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Which Individuals To Choose To Update the Reference Population? Minimizing the Loss of Genetic Diversity in Animal Genomic Selection Programs

机译:选择哪些个人来更新参考人口?在动物基因组选择程序中将遗传多样性的损失降至最低

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摘要

Genomic selection (GS) is commonly used in livestock and increasingly in plant breeding. Relying on phenotypes and genotypes of a reference population, GS allows performance prediction for young individuals having only genotypes. This is expected to achieve fast high genetic gain but with a potential loss of genetic diversity. Existing methods to conserve genetic diversity depend mostly on the choice of the breeding individuals. In this study, we propose a modification of the reference population composition to mitigate diversity loss. Since the high cost of phenotyping is the limiting factor for GS, our findings are of major economic interest. This study aims to answer the following questions: how would decisions on the reference population affect the breeding population, and how to best select individuals to update the reference population and balance maximizing genetic gain and minimizing loss of genetic diversity? We investigated three updating strategies for the reference population: random, truncation, and optimal contribution (OC) strategies. OC maximizes genetic merit for a fixed loss of genetic diversity. A French Montbéliarde dairy cattle population with 50K SNP chip genotypes and simulations over 10 generations were used to compare these different strategies using milk production as the trait of interest. Candidates were selected to update the reference population. Prediction bias and both genetic merit and diversity were measured. Changes in the reference population composition slightly affected the breeding population. Optimal contribution strategy appeared to be an acceptable compromise to maintain both genetic gain and diversity in the reference and the breeding populations.
机译:基因组选择(GS)常用于牲畜,并越来越多地用于植物育种。依靠参考人群的表型和基因型,GS可以预测仅具有基因型的年轻个体的表现。预期这将实现快速的高遗传收获,但可能会丧失遗传多样性。现有的保护遗传多样性的方法主要取决于繁殖个体的选择。在这项研究中,我们建议修改参考人口组成以减轻多样性的损失。由于表型分析的高成本是GS的限制因素,因此我们的发现具有重大的经济意义。这项研究旨在回答以下问题:参考种群的决定将如何影响育种种群,以及如何最佳地选择个体来更新参考种群,并在最大化遗传增益和最小化遗传多样性丧失之间取得平衡?我们针对参考人群调查了三种更新策略:随机,截断和最佳贡献(OC)策略。 OC最大限度地提高了遗传功绩,从而固定丧失了遗传多样性。法国Montbéliarde奶牛种群具有50K SNP芯片基因型,并通过10代模拟进行了比较,以牛奶生产为特征,比较了这些不同的策略。选择候选人以更新参考人群。测量了预测偏差以及遗传优势和多样性。参考种群组成的变化对繁殖种群产生了轻微影响。最佳贡献策略似乎是在参考种群和育种种群中维持遗传增益和多样性的可接受折衷方案。

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