Dép. de phytologie, Pavillon Charles-Eugène, Marchand 1030, Ave., de la Médecine, Quebec City, QC, G1V 0A6, Canada.
Plant Genome. 2019 Nov;12(3):1-14. doi: 10.3835/plantgenome2019.05.0036.
The multiple single nucleotide polymorphism (multi-SNP) and haplotype-based approaches that jointly consider multiple markers unveiled a larger number of associations, some of which were shared with the single-SNP approach. A larger overlap of quantitative trait loci (QTLs) between the single-SNP and haplotype-based approaches was obtained than with the multi-SNP approach. Despite a limited overlap between the QTLs detected by these approaches, each uncovered QTLs reported previously, suggesting that each approach is capable of uncovering a different subset of QTLs. We demonstrated the efficiency of an integrated genome-wide association study (GWAS) procedure, combining single-locus and multilocus approaches to improve the capacity and reliability of association analysis to detect key QTLs. The efficiency of barley breeding programs may be improved by the practical use of QTLs identified in this study. Genome-wide association studies (GWAS) have been widely used to identify quantitative trait loci (QTLs) underlying complex agronomic traits. The conventional GWAS model is based on a single-locus model, which may prove inaccurate if a trait is controlled by multiple loci, which is the case for most agronomic traits in barley (Hordeum vulgare L.). Additionally, an individual single nucleotide polymorphism (SNP) will prove incapable of capturing underlying allelic diversity. A multilocus model could potentially represent a better alternative for QTL identification. This study aimed to explore different GWAS approaches (single-SNP, multi-SNP, and haplotype-based) to establish SNP-trait associations and to potentially describe the complex genetic architecture of seven key traits in spring barley. The multi-SNP and haplotype-based approaches unveiled a larger number of significant associations, some of which were shared with the single-SNP approach. Globally, the multi-SNP approach explained more of the phenotypic variance (cumulative R ) and provided the best fit with the genetic model [Bayesian information criterion (BIC)]. Compared with the multi-SNP approach, the single-SNP and haplotype-based approaches were relatively similar in terms of cumulative R and BIC, with an improvement with the haplotype-based approach. Despite limited overlap between detected QTLs, each approach discovered QTLs that had been validated previously, suggesting that each approach can uncover a different subset of QTLs. An integrated GWAS procedure, considering single-locus and multilocus GWAS approaches jointly, may improve the capacity of association studies to detect key QTLs and to provide a more complete picture of the genetic architecture of complex traits in barley.
多核苷酸单态性(multi-SNP)和基于单倍型的方法联合考虑多个标记,揭示了更多的关联,其中一些与单核苷酸单态性方法共享。与多核苷酸单态性方法相比,单核苷酸单态性和基于单倍型的方法获得了更多的数量性状基因座(QTL)重叠。尽管这些方法检测到的 QTL 之间的重叠有限,但每种方法都发现了以前报道过的 QTL,表明每种方法都能够揭示不同的 QTL 子集。我们展示了整合全基因组关联研究(GWAS)程序的效率,该程序结合单基因座和多基因座方法,提高了关联分析检测关键 QTL 的能力和可靠性。通过实际使用本研究中鉴定的 QTL,可能会提高大麦育种计划的效率。全基因组关联研究(GWAS)已广泛用于鉴定复杂农艺性状的数量性状基因座(QTL)。传统的 GWAS 模型基于单基因座模型,如果一个性状受多个基因座控制,该模型可能会不准确,而大麦中的大多数农艺性状就是如此(Hordeum vulgare L.)。此外,单个单核苷酸多态性(SNP)将无法捕获潜在的等位基因多样性。多基因座模型可能是鉴定 QTL 的更好选择。本研究旨在探索不同的 GWAS 方法(单核苷酸单态性、多核苷酸单态性和基于单倍型的方法)来建立 SNP-性状关联,并可能描述春大麦七个关键性状的复杂遗传结构。多核苷酸单态性和基于单倍型的方法揭示了更多数量的显著关联,其中一些与单核苷酸单态性方法共享。总体而言,多核苷酸单态性方法解释了更多的表型方差(累积 R ),并且与遗传模型的拟合最好[贝叶斯信息准则(BIC)]。与多核苷酸单态性方法相比,单核苷酸单态性和基于单倍型的方法在累积 R 和 BIC 方面相对相似,基于单倍型的方法有所改进。尽管检测到的 QTL 之间的重叠有限,但每种方法都发现了以前验证过的 QTL,这表明每种方法都可以揭示不同的 QTL 子集。考虑单基因座和多基因座 GWAS 方法的综合 GWAS 程序可能会提高关联研究检测关键 QTL 的能力,并提供更完整的大麦复杂性状遗传结构的图像。