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Comparison of whole-genome prediction models for traits with contrasting genetic architecture in a diversity panel of maize inbred lines

机译:玉米自交系多样性研究中性状全基因组预测模型与遗传结构对比的比较

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Background There is increasing empirical evidence that whole-genome prediction (WGP) is a powerful tool for predicting line and hybrid performance in maize. However, there is a lack of knowledge about the sensitivity of WGP models towards the genetic architecture of the trait. Whereas previous studies exclusively focused on highly polygenic traits, important agronomic traits such as disease resistances, nutrifunctional or climate adaptational traits have a genetic architecture which is either much less complex or unknown. For such cases, information about model robustness and guidelines for model selection are lacking. Here, we compared five WGP models with different assumptions about the distribution of the underlying genetic effects. As contrasting model traits, we chose three highly polygenic agronomic traits and three metabolites each with a major QTL explaining 22 to 30% of the genetic variance in a panel of 289 diverse maize inbred lines genotyped with 56,110 SNPs. Results We found the five WGP models to be remarkable robust towards trait architecture with the largest differences in prediction accuracies ranging between 0.05 and 0.14 for the same trait, most likely as the result of the high level of linkage disequilibrium prevailing in elite maize germplasm. Whereas RR-BLUP performed best for the agronomic traits, it was inferior to LASSO or elastic net for the three metabolites. We found the approach of genome partitioning of genetic variance, first applied in human genetics, as useful in guiding the breeder which model to choose, if prior knowledge of the trait architecture is lacking. Conclusions Our results suggest that in diverse germplasm of elite maize inbred lines with a high level of LD, WGP models differ only slightly in their accuracies, irrespective of the number and effects of QTL found in previous linkage or association mapping studies. However, small gains in prediction accuracies can be achieved if the WGP model is selected according to the genetic architecture of the trait. If the trait architecture is unknown e.g. for novel traits which only recently received attention in breeding, we suggest to inspect the distribution of the genetic variance explained by each chromosome for guiding model selection in WGP.
机译:背景技术越来越多的经验证据表明,全基因组预测(WGP)是预测玉米品系和杂种表现的有力工具。但是,缺乏关于WGP模型对性状遗传结构敏感性的知识。以前的研究只关注高度多基因性状,而重要的农艺性状(如抗病性,营养功能或气候适应性状)的遗传结构则要复杂得多或未知。对于此类情况,缺少有关模型鲁棒性和模型选择指南的信息。在这里,我们比较了五种WGP模型,它们对潜在遗传效应的分布有不同的假设。作为对比的模型性状,我们选择了三个高度多基因的农艺性状和三个具有主要QTL的代谢物,这些基因组解释了289个由56,110个SNP基因型组成的玉米近交系,其遗传变异的22%至30%。结果我们发现这五个WGP模型对性状结构具有显着的鲁棒性,同一性状的预测准确度差异最大,介于0.05和0.14之间,最可能的原因是在优良玉米种质中普遍存在高水平的连锁不平衡。 RR-BLUP在农艺性状上表现最好,但在三种代谢物上却不如LASSO或弹性网。我们发现,遗传变异的基因组划分方法首先用于人类遗传学,如果缺乏对性状结构的先验知识,则可以指导育种者选择哪种模型。结论我们的结果表明,在高水平LD的优良玉米自交系的不同种质中,WGP模型的准确度仅略有不同,而与先前的连锁或关联作图研究中发现的QTL的数量和作用无关。但是,如果根据性状的遗传结构选择WGP模型,则可以提高预测准确性。如果特征架构未知,例如对于刚刚在育种中受到关注的新性状,我们建议检查每个染色体解释的遗传变异的分布,以指导WGP的模型选择。

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