Yan Long, Hofmann Nicolle, Li Shuxian, Ferreira Marcio Elias, Song Baohua, Jiang Guoliang, Ren Shuxin, Quigley Charles, Fickus Edward, Cregan Perry, Song Qijian
Institute of Cereal and Oil Crops, Hebei Academy of Agricultural and Forestry Sciences/ Shijiazhuang Branch of National Soybean Improvement Center / Key Laboratory of Crop Genetics and Breeding of Hebei, Shijiazhuang, 050035, China.
Soybean Genomics and Improvement Laboratory, United States Department of Agriculture, Agricultural Research Service, 10300 Baltimore Ave, Building 006, Beltsville, MD, 20705, USA.
BMC Genomics. 2017 Jul 12;18(1):529. doi: 10.1186/s12864-017-3922-0.
Soybean seed weight is not only a yield component, but also a critical trait for various soybean food products such as sprouts, edamame, soy nuts, natto and miso. Linkage analysis and genome-wide association study (GWAS) are two complementary and powerful tools to connect phenotypic differences to the underlying contributing loci. Linkage analysis is based on progeny derived from two parents, given sufficient sample size and biological replication, it usually has high statistical power to map alleles with relatively small effect on phenotype, however, linkage analysis of the bi-parental population can't detect quantitative trait loci (QTL) that are fixed in the two parents. Because of the small seed weight difference between the two parents in most families of previous studies, these populations are not suitable to detect QTL that have considerable effects on seed weight. GWAS is based on unrelated individuals to detect alleles associated with the trait under investigation. The ability of GWAS to capture major seed weight QTL depends on the frequency of the accessions with small and large seed weight in the population being investigated. Our objective was to identify QTL that had a pronounced effect on seed weight using a selective population of soybean germplasm accessions and the approach of GWAS and fixation index analysis.
We selected 166 accessions from the USDA Soybean Germplasm Collection with either large or small seed weight and could typically grow in the same location. The accessions were evaluated for seed weight in the field for two years and genotyped with the SoySNP50K BeadChip containing >42,000 SNPs. Of the 17 SNPs on six chromosomes that were significantly associated with seed weight in two years based on a GWAS of the selective population, eight on chromosome 4 or chromosome 17 had significant Fst values between the large and small seed weight sub-populations. The seed weight difference of the two alleles of these eight significant SNPs varied from 8.1 g to 11.7 g/100 seeds in two years. We also identified haplotypes in three haplotype blocks with significant effects on seed weight. These findings were validated in a panel with 3753 accessions from the USDA Soybean Germplasm Collection.
This study highlighted the usefulness of selective genotyping populations coupled with GWAS and fixation index analysis for the identification of QTL with substantial effects on seed weight in soybean. This approach may help geneticists and breeders to more efficiently identify major QTL controlling other traits. The major regions and haplotypes we have identified that control seed weight differences in soybean will facilitate the identification of genes regulating this important trait.
大豆种子重量不仅是产量构成要素,也是豆芽、毛豆、黄豆坚果、纳豆和味噌等各类大豆食品的关键性状。连锁分析和全基因组关联研究(GWAS)是将表型差异与潜在的贡献位点联系起来的两种互补且强大的工具。连锁分析基于两个亲本的后代,在有足够样本量和生物学重复的情况下,它通常具有较高的统计功效来定位对表型影响相对较小的等位基因,然而,双亲群体的连锁分析无法检测在两个亲本中固定的数量性状位点(QTL)。由于先前研究中大多数家系的两个亲本之间种子重量差异较小,这些群体不适合检测对种子重量有显著影响的QTL。GWAS基于不相关个体来检测与所研究性状相关的等位基因。GWAS捕获主要种子重量QTL的能力取决于所研究群体中种子重量小和大的种质的频率。我们的目标是使用大豆种质的选择性群体以及GWAS和固定指数分析方法来鉴定对种子重量有显著影响的QTL。
我们从美国农业部大豆种质库中选择了166份种子重量大或小且通常能在同一地点生长的种质。这些种质在田间进行了两年的种子重量评估,并用包含>42,000个单核苷酸多态性(SNP)的SoySNP50K芯片进行基因分型。基于选择性群体的GWAS,在两年中与种子重量显著相关的六条染色体上的17个SNP中,4号染色体或17号染色体上的8个在种子重量大的亚群体和小的亚群体之间具有显著的固定指数(Fst)值。这8个显著SNP的两个等位基因的种子重量差异在两年中从8.1克到11.7克/100粒种子不等。我们还在三个对种子重量有显著影响的单倍型块中鉴定出了单倍型。这些发现在美国农业部大豆种质库的3753份种质组成的群体中得到了验证。
本研究强调了选择性基因分型群体结合GWAS和固定指数分析在鉴定对大豆种子重量有显著影响的QTL方面的有用性。这种方法可能有助于遗传学家和育种家更有效地鉴定控制其他性状的主要QTL。我们已经鉴定出的控制大豆种子重量差异的主要区域和单倍型将有助于鉴定调控这一重要性状的基因。