Tayeh Nadim, Klein Anthony, Le Paslier Marie-Christine, Jacquin Françoise, Houtin Hervé, Rond Céline, Chabert-Martinello Marianne, Magnin-Robert Jean-Bernard, Marget Pascal, Aubert Grégoire, Burstin Judith
INRA, UMR1347 Agroécologie Dijon, France.
INRA, US1279 Etude du Polymorphisme des Génomes Végétaux, CEA-IG/Centre National de Génotypage Evry, France.
Front Plant Sci. 2015 Nov 17;6:941. doi: 10.3389/fpls.2015.00941. eCollection 2015.
Pea is an important food and feed crop and a valuable component of low-input farming systems. Improving resistance to biotic and abiotic stresses is a major breeding target to enhance yield potential and regularity. Genomic selection (GS) has lately emerged as a promising technique to increase the accuracy and gain of marker-based selection. It uses genome-wide molecular marker data to predict the breeding values of candidate lines to selection. A collection of 339 genetic resource accessions (CRB339) was subjected to high-density genotyping using the GenoPea 13.2K SNP Array. Genomic prediction accuracy was evaluated for thousand seed weight (TSW), the number of seeds per plant (NSeed), and the date of flowering (BegFlo). Mean cross-environment prediction accuracies reached 0.83 for TSW, 0.68 for NSeed, and 0.65 for BegFlo. For each trait, the statistical method, the marker density, and/or the training population size and composition used for prediction were varied to investigate their effects on prediction accuracy: the effect was large for the size and composition of the training population but limited for the statistical method and marker density. Maximizing the relatedness between individuals in the training and test sets, through the CDmean-based method, significantly improved prediction accuracies. A cross-population cross-validation experiment was further conducted using the CRB339 collection as a training population set and nine recombinant inbred lines populations as test set. Prediction quality was high with mean Q (2) of 0.44 for TSW and 0.59 for BegFlo. Results are discussed in the light of current efforts to develop GS strategies in pea.
豌豆是一种重要的粮食和饲料作物,也是低投入农业系统的重要组成部分。提高对生物和非生物胁迫的抗性是提高产量潜力和稳定性的主要育种目标。基因组选择(GS)最近已成为一种有前景的技术,可提高基于标记选择的准确性和增益。它使用全基因组分子标记数据来预测候选品系的育种值以供选择。利用GenoPea 13.2K SNP芯片对339份遗传资源材料(CRB339)进行了高密度基因分型。对千粒重(TSW)、单株种子数(NSeed)和开花日期(BegFlo)的基因组预测准确性进行了评估。TSW的平均跨环境预测准确性达到0.83,NSeed为0.68,BegFlo为0.65。对于每个性状,改变用于预测的统计方法、标记密度和/或训练群体大小及组成,以研究它们对预测准确性的影响:训练群体的大小和组成影响较大,而统计方法和标记密度的影响有限。通过基于CDmean的方法最大化训练集和测试集中个体之间的亲缘关系,显著提高了预测准确性。进一步进行了一项跨群体交叉验证实验,使用CRB339材料作为训练群体集,九个重组自交系群体作为测试集。预测质量较高,TSW的平均Q(2)为0.44,BegFlo为0.59。根据目前在豌豆中开发GS策略的工作对结果进行了讨论。