Department of Horticulture, Washington State University, Pullman, WA, 99164-6414, USA.
Centre for Horticultural Science, Queensland Alliance for Agriculture and Food Innovation University of Queensland, Brisbane, Australia.
BMC Genet. 2018 Apr 10;19(1):23. doi: 10.1186/s12863-018-0609-8.
Sweet cherry is consumed widely across the world and provides substantial economic benefits in regions where it is grown. While cherry breeding has been conducted in the Pacific Northwest for over half a century, little is known about the genetic architecture of important traits. We used a genome-enabled mixed model to predict the genetic performance of 505 individuals for 32 phenological, disease response and fruit quality traits evaluated in the RosBREED sweet cherry crop data set. Genome-wide predictions were estimated using a repeated measures model for phenotypic data across 3 years, incorporating additive, dominance and epistatic variance components. Genomic relationship matrices were constructed with high-density SNP data and were used to estimate relatedness and account for incomplete replication across years.
High broad-sense heritabilities of 0.83, 0.77, and 0.76 were observed for days to maturity, firmness, and fruit weight, respectively. Epistatic variance exceeded 40% of the total genetic variance for maturing timing, firmness and powdery mildew response. Dominance variance was the largest for fruit weight and fruit size at 34% and 27%, respectively. Omission of non-additive sources of genetic variance from the genetic model resulted in inflation of narrow-sense heritability but minimally influenced prediction accuracy of genetic values in validation. Predicted genetic rankings of individuals from single-year models were inconsistent across years, likely due to incomplete sampling of the population genetic variance.
Predicted breeding values and genetic values revealed many high-performing individuals for use as parents and the most promising selections to advance for cultivar release consideration, respectively. This study highlights the importance of using the appropriate genetic model for calculating breeding values to avoid inflation of expected parental contribution to genetic gain. The genomic predictions obtained will enable breeders to efficiently leverage the genetic potential of North American sweet cherry germplasm by identifying high quality individuals more rapidly than with phenotypic data alone.
甜樱桃在世界范围内广泛食用,在其种植地区带来了巨大的经济效益。虽然在太平洋西北地区进行樱桃育种已有半个多世纪,但对重要性状的遗传结构知之甚少。我们使用基于基因组的混合模型,对 RosBREED 甜樱桃作物数据集中评估的 32 个物候学、疾病反应和果实品质性状的 505 个个体的遗传表现进行了预测。使用跨 3 年的表型数据重复测量模型估算全基因组预测值,纳入加性、显性和上位性方差分量。使用高密度 SNP 数据构建基因组关系矩阵,用于估计亲缘关系并解释跨年不完全复制。
成熟度、硬度和果实重量的广义遗传力分别为 0.83、0.77 和 0.76。成熟时间、硬度和白粉病反应的上位方差超过总遗传方差的 40%。果实重量和果实大小的显性方差分别为 34%和 27%,是最大的。遗传模型中忽略非加性遗传方差源会导致狭义遗传力膨胀,但对验证中遗传值预测准确性的影响最小。单一年度模型的个体预测遗传排名在各年之间不一致,这可能是由于群体遗传方差的不完全抽样所致。
预测的育种值和遗传值揭示了许多表现出色的个体,可作为亲本使用,最有前途的选择可以推进品种释放的考虑。本研究强调了使用适当的遗传模型计算育种值的重要性,以避免预期亲本对遗传增益的贡献膨胀。获得的基因组预测将使育种者能够通过比仅使用表型数据更快地识别高质量个体,更有效地利用北美甜樱桃种质的遗传潜力。