首页> 外文期刊>Frontiers in Plant Science >Incorporating Genome-Wide Association Mapping Results Into Genomic Prediction Models for Grain Yield and Yield Stability in CIMMYT Spring Bread Wheat
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Incorporating Genome-Wide Association Mapping Results Into Genomic Prediction Models for Grain Yield and Yield Stability in CIMMYT Spring Bread Wheat

机译:将基因组关联映射掺入CIMMYT春季面包小麦籽粒产量和产量稳定性的基因组预测模型

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Untangling the genetic architecture of grain yield (GY) and yield stability is an important determining factor to optimize genomics-assisted selection strategies in wheat. We conducted in-depth investigation on the above using a large set of advanced bread wheat lines (4,302), which were genotyped with genotyping-by-sequencing markers and phenotyped under contrasting (irrigated and stress) environments. Haplotypes-based genome-wide-association study (GWAS) identified 58 associations with GY and 15 with superiority index Pi (measure of stability). Sixteen associations with GY were “environment-specific” with two on chromosomes 3B and 6B with the large effects and 8 associations were consistent across environments and trials. For Pi , 8 associations were from chromosomes 4B and 7B, indicating ‘hot spot’ regions for stability. Epistatic interactions contributed to an additional 5–9% variation on average. We further explored whether integrating consistent and robust associations identified in GWAS as fixed effects in prediction models improves prediction accuracy. For GY, the model accounting for the haplotype-based GWAS loci as fixed effects led to up to 9–10% increase in prediction accuracy, whereas for Pi this approach did not provide any advantage. This is the first report of integrating genetic architecture of GY and yield stability into prediction models in wheat.
机译:不具有谷物产量(GY)和产量稳定性的遗传建筑是优化小麦基因组学辅助选择策略的重要决定因素。我们使用大量的高级面包小麦线(4,302)对上述进行了深入研究,该小麦线(4,302)是基因分型逐序标记的基因分型,并在对比(灌溉和应力)环境下表型。基于单倍型的基因组 - 范围关联研究(GWAS)鉴定了与GY和15的58个关联,具有优越指数PI(稳定性测量)。与GY的十六个关联是“环境特定”,染色体3B和6B患有大效应,8个关联在环境和试验中一致。对于PI,8个关联来自染色体4b和7b,表明“热点”区域用于稳定性。背景互动平均促进5-9%的额外变化。我们进一步探索了在GWA中识别的一致和强大的关联作为预测模型中的固定效果,提高了预测准确性。对于GY来说,基于单倍型的GWAS基因座的模型计入固定效应导致预测准确性的增加高达9-10%,而对于PI,这种方法没有提供任何优势。这是将GY的遗传架构整合到小麦预测模型中的遗传架构和产量稳定性的第一个报告。

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