United States Department of Agriculture-Agricultural Research Service, Plant Germplasm Introduction and Testing Research, Prosser, WA 99350, USA.
Current address: Department of Plant Biology, Carnegie Institution for Science, Stanford, CA 94305, USA.
Int J Mol Sci. 2020 May 9;21(9):3361. doi: 10.3390/ijms21093361.
Soil salinity is a growing problem in world production agriculture. Continued improvement in crop salt tolerance will require the implementation of innovative breeding strategies such as marker-assisted selection (MAS) and genomic selection (GS). Genetic analyses for yield and vigor traits under salt stress in alfalfa breeding populations with three different phenotypic datasets was assessed. Genotype-by-sequencing (GBS) developed markers with allele dosage and phenotypic data were analyzed by genome-wide association studies (GWAS) and GS using different models. GWAS identified 27 single nucleotide polymorphism (SNP) markers associated with salt tolerance. Mapping SNPs markers against the reference genome revealed several putative candidate genes based on their roles in response to salt stress. Additionally, eight GS models were used to estimate breeding values of the training population under salt stress. Highest prediction accuracies and root mean square errors were used to determine the best prediction model. The machine learning methods (support vector machine and random forest) performance best with the prediction accuracy of 0.793 for yield. The marker loci and candidate genes identified, along with optimized GS prediction models, were shown to be useful in improvement of alfalfa with enhanced salt tolerance. DNA markers and the outcome of the GS will be made available to the alfalfa breeding community in efforts to accelerate genetic gains, in the development of biotic stress tolerant and more productive modern-day alfalfa cultivars.
土壤盐渍化是世界农业生产中一个日益严重的问题。要持续提高作物的耐盐性,就需要实施创新的育种策略,如标记辅助选择(MAS)和基因组选择(GS)。本研究利用三个不同表型数据集评估了耐盐性条件下紫花苜蓿(Medicago sativa)育种群产量和活力性状的遗传分析。通过全基因组关联研究(GWAS)和不同模型的 GS 对基于基因型测序(GBS)开发的具有等位基因剂量和表型数据的标记进行了分析。GWAS 鉴定出与耐盐性相关的 27 个单核苷酸多态性(SNP)标记。将 SNP 标记映射到参考基因组上,根据其在盐胁迫响应中的作用,确定了几个潜在的候选基因。此外,还使用了 8 种 GS 模型来估计盐胁迫下训练群体的育种值。利用最高的预测准确性和均方根误差来确定最佳预测模型。机器学习方法(支持向量机和随机森林)的表现最好,产量的预测准确性为 0.793。所鉴定的标记基因座和候选基因,以及优化的 GS 预测模型,在提高紫花苜蓿耐盐性方面显示出了一定的应用潜力。DNA 标记和 GS 的结果将提供给紫花苜蓿育种界,以加速遗传增益,培育出具有生物胁迫耐受性和更高生产力的现代紫花苜蓿品种。