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Estimates of genetic parameters and breeding values from western larch open-pollinated families using marker-based relationship

机译:利用基于标记的关系估算西部落叶松开放授粉科的遗传参数和育种价值

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The availability and affordability of genetic markers made it possible to estimate quantitative genetic parameters without mating designs' structured pedigree. Here, we compared 4-year height's heritability and individuals' breeding values for a western larch common-garden population of 1,418 offspring representing 15 open-pollinated families from a 41-clone seed orchard using (a) classical pedigree models such as half- and full-sib families and (b) a molecular marker-based pedigree-free model using four pair-wise relationship estimation methods using eight informative SSR markers. The results highlighted the commonly observed inflated estimates of genetic parameters often obtained from half-sib analyses, as well as demonstrating some of the full-sib analyses' caveats. The pedigree reconstruction permitted the identification of selfed individuals, thus allowing evaluating the impact of selfing on marker-based genetic parameter estimation. The results demonstrated the utility of marker-based methods as an alternative to the classical pedigree-based approaches. Unlike the pedigree-based methods, the marker-based approach allowed better partitioning the variance components as well as separating the non-additive and additive genetic variance. The theoretical underpinning of the marker-based approach was discussed.
机译:遗传标记的可用性和可承受性使得无需对设计的结构谱系进行配对就可以估算定量遗传参数。在这里,我们使用(a)经典谱系模型,例如半谱系和半谱系,比较了41个克隆种子园中代表15个开放授粉家庭的1,418个西方落叶松普通花园种群的4年身高遗传力和个体育种值。全同胞族和(b)基于分子标记的无血统模型,使用四种成对关系估计方法,使用八种SSR标记。结果强调了通常从半同胞分析获得的遗传参数膨胀估计值,以及一些全同胞分析的警告。谱系重建可以识别自交个体,从而可以评估自交对基于标记的遗传参数估计的影响。结果表明,基于标记的方法可替代基于经典谱系的方法。与基于谱系的方法不同,基于标记的方法可以更好地划分方差成分,并可以分离非加性和加性遗传方差。讨论了基于标记的方法的理论基础。

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