Scion (The New Zealand Forest Research Institute Ltd.), 49 Sala Street, Rotorua, 3046, New Zealand.
Heredity (Edinb). 2019 Mar;122(3):370-379. doi: 10.1038/s41437-018-0119-5. Epub 2018 Jul 6.
Genomic selection is expected to enhance the genetic improvement of forest tree species by providing more accurate estimates of breeding values through marker-based relationship matrices compared with pedigree-based methodologies. When adequately robust genomic prediction models are available, an additional increase in genetic gains can be made possible with the shortening of the breeding cycle through elimination of the progeny testing phase and early selection of parental candidates. The potential of genomic selection was investigated in an advanced Eucalyptus nitens breeding population focused on improvement for solid wood production. A high-density SNP chip (EUChip60K) was used to genotype 691 individuals in the breeding population, which represented two seed orchards with different selection histories. Phenotypic records for growth and form traits at age six, and for wood quality traits at age seven were available to build genomic prediction models using GBLUP, which were compared to the traditional pedigree-based alternative using BLUP. GBLUP demonstrated that breeding value accuracy would be improved and substantial increases in genetic gains towards solid wood production would be achieved. Cross-validation within and across two different seed orchards indicated that genomic predictions would likely benefit in terms of higher predictive accuracy from increasing the size of the training data sets through higher relatedness and better utilization of LD.
基因组选择有望通过基于标记的关系矩阵提供更准确的育种值估计,从而提高林木树种的遗传改良,与基于系谱的方法相比。当具有足够稳健的基因组预测模型时,可以通过缩短育种周期并消除后代测试阶段和早期选择亲本候选者来实现遗传增益的额外增加。本研究在一个以提高木材产量为目标的桉树无性系改良群体中,研究了基因组选择的潜力。使用高密度 SNP 芯片 (EUChip60K) 对 691 个育种群体个体进行基因型分析,这些个体代表两个具有不同选择历史的种子园。利用 GBLUP 构建了年龄为 6 岁的生长和形态性状以及年龄为 7 岁的木材质量性状的基因组预测模型,并与传统的基于系谱的 BLUP 方法进行了比较。GBLUP 表明,选择准确性将会提高,并且通过增加亲缘关系和更好地利用 LD,通过增加训练数据集的大小,实现了对木材产量的实质性遗传增益。在两个不同的种子园内部和之间的交叉验证表明,从提高预测准确性的角度来看,基因组预测可能会受益于通过增加亲缘关系和更好地利用 LD 来增加训练数据集的大小。