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首页> 外文期刊>Molecular Breeding >On the accuracy of genomic prediction models considering multi-trait and allele dosage in Urochloa spp. interspecific tetraploid hybrids
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On the accuracy of genomic prediction models considering multi-trait and allele dosage in Urochloa spp. interspecific tetraploid hybrids

机译:关于考虑丙藻菌SPP多特征和等位基因的基因组预测模型的准确性。 间隙的四倍体杂种

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摘要

Currently, there is a lack of information regarding the employment of genomic prediction in tropical forages when compared to other crops and temperate forages. Moreover, genomic prediction models have been extensively developed for diploid species, whereas to apply those to polyploids most studies consider the genotypic information parametrized for diploids. This simplification can reduce the accuracy to estimate genetic effects and, consequently, the genomic breeding values. Another challenge is that agronomical and nutritional traits in forages frequently are negatively correlated and may have low heritability. To circumvent those problems one attractive alternative is the use of multi-trait prediction models. Therefore, we compared the impact of the ploidy parametrization over the prediction accuracy of agronomical and nutritional traits in Urochloa spp. hybrids using single and multi-trait models. GBLUP-A (additive) and GBLUP-AD (additive + dominance) showed similar prediction abilities in both single and multi-trait models. Conversely, combining GBLUP-AD and tetraploid information may improve the selection coincidence. Furthermore, the multi-trait Validation Scheme2, where one trait is not evaluated for some individuals, can provide an increment of up to 30% of prediction ability. Therefore, it is an excellent strategy for traits with low heritability. Overall, all genomic selection models provided greater genetic gains than phenotypic selection. Similarly, the allele dosage associated with additive, dominance, and multi-trait factors increased the accuracy of genomic prediction models for interspecific polyploid hybrids. Finally, genomic prediction should be used in tropical forages breeding programs in order to reduce time.
机译:目前,与其他作物和温带饲料相比,缺乏有关热带饲料中基因组预测的基因组预测的信息。此外,基因组预测模型已广泛开发用于二倍体物种,而大多数研究将这些研究应用于多倍体的基因型信息。这种简化可以降低估计遗传效应的准确性,并且因此,基因组育种值。另一个挑战是,饲料中的农艺和营养特征经常具有负相关性,并且可遗传性低。为了规避这些问题,有吸引力的替代方案是使用多特征预测模型。因此,我们将倍增性参数化的影响与Urochloa SPP农艺和营养性状的预测准确性进行了比较。使用单个和多特征模型的杂种。 GBLUP-A(添加剂)和GBLUP-AD(添加剂+优势)在单一和多特征模型中显示出类似的预测能力。相反,结合GBLUP-AD和四倍体信息可以改善选择巧合。此外,多特征验证方案2,其中一个特征不适用于某些个体,可以提供高达30%的预测能力的增量。因此,它是具有低遗传性的特征的优秀策略。总体而言,所有基因组选择模型提供比表型选择更大的遗传增益。类似地,与添加剂,优势和多特征因子相关的等位基因剂量增加了种子化多倍体杂种基因组预测模型的准确性。最后,基因组预测应用于热带饲料育种计划,以减少时间。

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