Wilson Stefan, Zheng Chaozhi, Maliepaard Chris, Mulder Han A, Visser Richard G F, van der Burgt Ate, van Eeuwijk Fred
Biometris, Wageningen University & Research Centre, Wageningen, Netherlands.
Plant Breeding, Wageningen University and Research, Wageningen, Netherlands.
Front Plant Sci. 2021 Aug 9;12:672417. doi: 10.3389/fpls.2021.672417. eCollection 2021.
Use of genomic prediction (GP) in tetraploid is becoming more common. Therefore, we think it is the right time for a comparison of GP models for tetraploid potato. GP models were compared that contrasted shrinkage with variable selection, parametric vs. non-parametric models and different ways of accounting for non-additive genetic effects. As a complement to GP, association studies were carried out in an attempt to understand the differences in prediction accuracy. We compared our GP models on a data set consisting of 147 cultivars, representing worldwide diversity, with over 39 k GBS markers and measurements on four tuber traits collected in six trials at three locations during 2 years. GP accuracies ranged from 0.32 for tuber count to 0.77 for dry matter content. For all traits, differences between GP models that utilised shrinkage penalties and those that performed variable selection were negligible. This was surprising for dry matter, as only a few additive markers explained over 50% of phenotypic variation. Accuracy for tuber count increased from 0.35 to 0.41, when dominance was included in the model. This result is supported by Genome Wide Association Study (GWAS) that found additive and dominance effects accounted for 37% of phenotypic variation, while significant additive effects alone accounted for 14%. For tuber weight, the Reproducing Kernel Hilbert Space (RKHS) model gave a larger improvement in prediction accuracy than explicitly modelling epistatic effects. This is an indication that capturing the between locus epistatic effects of tuber weight can be done more effectively using the semi-parametric RKHS model. Our results show good opportunities for GP in 4x potato.
基因组预测(GP)在四倍体中的应用越来越普遍。因此,我们认为现在是比较四倍体马铃薯GP模型的恰当时机。我们比较了GP模型,这些模型在收缩法与变量选择、参数模型与非参数模型以及考虑非加性遗传效应的不同方法之间形成对比。作为GP的补充,我们进行了关联研究,试图了解预测准确性的差异。我们在一个由147个品种组成的数据集上比较了我们的GP模型,这些品种代表了全球范围内的多样性,有超过39k个基因组简化测序(GBS)标记,并在两年内于三个地点的六个试验中对四个块茎性状进行了测量。GP预测准确性的范围从块茎数量的0.32到干物质含量的0.77。对于所有性状,使用收缩惩罚的GP模型与进行变量选择的模型之间的差异可以忽略不计。这对于干物质来说令人惊讶,因为只有少数加性标记解释了超过50%的表型变异。当模型中纳入显性效应时,块茎数量的预测准确性从0.35提高到了0.41。全基因组关联研究(GWAS)支持了这一结果,该研究发现加性和显性效应占表型变异的37%,而仅显著的加性效应占14%。对于块茎重量,再生核希尔伯特空间(RKHS)模型在预测准确性上的提升比明确建模上位效应更大。这表明使用半参数RKHS模型可以更有效地捕捉块茎重量的位点间上位效应。我们的结果显示了GP在四倍体马铃薯中的良好应用前景。