Li Xuehui, Wei Yanling, Acharya Ananta, Hansen Julie L, Crawford Jamie L, Viands Donald R, Michaud Réal, Claessens Annie, Brummer E Charles
Dep. of Plant Sciences, North Dakota State Univ., Fargo, ND, 58108.
Plant Breeding Center and Dep. of Plant Sciences, Univ. of California, Davis, CA, 95616.
Plant Genome. 2015 Jul;8(2):eplantgenome2014.12.0090. doi: 10.3835/plantgenome2014.12.0090.
Alfalfa (Medicago sativa L.) is a widely planted perennial forage legume grown throughout temperate and dry subtropical regions in the world. Long breeding cycles limit genetic improvement of alfalfa, particularly for complex traits such as biomass yield. Genomic selection (GS), based on predicted breeding values obtained using genome-wide molecular markers, could enhance breeding efficiency in terms of gain per unit time and cost. In this study, we genotyped tetraploid alfalfa plants that had previously been evaluated for yield during two cycles of phenotypic selection using genotyping-by-sequencing (GBS). We then developed prediction equations using yield data from three locations. Approximately 10,000 single nucleotide polymorphism (SNP) markers were used for GS modeling. The genomic prediction accuracy of total biomass yield ranged from 0.34 to 0.51 for the Cycle 0 population and from 0.21 to 0.66 for the Cycle 1 population, depending on the location. The GS model developed using Cycle 0 as the training population in predicting total biomass yield in Cycle 1 resulted in accuracies up to 0.40. Both genotype × environment interaction and the number of harvests and years used to generate yield phenotypes had effects on prediction accuracy across generations and locations, Based on our results, the selection efficiency per unit time for GS is higher than phenotypic selection, although accuracies will likely decline across multiple selection cycles. This study provided evidence that GS can accelerate genetic gain in alfalfa for biomass yield.
紫花苜蓿(Medicago sativa L.)是一种广泛种植的多年生豆科牧草,生长于世界温带和亚热带干旱地区。漫长的育种周期限制了紫花苜蓿的遗传改良,尤其是对于生物量产量等复杂性状。基于全基因组分子标记获得的预测育种值的基因组选择(GS),可以在单位时间和成本收益方面提高育种效率。在本研究中,我们对四倍体紫花苜蓿植株进行了基因分型,这些植株先前在两个表型选择周期中进行了产量评估,采用的是简化基因组测序(GBS)方法。然后,我们利用来自三个地点的产量数据建立了预测方程。大约10000个单核苷酸多态性(SNP)标记用于GS建模。根据地点不同,第0轮群体总生物量产量的基因组预测准确性在0.34至0.51之间,第1轮群体在0.21至0.66之间。以第0轮作为训练群体建立的GS模型在预测第1轮总生物量产量时,准确性高达0.40。基因型×环境互作以及用于产生产量表型的收获次数和年份,对不同世代和地点的预测准确性均有影响。基于我们的研究结果,GS的单位时间选择效率高于表型选择,尽管在多个选择周期中准确性可能会下降。本研究提供了证据,表明GS可以加速紫花苜蓿生物量产量的遗传增益。