Jan Habib U, Abbadi Amine, Lücke Sophie, Nichols Richard A, Snowdon Rod J
Department of Plant Breeding, IFZ Research Centre for Biosystems, Land Use and Nutrition, Justus Liebig University, Heinrich-Buff-Ring 26-32, 35392 Giessen, Germany.
NPZ Innovation GmbH, Hohenlieth, 24363 Holtsee, Germany.
PLoS One. 2016 Jan 29;11(1):e0147769. doi: 10.1371/journal.pone.0147769. eCollection 2016.
Genomic selection (GS) is a modern breeding approach where genome-wide single-nucleotide polymorphism (SNP) marker profiles are simultaneously used to estimate performance of untested genotypes. In this study, the potential of genomic selection methods to predict testcross performance for hybrid canola breeding was applied for various agronomic traits based on genome-wide marker profiles. A total of 475 genetically diverse spring-type canola pollinator lines were genotyped at 24,403 single-copy, genome-wide SNP loci. In parallel, the 950 F1 testcross combinations between the pollinators and two representative testers were evaluated for a number of important agronomic traits including seedling emergence, days to flowering, lodging, oil yield and seed yield along with essential seed quality characters including seed oil content and seed glucosinolate content. A ridge-regression best linear unbiased prediction (RR-BLUP) model was applied in combination with 500 cross-validations for each trait to predict testcross performance, both across the whole population as well as within individual subpopulations or clusters, based solely on SNP profiles. Subpopulations were determined using multidimensional scaling and K-means clustering. Genomic prediction accuracy across the whole population was highest for seed oil content (0.81) followed by oil yield (0.75) and lowest for seedling emergence (0.29). For seed yieId, seed glucosinolate, lodging resistance and days to onset of flowering (DTF), prediction accuracies were 0.45, 0.61, 0.39 and 0.56, respectively. Prediction accuracies could be increased for some traits by treating subpopulations separately; a strategy which only led to moderate improvements for some traits with low heritability, like seedling emergence. No useful or consistent increase in accuracy was obtained by inclusion of a population substructure covariate in the model. Testcross performance prediction using genome-wide SNP markers shows considerable potential for pre-selection of promising hybrid combinations prior to resource-intensive field testing over multiple locations and years.
基因组选择(GS)是一种现代育种方法,它利用全基因组单核苷酸多态性(SNP)标记图谱同时估计未经测试基因型的表现。在本研究中,基于全基因组标记图谱,将基因组选择方法预测杂交油菜育种中测交表现的潜力应用于各种农艺性状。对475个遗传多样的春性油菜授粉系在24403个单拷贝全基因组SNP位点进行了基因分型。同时,对授粉系与两个代表性测验种之间的950个F1测交组合进行了多种重要农艺性状的评估,包括出苗率、开花天数、倒伏情况、油产量和种子产量,以及包括种子含油量和种子硫代葡萄糖苷含量在内的关键种子品质性状。应用岭回归最佳线性无偏预测(RR-BLUP)模型,并对每个性状进行500次交叉验证,仅基于SNP图谱预测测交表现,包括在整个群体以及各个亚群体或聚类中。使用多维缩放和K均值聚类确定亚群体。整个群体中,种子含油量的基因组预测准确性最高(0.81),其次是油产量(0.75),而出苗率最低(0.29)。对于种子产量、种子硫代葡萄糖苷、抗倒伏性和开花始期天数(DTF),预测准确性分别为0.45、0.61、0.39和0.56。对于某些性状,通过分别处理亚群体可以提高预测准确性;对于一些遗传力较低的性状,如出苗率,该策略仅带来适度改善。在模型中纳入群体亚结构协变量并未使准确性得到有效或一致的提高。使用全基因组SNP标记预测测交表现显示出在多个地点和多年进行资源密集型田间测试之前预先选择有前景的杂交组合的巨大潜力。