CSIRO Agriculture and Food, Canberra, ACT, 2601, Australia.
CSIRO Agriculture and Food, Narrabri, NSW, 2390, Australia.
Theor Appl Genet. 2024 May 26;137(6):142. doi: 10.1007/s00122-024-04645-6.
A Bayesian linkage disequilibrium-based multiple-locus mixed model identified QTLs for fibre, seed and oil traits and predicted breeding worthiness of test lines, enabling their simultaneous improvement in cotton. Improving cotton seed and oil yields has become increasingly important while continuing to breed for higher lint yield. In this study, a novel Bayesian linkage disequilibrium-based multiple-locus mixed model was developed for QTL identification and genomic prediction (GP). A multi-parent population consisting of 256 recombinant inbred lines, derived from four elite cultivars with distinct combinations of traits, was used in the analysis of QTLs for lint percentage, seed index, lint index and seed oil content and their interrelations. All four traits were moderately heritable and correlated but with no large influence of genotype × environment interactions across multiple seasons. Seven to ten major QTLs were identified for each trait with many being adjacent or overlapping for different trait pairs. A fivefold cross-validation of the model indicated prediction accuracies of 0.46-0.62. GP results based on any two-season phenotypes were strongly correlated with phenotypic means of a pooled analysis of three-season experiments (r = 0.83-0.92). When used for selection of improvement in lint, seed and oil yields, GP captured 40-100% of individuals with comparable lint yields of those selected based on the three-season phenotypic results. Thus, this quantitative genomics-enabled approach can not only decipher the genomic variation underlying lint, seed and seed oil traits and their interrelations, but can provide predictions for their simultaneous improvement. We discuss future breeding strategies in cotton that will enhance the entire value of the crop, not just its fibre.
基于贝叶斯连锁不平衡的多位点混合模型鉴定了纤维、种子和油性状的 QTL,并预测了测验系的育种价值,从而能够同时提高棉花的这些性状。在继续培育更高的纤维产量的同时,提高棉花种子和油产量变得越来越重要。在这项研究中,开发了一种新的基于贝叶斯连锁不平衡的多位点混合模型,用于 QTL 鉴定和基因组预测 (GP)。使用由四个具有不同性状组合的优良品种衍生的 256 个重组自交系组成的多亲本群体,分析了纤维百分率、种子指数、纤维指数和种子含油量及其相互关系的 QTL。所有四个性状都具有中度的遗传力和相关性,但在多个季节中,基因型与环境互作的影响不大。每个性状鉴定出 7 到 10 个主要 QTL,其中许多是不同性状对的相邻或重叠的。模型的五重交叉验证表明,预测准确性为 0.46-0.62。基于两个季节表型的 GP 结果与三季实验的综合分析的表型平均值高度相关(r=0.83-0.92)。当用于改良纤维、种子和油产量的选择时,GP 捕获了 40-100%的个体,其纤维产量与基于三季表型结果选择的个体相当。因此,这种基于数量遗传学的方法不仅可以解释纤维、种子和种子油性状及其相互关系的基因组变异,还可以提供同时改良这些性状的预测。我们讨论了未来棉花的育种策略,这将提高作物的整体价值,而不仅仅是纤维。