State Key Lab of Rice Biology, IAEA Collaborating Center, Zhejiang University, Hangzhou, China.
Planta. 2011 Aug;234(2):347-61. doi: 10.1007/s00425-011-1405-0. Epub 2011 Apr 10.
Yield is the most important and complex trait for genetic improvement in crops, and marker-assisted selection enhances the improvement efficiency. The USDA rice mini-core collection derived from over 18,000 accessions of global origins is an ideal panel for association mapping. We phenotyped 203 O. sativa accessions for 14 agronomic traits and identified 5 that were highly and significantly correlated with grain yield per plant: plant height, plant weight, tillers, panicle length, and kernels/branch. Genotyping with 155 genome-wide molecular markers demonstrated 5 main cluster groups. Linkage disequilibrium (LD) decayed at least 20 cM and marker pairs with significant LD ranged from 4.64 to 6.06% in four main groups. Model comparisons revealed that different dimensions of principal component analysis affected yield and its correlated traits for mapping accuracy, and kinship did not improve the mapping in this collection. Thirty marker-trait associations were highly significant, 4 for yield, 3 for plant height, 6 for plant weight, 9 for tillers, 5 for panicle length and 3 for kernels/branch. Twenty-one markers contributed to the 30 associations, because 8 markers were co-associated with 2 or more traits. Allelic analysis of OSR13, RM471 and RM7003 for their co-associations with yield traits demonstrated that allele 126 bp of RM471 and 108 bp of RM7003 should receive greater attention, because they had the greatest positive effect on yield traits. Tagging the QTLs responsible for multiple yield traits may simultaneously help dissect the complex yield traits and elevate the efficiency to improve grain yield using marker-assisted selection in rice.
产量是作物遗传改良中最重要和最复杂的性状,而标记辅助选择则提高了改良效率。美国农业部的水稻微核心群体源自全球各地的 18000 多个品种,是进行关联图谱绘制的理想群体。我们对 203 个 O. sativa 品种进行了 14 个农艺性状的表型分析,发现其中 5 个性状与单株粒产量高度显著相关:株高、株重、分蘖、穗长和穗粒数/枝。利用 155 个全基因组分子标记进行基因分型表明,存在 5 个主要聚类群。连锁不平衡(LD)至少衰减了 20 cM,在四个主要群体中,具有显著 LD 的标记对范围从 4.64%到 6.06%。模型比较表明,主成分分析的不同维度对产量及其相关性状的作图精度有影响,而亲缘关系并不能提高该群体的作图精度。30 个标记-性状关联具有高度显著性,其中 4 个与产量有关,3 个与株高有关,6 个与株重有关,9 个与分蘖数有关,5 个与穗长有关,3 个与穗粒数/枝有关。21 个标记与 30 个关联有关,因为 8 个标记与 2 个或更多性状共同关联。对 OSR13、RM471 和 RM7003 与产量性状的共同关联的等位基因分析表明,RM471 的 126 bp 等位基因和 RM7003 的 108 bp 等位基因应该受到更多关注,因为它们对产量性状有最大的正向影响。标记多个产量性状的 QTL 可能有助于同时解析复杂的产量性状,并提高利用标记辅助选择提高水稻粒产量的效率。