Department of Plant Breeding, National Institute of Agricultural Technology (INTA), EEA Pergamino, B2700WAA, Pergamino, Argentina.
Biometris, Wageningen University and Research, 6700AA, Wageningen, The Netherlands.
Theor Appl Genet. 2019 Jul;132(7):2055-2067. doi: 10.1007/s00122-019-03337-w. Epub 2019 Apr 9.
The use of a kinship matrix integrating pedigree- and marker-based relationships optimized the performance of genomic prediction in sorghum, especially for traits of lower heritability. Selection based on genome-wide markers has become an active breeding strategy in crops. Genomic prediction models can make use of pedigree information to account for the residual polygenic effects not captured by markers. Our aim was to evaluate the impact of using pedigree and genomic information on prediction quality of breeding values for different traits in sorghum. We explored BLUP models that use weighted combinations of pedigree and genomic relationship matrices. The optimal weighting factor was empirically determined in order to maximize predictive ability after evaluating a range of candidate weights. The phenotypic data consisted of testcross evaluations of sorghum parental lines across multiple environments. All lines were genotyped, and full pedigree information was available. The performance of the best predictive combined matrix was compared to that of models fitting the component matrices independently. Model performance was assessed using cross-validation technique. Fitting a combined pedigree-genomic matrix with the optimal weight always yielded the largest increases in predictive ability and the largest reductions in prediction bias relative to the simple G-BLUP. However, the weight that optimized prediction varied across traits. The benefits of including pedigree information in the genomic model were more relevant for traits with lower heritability, such as grain yield and stay-green. Our results suggest that the combination of pedigree and genomic relatedness can be used to optimize predictions of complex traits in crops when the additive variation is not fully explained by markers.
利用整合系谱和基于标记关系的亲缘关系矩阵优化了高粱基因组预测的性能,特别是对于遗传力较低的性状。基于全基因组标记的选择已成为作物中的一种积极的育种策略。基因组预测模型可以利用系谱信息来解释标记未捕获的剩余多基因效应。我们的目的是评估在高粱不同性状的育种值预测质量中使用系谱和基因组信息的影响。我们探索了使用系谱和基因组关系矩阵加权组合的 BLUP 模型。通过评估一系列候选权重来确定最优权重因子,以最大化预测能力。表型数据由高粱亲本系在多个环境下的测验杂交评估组成。所有系均进行了基因型检测,并且可以获得完整的系谱信息。最佳预测综合矩阵的性能与独立拟合分量矩阵的模型性能进行了比较。使用交叉验证技术评估模型性能。使用最优权重拟合组合的系谱-基因组矩阵总是会导致预测能力的最大提高和预测偏差的最大降低,相对于简单的 G-BLUP。然而,优化预测的权重因性状而异。在基因组模型中包含系谱信息对于遗传力较低的性状(如粒重和持绿性)更为重要。我们的结果表明,当标记不能完全解释加性变异时,系谱和基因组亲缘关系的组合可用于优化作物复杂性状的预测。