Bernard Anthony, Bénéjam Juliette, Roth Morgane, Lheureux Fabrice, Dirlewanger Elisabeth
INRAE, University of Bordeaux, UMR BFP, Villenave d'Ornon, France.
INRAE, UR GAFL, Montfavet, France.
Plant Genome. 2025 Jun;18(2):e70047. doi: 10.1002/tpg2.70047.
Persian walnut (Juglans regia L.) is a widespread cultivated nut tree species in temperate regions. Advances in genomic tools, such as the high-density Axiom J. regia 700K single nucleotide polymorphism (SNP) genotyping array, enable the exploration of genomic prediction (GP) for this crop. This study is the first to evaluate GP accuracy and several influencing factors in walnut for traits related to phenology and nut quality. A core-collection of 170 accessions was phenotyped for 25 traits over 1 or 2 years. Highly heritable traits, such as budbreak date and female flowering date, were predicted with high accuracy (∼0.75) using ridge regression best linear unbiased prediction (rrBLUP). Three key factors influencing GP performance were examined: marker density, prediction model, and training set size. Selecting the top 1% of 364,275 SNPs based on their variance (∼3600 SNPs) was sufficient to achieve accurate predictions. Bayesian models slightly improved prediction accuracy for some traits when using this reduced SNP set, but rrBLUP provided robust results, balancing accuracy, simplicity, and computational efficiency. Training population size also influenced accuracy, with a subset comprising 50% of the population still yielding reliable predictions. Optimization of training set was assessed using coefficient of determination mean, prediction error variance mean, and mean relatedness (MeanRel) parameters, with MeanRel performing best for shell traits. However, incorporating SNPs identified in genome-wide association study into the prediction models did not enhance accuracy. In summary, this study demonstrates the feasibility and potential of GPs for walnut breeding programs using a core-collection, offering valuable insights for optimizing GP approaches in this crop.
波斯核桃(Juglans regia L.)是温带地区广泛种植的坚果类树种。基因组工具的进步,如高密度的Axiom J. regia 700K单核苷酸多态性(SNP)基因分型阵列,使得对该作物进行基因组预测(GP)成为可能。本研究首次评估了核桃在物候和坚果品质相关性状上的基因组预测准确性及若干影响因素。对170份种质资源的核心收集品系在1年或2年内进行了25个性状的表型分析。利用岭回归最佳线性无偏预测(rrBLUP)对芽萌动日期和雌花开花日期等高遗传力性状进行了高精度预测(约0.75)。研究了影响基因组预测性能的三个关键因素:标记密度、预测模型和训练集大小。基于方差从364,275个SNP中选择前1%(约3600个SNP)就足以实现准确预测。在使用这种减少的SNP集时,贝叶斯模型对某些性状的预测准确性略有提高,但rrBLUP提供了稳健的结果,在准确性、简单性和计算效率之间取得了平衡。训练群体大小也影响准确性,包含50%群体的子集仍能产生可靠的预测。使用决定系数均值、预测误差方差均值和平均亲缘关系(MeanRel)参数评估了训练集的优化情况,MeanRel在壳性状方面表现最佳。然而,将全基因组关联研究中鉴定的SNP纳入预测模型并没有提高准确性。总之,本研究证明了利用核心收集品系对核桃育种计划进行基因组预测的可行性和潜力,为优化该作物的基因组预测方法提供了有价值的见解。