Skogforsk (The Forestry Research Institute of Sweden), Box 3, Sävar, SE 918 21, Sweden.
Umeå Plant Science Centre, Department of Forest Genetics and Plant Physiology, Swedish University of Agricultural Sciences, Umeå, SE - 901 83, Sweden.
BMC Genomics. 2020 Nov 16;21(1):796. doi: 10.1186/s12864-020-07188-4.
Genomic selection (GS) or genomic prediction is a promising approach for tree breeding to obtain higher genetic gains by shortening time of progeny testing in breeding programs. As proof-of-concept for Scots pine (Pinus sylvestris L.), a genomic prediction study was conducted with 694 individuals representing 183 full-sib families that were genotyped with genotyping-by-sequencing (GBS) and phenotyped for growth and wood quality traits. 8719 SNPs were used to compare different genomic with pedigree prediction models. Additionally, four prediction efficiency methods were used to evaluate the impact of genomic breeding value estimations by assigning diverse ratios of training and validation sets, as well as several subsets of SNP markers.
Genomic Best Linear Unbiased Prediction (GBLUP) and Bayesian Ridge Regression (BRR) combined with expectation maximization (EM) imputation algorithm showed slightly higher prediction efficiencies than Pedigree Best Linear Unbiased Prediction (PBLUP) and Bayesian LASSO, with some exceptions. A subset of approximately 6000 SNP markers, was enough to provide similar prediction efficiencies as the full set of 8719 markers. Additionally, prediction efficiencies of genomic models were enough to achieve a higher selection response, that varied between 50-143% higher than the traditional pedigree-based selection.
Although prediction efficiencies were similar for genomic and pedigree models, the relative selection response was doubled for genomic models by assuming that earlier selections can be done at the seedling stage, reducing the progeny testing time, thus shortening the breeding cycle length roughly by 50%.
基因组选择(GS)或基因组预测是树木育种的一种很有前途的方法,可以通过缩短育种计划中后代测试的时间来获得更高的遗传增益。作为对欧洲赤松(Pinus sylvestris L.)的概念验证,对 694 个个体进行了基因组预测研究,这些个体代表了 183 个全同胞家系,这些家系通过测序(GBS)进行了基因型分析,并对生长和木材质量性状进行了表型分析。使用 8719 个 SNP 来比较不同的基因组与系谱预测模型。此外,还使用了四种预测效率方法,通过分配不同比例的训练和验证集以及 SNP 标记的几个子集,来评估基因组育种值估计的影响。
基因组最佳线性无偏预测(GBLUP)和贝叶斯岭回归(BRR)结合期望最大化(EM)插补算法比系谱最佳线性无偏预测(PBLUP)和贝叶斯 LASSO 显示出略高的预测效率,但也有一些例外。大约 6000 个 SNP 标记的子集足以提供与 8719 个标记的全子集相似的预测效率。此外,基因组模型的预测效率足以实现更高的选择响应,比传统的基于系谱的选择高 50-143%。
尽管基因组和系谱模型的预测效率相似,但通过假设可以更早地在幼苗阶段进行选择,从而减少后代测试的时间,从而缩短大约 50%的育种周期长度,因此基因组模型的相对选择响应提高了一倍。