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      Inferring the potentially complex genetic architectures of adaptation, sexual dimorphism and genotype by environment interactions by partitioning of mean phenotypes.

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          Abstract

          Genetic architecture fundamentally affects the way that traits evolve. However, the mapping of genotype to phenotype includes complex interactions with the environment or even the sex of an organism that can modulate the expressed phenotype. Line-cross analysis is a powerful quantitative genetics method to infer genetic architecture by analysing the mean phenotype value of two diverged strains and a series of subsequent crosses and backcrosses. However, it has been difficult to account for complex interactions with the environment or sex within this framework. We have developed extensions to line-cross analysis that allow for gene by environment and gene by sex interactions. Using extensive simulation studies and reanalysis of empirical data, we show that our approach can account for both unintended environmental variation when crosses cannot be reared in a common garden and can be used to test for the presence of gene by environment or gene by sex interactions. In analyses that fail to account for environmental variation between crosses, we find that line-cross analysis has low power and high false-positive rates. However, we illustrate that accounting for environmental variation allows for the inference of adaptive divergence, and that accounting for sex differences in phenotypes allows practitioners to infer the genetic architecture of sexual dimorphism.

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          Author and article information

          Journal
          Journal of evolutionary biology
          Wiley
          1420-9101
          1010-061X
          April 2019
          : 32
          : 4
          Affiliations
          [1 ] Department of Mathematics, Texas A&M University, College Station, Texas.
          [2 ] Department of Biology, Texas A&M University, College Station, Texas.
          Article
          10.1111/jeb.13421
          30698300
          aa2abe5e-85bb-43fe-aa20-ab23f47eb9d5
          History

          G × E,environmental effect,sexual dimorphism,epistasis,line-cross analysis

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