Bornhofen Elesandro, Fè Dario, Lenk Ingo, Greve Morten, Didion Thomas, Jensen Christian Sig, Asp Torben, Janss Luc
Center for Quantitative Genetics and Genomics, Aarhus Univ., Aarhus, Denmark.
Research Division, DLF Seeds A/S, Store Heddinge, Denmark.
Plant Genome. 2022 Dec;15(4):e20255. doi: 10.1002/tpg2.20255. Epub 2022 Oct 3.
Joint modeling of correlated multienvironment and multiharvest data of perennial crop species may offer advantages in prediction schemes and a better understanding of the underlying dynamics in space and time. The goal of the present study was to investigate the relevance of incorporating the longitudinal dimension of within-season multiple measurements of forage perennial ryegrass (Lolium perenne L.) traits in a reaction-norm model setup that additionally accounts for genotype × environment (G × E) interactions. Genetic parameters and accuracy of genomic estimated breeding value (gEBV) predictions were investigated by fitting three genomic random regression models (gRRMs) using Legendre polynomial functions to the data. Genomic DNA sequencing of family pools of diploid perennial ryegrass was performed using DNA nanoball-based technology and yielded 56,645 single-nucleotide polymorphisms, which were used to calculate the allele frequency-based genomic relationship matrix. Biomass yield's estimated additive genetic variance and heritability values were higher in later harvests. The additive genetic correlations were moderate to low in early measurements and peaked at intermediates with fairly stable values across the environmental gradient except for the initial harvest data collection. This led to the conclusion that complex (G × E) arises from spatial and temporal dimensions in the early season with lower reranking trends thereafter. In general, modeling the temporal dimension with a second-order orthogonal polynomial improved the accuracy of gEBV prediction for nutritive quality traits, but no gain in prediction accuracy was detected for dry matter yield (DMY). This study leverages the flexibility and usefulness of gRRM models for perennial ryegrass breeding and can be readily extended to other multiharvest crops.
对多年生作物品种的相关多环境和多收获数据进行联合建模,可能在预测方案方面具有优势,并能更好地理解潜在的时空动态。本研究的目的是在反应规范模型设置中,研究纳入饲用多年生黑麦草(Lolium perenne L.)性状季内多次测量的纵向维度的相关性,该模型还考虑了基因型×环境(G×E)相互作用。通过使用勒让德多项式函数对数据拟合三个基因组随机回归模型(gRRMs),研究了遗传参数和基因组估计育种值(gEBV)预测的准确性。利用基于DNA纳米球的技术对二倍体多年生黑麦草家系库进行基因组DNA测序,获得了56645个单核苷酸多态性,用于计算基于等位基因频率的基因组关系矩阵。后期收获时,生物量产量的估计加性遗传方差和遗传力值较高。早期测量时,加性遗传相关性为中度至低度,在中期达到峰值,除初始收获数据收集外,在整个环境梯度上具有相当稳定的值。由此得出结论,复杂的(G×E)在季节早期由空间和时间维度产生,此后重新排序趋势较低。一般来说,用二阶正交多项式对时间维度进行建模提高了营养品质性状gEBV预测的准确性,但未检测到干物质产量(DMY)预测准确性的提高。本研究利用了gRRM模型对多年生黑麦草育种的灵活性和实用性,并且可以很容易地扩展到其他多收获作物。