Dale Bumpers National Rice Research Center, United States Department of Agriculture-Agricultural Research Service, Stuttgart, AR 72160, USA.
G3 (Bethesda). 2021 Sep 27;11(10). doi: 10.1093/g3journal/jkab178.
Root system architecture (RSA) is a crucial factor in resource acquisition and plant productivity. Roots are difficult to phenotype in the field, thus new tools for predicting phenotype from genotype are particularly valuable for plant breeders aiming to improve RSA. This study identifies quantitative trait loci (QTLs) for RSA and agronomic traits in a rice (Oryza sativa) recombinant inbred line (RIL) population derived from parents with contrasting RSA traits (PI312777 × Katy). The lines were phenotyped for agronomic traits in the field, and separately grown as seedlings on agar plates which were imaged to extract RSA trait measurements. QTLs were discovered from conventional linkage analysis and from a machine learning approach using a Bayesian network (BN) consisting of genome-wide SNP data and phenotypic data. The genomic prediction abilities (GPAs) of multi-QTL models and the BN analysis were compared with the several standard genomic prediction (GP) methods. We found GPAs were improved using multitrait (BN) compared to single trait GP in traits with low to moderate heritability. Two groups of individuals were selected based on GPs and a modified rank sum index (GSRI) indicating their divergence across multiple RSA traits. Selections made on GPs did result in differences between the group means for numerous RSA. The ranking accuracy across RSA traits among the individual selected RILs ranged from 0.14 for root volume to 0.59 for lateral root tips. We conclude that the multitrait GP model using BN can in some cases improve the GPA of RSA and agronomic traits, and the GSRI approach is useful to simultaneously select for a desired set of RSA traits in a segregating population.
根系结构(RSA)是获取资源和植物生产力的关键因素。根系在田间难以表型,因此,对于旨在改善 RSA 的植物育种者来说,从基因型预测表型的新工具特别有价值。本研究在来自 RSA 性状不同的亲本(PI312777×Katy)的水稻重组自交系(RIL)群体中鉴定了 RSA 和农艺性状的数量性状位点(QTL)。这些系在田间对农艺性状进行了表型分析,并在琼脂平板上分别作为幼苗进行培养,对其进行成像以提取 RSA 性状测量值。从常规连锁分析和使用包含全基因组 SNP 数据和表型数据的贝叶斯网络(BN)的机器学习方法中发现了 QTL。比较了多 QTL 模型和 BN 分析的基因组预测能力(GPAs)与几种标准基因组预测(GP)方法。我们发现,在遗传力低至中等的性状中,多性状(BN)的 GPAs 优于单性状 GP。根据 GPs 和指示它们在多个 RSA 性状上差异的修改秩和指数(GSRI),选择了两组个体。基于 GPs 进行的选择确实导致了许多 RSA 性状的组平均值之间的差异。在所选 RIL 个体中,跨 RSA 性状的排名准确性范围从根体积的 0.14 到侧根尖端的 0.59。我们得出结论,使用 BN 的多性状 GP 模型可以在某些情况下提高 RSA 和农艺性状的 GPA,并且 GSRI 方法可用于同时在分离群体中选择一组所需的 RSA 性状。