CIRAD, UMR AGAP, Montpellier, France.
AGAP, Univ Montpellier, CIRAD, INRA, Montpellier SupAgro, Montpellier, France.
PLoS One. 2019 Jun 13;14(6):e0217516. doi: 10.1371/journal.pone.0217516. eCollection 2019.
The high concentration of arsenic (As) in rice grains, in a large proportion of the rice growing areas, is a critical issue. This study explores the feasibility of conventional (QTL-based) marker-assisted selection and genomic selection to improve the ability of rice to prevent As uptake and accumulation in the edible grains. A japonica diversity panel (RP) of 228 accessions phenotyped for As concentration in the flag leaf (FL-As) and in the dehulled grain (CG-As), and genotyped at 22,370 SNP loci, was used to map QTLs by association analysis (GWAS) and to train genomic prediction models. Similar phenotypic and genotypic data from 95 advanced breeding lines (VP) with japonica genetic backgrounds, was used to validate related QTLs mapped in the RP through GWAS and to evaluate the predictive ability of across populations (RP-VP) genomic estimate of breeding value (GEBV) for As exclusion. Several QTLs for FL-As and CG-As with a low-medium individual effect were detected in the RP, of which some colocalized with known QTLs and candidate genes. However, less than 10% of those QTLs could be validated in the VP without loosening colocalization parameters. Conversely, the average predictive ability of across populations GEBV was rather high, 0.43 for FL-As and 0.48 for CG-As, ensuring genetic gains per time unit close to phenotypic selection. The implications of the limited robustness of the GWAS results and the rather high predictive ability of genomic prediction are discussed for breeding rice for significantly low arsenic uptake and accumulation in the edible grains.
稻米中砷(As)浓度高,在很大比例的水稻种植区都是一个关键问题。本研究探讨了常规(基于 QTL)标记辅助选择和基因组选择来提高水稻防止可食谷物中 As 吸收和积累能力的可行性。使用一个由 228 个品种组成的日本稻种多样性群体(RP),对其旗叶(FL-As)和去壳谷粒(CG-As)中的 As 浓度进行表型分析,并在 22370 个 SNP 标记处进行基因型分析,通过关联分析(GWAS)进行 QTL 作图,并训练基因组预测模型。使用来自具有日本稻种遗传背景的 95 个高级育成系(VP)的类似表型和基因型数据,通过 GWAS 验证在 RP 中映射的相关 QTL,并评估跨群体(RP-VP)基因组估计的育种值(GEBV)对 As 排斥的预测能力。在 RP 中检测到几个对 FL-As 和 CG-As 具有低中等个体效应的 QTL,其中一些与已知 QTL 和候选基因共定位。然而,在不放宽共定位参数的情况下,只有不到 10%的 QTL 可以在 VP 中得到验证。相反,跨群体 GEBV 的平均预测能力相当高,FL-As 为 0.43,CG-As 为 0.48,确保每个时间单位的遗传增益接近表型选择。对 GWAS 结果的稳健性有限和基因组预测的较高预测能力的影响,将为培育显著降低可食谷物中 As 吸收和积累的水稻品种进行了讨论。