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Accuracy of genomic selection models in a large population of open-pollinated families in white spruce

机译:白云杉中大量开放授粉家庭的基因组选择模型的准确性

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Genomic selection (GS) is of interest in breeding because of its potential for predicting the genetic value of individuals and increasing genetic gains per unit of time. To date, very few studies have reported empirical results of GS potential in the context of large population sizes and long breeding cycles such as for boreal trees. In this study, we assessed the effectiveness of marker-aided selection in an undomesticated white spruce (Picea glauca (Moench) Voss) population of large effective size using a GS approach. A discovery population of 1694 trees representative of 214 open-pollinated families from 43 natural populations was phenotyped for 12 wood and growth traits and genotyped for 6385 single-nucleotide polymorphisms (SNPs) mined in 2660 gene sequences. GS models were built to predict estimated breeding values using all the available SNPs or SNP subsets of the largest absolute effects, and they were validated using various cross-validation schemes. The accuracy of genomic estimated breeding values (GEBVs) varied from 0.327 to 0.435 when the training and the validation data sets shared half-sibs that were on average 90% of the accuracies achieved through traditionally estimated breeding values. The trend was also the same for validation across sites. As expected, the accuracy of GEBVs obtained after cross-validation with individuals of unknown relatedness was lower with about half of the accuracy achieved when half-sibs were present. We showed that with the marker densities used in the current study, predictions with low to moderate accuracy could be obtained within a large undomesticated population of related individuals, potentially resulting in larger gains per unit of time with GS than with the traditional approach.
机译:基因组选择(GS)在育种中很受关注,因为它可以预测个体的遗传价值并增加单位时间的遗传增益。迄今为止,很少有研究报告在大种群规模和长繁殖周期(例如北方树)的情况下GS潜力的经验结果。在这项研究中,我们评估了使用GS方法在较大有效大小的未内陷的白云杉(Picea glauca(Moench)Voss)种群中进行标记辅助选择的有效性。对来自43个自然种群的214个开放授粉科的1694棵树的发现种群进行了表型分析,以确定其12种木材和生长性状,并对2660个基因序列中的6385个单核苷酸多态性(SNP)进行了基因分型。建立GS模型以使用所有可用的SNP或具有最大绝对效应的SNP子集预测估计的育种值,并使用各种交叉验证方案对其进行验证。当训练和验证数据集共享半同胞时,基因组估计育种值(GEBV)的准确度从0.327到0.435不等,平均一半是通过传统估计育种值获得的准确度的90%。跨站点验证的趋势也相同。不出所料,与未知关联个体进行交叉验证后获得的GEBV的准确性较低,只有半同胞存在时所获得的准确性的一半左右。我们表明,利用当前研究中使用的标记密度,可以在大量未受拘束的相关个体中获得低到中等准确性的预测,与传统方法相比,使用GS可能导致每单位时间的收益更大。

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