotype z i and fitness w : Selection gradient equals the slope of fitness on phenotype selection gradient w S i = cov(z i,w) z,i = cov(z i,w)/var(z i )
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One trait Selection gradient equals the slope of fitness on phenotype Selection gradient equals the derivative of fitness towards phenotype selection gradient z,i = cov(z i,w)/var(z i ) w/ z i = z,i
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slope z,i multivariate selection phenotypic selection gradient each trait multivariate phenotypic selection w/ z i = z,i z = P z w/ z i = z,i
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multivariate selection genotypic value trait i g i vector of changes in genotypic means g genotypic variance covariance matrix G
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slope g,i multivariate selection genotypic selection gradient each trait multivariate genotypic selection w/ g i = g,i g = G g w/ g i = g,i
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Evolutionary Biology: z = g g=G z phenotypic plasticity: multivariate traits character states reaction norm coefficients multivariate selection
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Predictable Selection
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life history zygote pool z 1 mating pool selection in x zygote pool z 0 predictable selection z1z1 z0z0 m x=0x=1
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character state in environment x : character state g x selection gradient f x w x / g x fitnessoptimising 1- s( x -g x ) 2 optimum in x x selection gradient 2f x s( x -g x )
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character state in environment x : all selection gradients 2f x s( x -g x )=0 selection finds optimum character state in each x g x = x
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Unpredictable Selection
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life history zygote pool z 1 mating pool selection in: y adult migration development: x zygote pool z 0 unpredictable selection z1z1 z0z0 m x=0x=1 y=0y=1
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migration frequency from x to y: f(y|x) unpredictable selection z1z1 z0z0 m x=0 y=0 y=1 y =0 y =1 0.7 0.3
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selection gradient for phenotype that should develop in environment x : weighted average! (weak selection) unpredictable selection y f( y | x ) w x,y / g x
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evolved phenotypic mean: character state (weak selection) unpredictable selection evolved mean phenotype g 0 =0.3 g x = y f( y | x ) y
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evolved phenotypic mean: character state (weak selection) unpredictable selection compromise phenotype evolves g x = y f( y | x ) y
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evolved phenotypic mean: reaction normcoefficients heightat x=0 slope (weak selection) unpredictable selection g 0 = 0 g 1 = 1 cov(x,y)/var(x) compromise phenotype evolves
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evolved reaction norm slope shallower than optimal slope if reacton norm linear andfew environments orasymmetrical migration unpredictable selection g 1 = 1 cov(x,y)/var(x) compromise phenotype evolves
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environment value optimum reaction norm slope: 1 evolved reaction norm: slope: 1 cov(x,y)/var(x) unpredictable selection
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Life History Complications
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Life History Complications density dependence
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zygote pool z 1 mating pool density dependence c selection in: y density dependence b adult migration density dependence a development: x zygote pool z 0 density dependent numbers z1z1 z0z0 m x=0x=1 y=0y=1
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frequency environments now includes density dependent viability v y in environments y f’ x,y = f x,y v y Effective frequency of selection environments can become complicated density dependent numbers
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equal density depence leads to evolved mean genotypic values reflecting the frequencies of the environment, y 0 =0.3 and y 1 =0.7 density dependent numbers
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density dependence in y 1 gets so high that nobody survives in environment y 1 ; effectively only environment y 0 exists
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Life History Complications zygote migration
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zygote migration mating pool density dependence c selection in: y density dependence b adult migration density dependence a development: x zygote migration no zygote pool x=0x=1 y=0y=1 x=0x=1
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if both zygotes and adults migrate, selection equations only approximate requires matrix methods introduces “reproductive value” in evolved genotypic value no zygote pool x=0x=1 y=0y=1 x=0x=1
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if zygotes migrate but adults not, and selection is predictable zygote migration gives no problem no zygote pool x=0x=1 y=0y=1 x=0x=1
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Selection on phenotypic plasticity is efficient if: selection predictable no adult migration and therefore no life history complication conclusions
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