Resende R T, Resende M D V, Silva F F, Azevedo C F, Takahashi E K, Silva-Junior O B, Grattapaglia D
Department of Forest Engineering, Universidade Federal de Viçosa/UFV, Viçosa, Brazil.
Department of Statistics, Universidade Federal de Viçosa/UFV, Viçosa, Brazil.
Heredity (Edinb). 2017 Oct;119(4):245-255. doi: 10.1038/hdy.2017.37. Epub 2017 Jul 5.
We report a genomic selection (GS) study of growth and wood quality traits in an outbred F hybrid Eucalyptus population (n=768) using high-density single-nucleotide polymorphism (SNP) genotyping. Going beyond previous reports in forest trees, models were developed for different selection targets, namely, families, individuals within families and individuals across the entire population using a genomic model including dominance. To provide a more breeder-intelligible assessment of the performance of GS we calculated the expected response as the percentage gain over the population average expected genetic value (EGV) for different proportions of genomically selected individuals, using a rigorous cross-validation (CV) scheme that removed relatedness between training and validation sets. Predictive abilities (PAs) were 0.40-0.57 for individual selection and 0.56-0.75 for family selection. PAs under an additive+dominance model improved predictions by 5 to 14% for growth depending on the selection target, but no improvement was seen for wood traits. The good performance of GS with no relatedness in CV suggested that our average SNP density (~25 kb) captured some short-range linkage disequilibrium. Truncation GS successfully selected individuals with an average EGV significantly higher than the population average. Response to GS on a per year basis was ~100% more efficient than by phenotypic selection and more so with higher selection intensities. These results contribute further experimental data supporting the positive prospects of GS in forest trees. Because generation times are long, traits are complex and costs of DNA genotyping are plummeting, genomic prediction has good perspectives of adoption in tree breeding practice.
我们报告了一项针对远交F1杂交桉树种群(n = 768)生长和木材质量性状的基因组选择(GS)研究,该研究使用了高密度单核苷酸多态性(SNP)基因分型。超越了此前林木研究的报道,我们针对不同的选择目标构建了模型,即针对家系、家系内个体以及整个种群的个体,使用了包含显性效应的基因组模型。为了给育种者提供更易于理解的GS性能评估,我们使用严格的交叉验证(CV)方案(该方案消除了训练集和验证集之间的亲缘关系),计算了不同比例基因组选择个体相对于种群平均预期遗传值(EGV)的预期增益百分比。个体选择的预测能力(PA)为0.40 - 0.57,家系选择的PA为0.56 - 0.75。对于生长性状,根据选择目标的不同,加性+显性模型下的PA可将预测提高5%至14%,但对于木材性状未见改善。CV中无亲缘关系时GS的良好性能表明,我们的平均SNP密度(约25 kb)捕获了一些短程连锁不平衡。截断式GS成功地选择了平均EGV显著高于种群平均值的个体。每年对GS的响应比表型选择效率高约100%,选择强度越高,效率提升越明显。这些结果提供了更多实验数据,支持了GS在林木中的积极前景。由于林木世代时间长、性状复杂且DNA基因分型成本正在急剧下降,基因组预测在树木育种实践中有良好的应用前景。