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干旱条件下四个硬粒小麦群体的数量性状基因座分析与基因组预测相结合

Combining QTL Analysis and Genomic Predictions for Four Durum Wheat Populations Under Drought Conditions.

作者信息

Zaïm Meryem, Kabbaj Hafssa, Kehel Zakaria, Gorjanc Gregor, Filali-Maltouf Abdelkarim, Belkadi Bouchra, Nachit Miloudi M, Bassi Filippo M

机构信息

Laboratory of Microbiology and Molecular Biology, Faculty of Sciences, Mohammed V University, Rabat, Morocco.

ICARDA, Biodiversity and Integrated Gene Management, Rabat, Morocco.

出版信息

Front Genet. 2020 May 6;11:316. doi: 10.3389/fgene.2020.00316. eCollection 2020.

Abstract

Durum wheat is an important crop for the human diet and its consumption is gaining popularity. In order to ensure that durum wheat production maintains the pace with the increase in demand, it is necessary to raise productivity by approximately 1.5% per year. To deliver this level of annual genetic gain the incorporation of molecular strategies has been proposed as a key solution. Here, four RILs populations were used to conduct QTL discovery for grain yield (GY) and 1,000 kernel weight (TKW). A total of 576 individuals were sown at three locations in Morocco and one in Lebanon. These individuals were genotyped by sequencing with 3,202 high-confidence polymorphic markers, to derive a consensus genetic map of 2,705.7 cM, which was used to impute any missing data. Six QTLs were found to be associated with GY and independent from flowering time on chromosomes 2B, 4A, 5B, 7A and 7B, explaining a phenotypic variation (PV) ranging from 4.3 to 13.4%. The same populations were used to train genomic prediction models incorporating the relationship matrix, the genotype by environment interaction, and marker by environment interaction, to reveal significant advantages for models incorporating the marker effect. Using training populations (TP) in full sibs relationships with the validation population (VP) was shown to be the only effective strategy, with accuracies reaching 0.35-0.47 for GY. Reducing the number of markers to 10% of the whole set, and the TP size to 20% resulted in non-significant changes in accuracies. The QTLs identified were also incorporated in the models as fixed effects, showing significant accuracy gain for all four populations. Our results confirm that the prediction accuracy depends considerably on the relatedness between TP and VP, but not on the number of markers and size of TP used. Furthermore, feeding the model with information on markers associated with QTLs increased the overall accuracy.

摘要

硬粒小麦是人类饮食中的重要作物,其消费量正日益增加。为确保硬粒小麦产量能跟上需求的增长,有必要每年将生产力提高约1.5%。为实现这一年度遗传增益水平,已提出采用分子策略作为关键解决方案。在此,利用四个重组自交系群体对籽粒产量(GY)和千粒重(TKW)进行数量性状基因座(QTL)定位。在摩洛哥的三个地点和黎巴嫩的一个地点共播种了576个个体。通过对3202个高可信度多态性标记进行测序对这些个体进行基因分型,得出一张2705.7厘摩的共识遗传图谱,用于估算任何缺失数据。发现6个QTL与GY相关且独立于2B、4A、5B、7A和7B染色体上的开花时间,解释的表型变异(PV)范围为4.3%至13.4%。使用相同群体训练包含关系矩阵、基因型与环境互作以及标记与环境互作的基因组预测模型,以揭示包含标记效应的模型的显著优势。结果表明,使用与验证群体(VP)具有全同胞关系的训练群体(TP)是唯一有效的策略,GY的预测准确率达到0.35 - 0.47。将标记数量减少至整个集合的10%,并将TP大小减少至20%,准确率没有显著变化。所鉴定的QTL也作为固定效应纳入模型,所有四个群体的准确率均有显著提高。我们的结果证实,预测准确率在很大程度上取决于TP和VP之间的亲缘关系,而不取决于所用标记的数量和TP的大小。此外,为模型提供与QTL相关的标记信息可提高整体准确率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a306/7218065/f7e8ecedb7bb/fgene-11-00316-g001.jpg

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