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应用关联作图和基因组选择剖析欧洲优质小麦的关键性状。

Applying association mapping and genomic selection to the dissection of key traits in elite European wheat.

作者信息

Bentley Alison R, Scutari Marco, Gosman Nicolas, Faure Sebastien, Bedford Felicity, Howell Phil, Cockram James, Rose Gemma A, Barber Tobias, Irigoyen Jose, Horsnell Richard, Pumfrey Claire, Winnie Emma, Schacht Johannes, Beauchêne Katia, Praud Sebastien, Greenland Andy, Balding David, Mackay Ian J

机构信息

The John Bingham Laboratory, NIAB, Huntingdon Road, Cambridge, CB3 0LE, UK,

出版信息

Theor Appl Genet. 2014 Dec;127(12):2619-33. doi: 10.1007/s00122-014-2403-y. Epub 2014 Oct 2.

Abstract

We show the application of association mapping and genomic selection for key breeding targets using a large panel of elite winter wheat varieties and a large volume of agronomic data. The heightening urgency to increase wheat production in line with the needs of a growing population, and in the face of climatic uncertainty, mean new approaches, including association mapping (AM) and genomic selection (GS) need to be validated and applied in wheat breeding. Key adaptive responses are the cornerstone of regional breeding. There is evidence that new ideotypes for long-standing traits such as flowering time may be required. In order to detect targets for future marker-assisted improvement and validate the practical application of GS for wheat breeding we genotyped 376 elite wheat varieties with 3,046 DArT, single nucleotide polymorphism and gene markers and measured seven traits in replicated yield trials over 2 years in France, Germany and the UK. The scale of the phenotyping exceeds the breadth of previous AM and GS studies in these key economic wheat production regions of Northern Europe. Mixed-linear modelling (MLM) detected significant marker-trait associations across and within regions. Genomic prediction using elastic net gave low to high prediction accuracies depending on the trait, and could be experimentally increased by modifying the constituents of the training population (TP). We also tested the use of differentially penalised regression to integrate candidate gene and genome-wide markers to predict traits, demonstrating the validity and simplicity of this approach. Overall, our results suggest that whilst AM offers potential for application in both research and breeding, GS represents an exciting opportunity to select key traits, and that optimisation of the TP is crucial to its successful implementation.

摘要

我们展示了利用大量优良冬小麦品种和大量农艺数据,将关联作图和基因组选择应用于关键育种目标的情况。鉴于人口增长需求以及面对气候不确定性,提高小麦产量的紧迫性日益增加,这意味着包括关联作图(AM)和基因组选择(GS)在内的新方法需要在小麦育种中得到验证和应用。关键的适应性反应是区域育种的基石。有证据表明,可能需要针对开花时间等长期性状培育新的理想型品种。为了检测未来标记辅助改良的目标,并验证GS在小麦育种中的实际应用,我们用3046个DArT、单核苷酸多态性和基因标记对376个优良小麦品种进行了基因分型,并在法国、德国和英国进行了为期两年的重复产量试验,测量了七个性状。表型分析的规模超过了此前在北欧这些关键经济小麦产区进行的AM和GS研究的广度。混合线性模型(MLM)在不同区域间和区域内检测到了显著的标记-性状关联。使用弹性网络的基因组预测根据性状给出了低到高的预测准确性,并且可以通过修改训练群体(TP)的组成来实验性地提高预测准确性。我们还测试了使用差异惩罚回归来整合候选基因和全基因组标记以预测性状,证明了该方法的有效性和简便性。总体而言,我们的结果表明,虽然AM在研究和育种中都有应用潜力,但GS为选择关键性状提供了一个令人兴奋的机会,并且TP的优化对其成功实施至关重要。

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