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IS INBREEDING DEPRESSION LOWER IN MALADAPTED POPULATIONS? A QUANTITATIVE GENETICS MODEL

机译:适应不良的人口的抑郁症正在降低吗?定量遗传模型

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Despite abundant empirical evidence that inbreeding depression varies with both the environment and the genotypic context, theoretical predictions about such effects are still rare. Using a quantitative genetics model, we predict amounts of inbreeding depression for fitness emerging from Gaussian stabilizing selection on some phenotypic trait, on which, for simplicity, genetic effects are strictly additive. Given the strength of stabilizing selection, inbreeding depression then varies simply with the genetic variance for the trait under selection and the distance between the mean breeding value and the optimal phenotype. This allows us to relate the expected inbreeding depression to the degree of maladaptation of the population to its environment. We confront analytical predictions with simulations, in well-adapted populations at equilibrium, as well as in maladapted populations undergoing either a transient environmental shift, or gene swamping in heterogeneous habitats. We predict minimal inbreeding depression in situations of extreme maladaptation. Our model provides a new basis for interpreting experiments that measure inbreeding depression for the same set of genotypes in different environments, by demonstrating that the history of adaptation,in addition to environmental harshness per se, may account for differences in inbreeding depression.
机译:尽管有大量的经验证据表明近亲衰退会随着环境和基因型背景的变化而变化,但是关于这种效应的理论预测仍然很少。使用定量遗传学模型,我们预测了高斯稳定选择对某些表型性状的适应性近亲衰退的数量,为简单起见,遗传作用严格地相加。给定稳定选择的强度,近交抑郁随选择性状的遗传变异以及平均育种值和最佳表型之间的距离而变化。这使我们能够将预期的近交衰退与人口与其环境的适应不良程度联系起来。我们通过模拟来应对分析预测,无论是适应性良好的种群处于平衡状态,还是适应不良的种群,这些种群要么经历短暂的环境转变,要么在异质生境中发生基因沼泽。我们预测,在极端适应不良的情况下,近亲繁殖的抑郁会最小。我们的模型通过证明适应的历史以及环境的恶劣程度本身也可以解释近亲抑郁的差异,为解释在不同环境中同一基因型的近交抑郁的实验提供了新的依据。

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