Luo Ziliang, Wang Meng, Long Yan, Huang Yongju, Shi Lei, Zhang Chunyu, Liu Xiang, Fitt Bruce D L, Xiang Jinxia, Mason Annaliese S, Snowdon Rod J, Liu Peifa, Meng Jinling, Zou Jun
National Key Laboratory of Crop Genetic Improvement, Huazhong Agricultural University, Wuhan, 430070, China.
School of Life and Medical Sciences, University of Hertfordshire, Hatfield, Hertfordshire, AL10 9AB, UK.
Theor Appl Genet. 2017 Aug;130(8):1569-1585. doi: 10.1007/s00122-017-2911-7. Epub 2017 Apr 28.
A comprehensive linkage atlas for seed yield in rapeseed. Most agronomic traits of interest for crop improvement (including seed yield) are highly complex quantitative traits controlled by numerous genetic loci, which brings challenges for comprehensively capturing associated markers/genes. We propose that multiple trait interactions underlie complex traits such as seed yield, and that considering these component traits and their interactions can dissect individual quantitative trait loci (QTL) effects more effectively and improve yield predictions. Using a segregating rapeseed (Brassica napus) population, we analyzed a large set of trait data generated in 19 independent experiments to investigate correlations between seed yield and other complex traits, and further identified QTL in this population with a SNP-based genetic bin map. A total of 1904 consensus QTL accounting for 22 traits, including 80 QTL directly affecting seed yield, were anchored to the B. napus reference sequence. Through trait association analysis and QTL meta-analysis, we identified a total of 525 indivisible QTL that either directly or indirectly contributed to seed yield, of which 295 QTL were detected across multiple environments. A majority (81.5%) of the 525 QTL were pleiotropic. By considering associations between traits, we identified 25 yield-related QTL previously ignored due to contrasting genetic effects, as well as 31 QTL with minor complementary effects. Implementation of the 525 QTL in genomic prediction models improved seed yield prediction accuracy. Dissecting the genetic and phenotypic interrelationships underlying complex quantitative traits using this method will provide valuable insights for genomics-based crop improvement.
油菜籽种子产量的综合连锁图谱。作物改良中大多数感兴趣的农艺性状(包括种子产量)都是由众多基因位点控制的高度复杂的数量性状,这给全面捕获相关标记/基因带来了挑战。我们提出,多个性状相互作用是种子产量等复杂性状的基础,考虑这些组成性状及其相互作用可以更有效地剖析单个数量性状位点(QTL)的效应,并提高产量预测。利用一个分离的油菜(甘蓝型油菜)群体,我们分析了在19个独立实验中产生的大量性状数据,以研究种子产量与其他复杂性状之间的相关性,并进一步利用基于单核苷酸多态性(SNP)的遗传图谱在该群体中鉴定QTL。共有1904个共定位QTL涉及22个性状,包括80个直接影响种子产量的QTL,这些QTL被定位到甘蓝型油菜参考序列上。通过性状关联分析和QTL元分析,我们总共鉴定出525个直接或间接影响种子产量的不可分割QTL,其中295个QTL在多个环境中被检测到。525个QTL中的大多数(81.5%)具有多效性。通过考虑性状之间的关联,我们鉴定出25个由于遗传效应相反而先前被忽视的与产量相关的QTL,以及31个具有轻微互补效应的QTL。将这525个QTL应用于基因组预测模型提高了种子产量预测的准确性。使用这种方法剖析复杂数量性状背后的遗传和表型相互关系,将为基于基因组学的作物改良提供有价值的见解。