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Detecting the QTL-Allele System of Seed Oil Traits Using Multi-Locus Genome-Wide Association Analysis for Population Characterization and Optimal Cross Prediction in Soybean

机译:用多基因座基因组 - 宽协会分析检测种子油性状QTL-等位基因系统,用于大豆群体表征和最佳交叉预测

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摘要

Soybean is one of the world's major vegetative oil sources, while oleic acid and linolenic acid content are the major quality traits of soybean oil. The restricted two-stage multi-locus genome-wide association analysis (RTM-GWAS), characterized with error and false-positive control, has provided a potential approach for a relatively thorough detection of whole-genome QTL-alleles. The Chinese soybean landrace population (CSLRP) composed of 366 accessions was tested under four environments to identify the QTL-allele constitution of seed oil, oleic acid and linolenic acid content (SOC, OAC, and LAC). Using RTM-GWAS with 29,119 SNPLDBs (SNP linkage disequilibrium blocks) as genomic markers, 50, 98, and 50 QTLs with 136, 283, and 154 alleles (2–9 per locus) were detected, with their contribution 82.52, 90.31, and 83.86% to phenotypic variance, corresponding to their heritability 91.29, 90.97, and 90.24% for SOC, OAC, and LAC, respectively. The RTM-GWAS was shown to be more powerful and efficient than previous single-locus model GWAS procedures. For each trait, the detected QTL-alleles were organized into a QTL-allele matrix as the population genetic constitution. From which the genetic differentiation among 6 eco-populations was characterized as significant allele frequency differentiation on 28, 56, and 30 loci for the three traits, respectively. The QTL-allele matrices were also used for genomic selection for optimal crosses, which predicted transgressive potential up to 24.76, 40.30, and 2.37% for the respective traits, respectively. From the detected major QTLs, 38, 27, and 25 candidate genes were annotated for the respective traits, and two common QTL covering eight genes were identified for further study.
机译:大豆是世界上主要的植物油源之一,而油酸和亚麻酸含量是大豆油的主要品质性状。具有误差和假阳性对照的限制的两级多基因座基因组关联分析(RTM-GWA)提供了潜在的方法,用于相对彻底地检测全基因组QTL-等位基因。在四种环境中测试了由366种载体组成的中式大豆地板人口(CSLRP),以确定种子油,油酸和亚麻酸含量(SoC,OAC和LAC)的QTL-等位基因构成。使用具有29,119个SNPLDB(SNP连接不平衡嵌段)作为基因组标记物,50,98和50 QTL的RTM-Gwas检测到136,283和154个等位基因(每位基因座2-9个),其贡献82.52,90.31,和对于SoC,OAC和LAC分别对应于其遗传性91.29,90.97和90.24%的遗传学,对应于其表型差异83.86%。 RTM-GWA被证明比以前的单个轨迹模型GWAS程序更强大和高效。对于每个性状,将检测到的QTL-等位基因组织成QTL-等位基因基质作为群体遗传构成。从其中6个生态群体中的遗传分化分别表征为28,56和30个基因座的显着等位基因频率分化,分别为三个特征。 QTL - 等位基因矩阵还用于最佳交叉的基因组选择,其分别预测了相应性状的近似近24.76,40.30和2.37%的受到侵袭势。从检测到的主要QTL,38,27和25个候选基因被注释为各个性状,并鉴定出覆盖8个基因的两个常见QTL以进行进一步研究。

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