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330 A hybrid model for genomic selection using prioritized SNPs based on FST scores in the presence of non-genotyped animals

机译:330基因组选择的混合模型使用优先SNP基于FST分数在存在非基型动物的情况下

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摘要

The dramatic advancement in genotyping technology has greatly reduced the complexity and cost of genotyping. The continuous increase in the density of marker panels is resulting in little to no improvement in the accuracy of genomic selection. Direct inversion of the genomic relationship matrix is infeasible for some livestock populations due to the excessive computational cost. In addition, most animals in genetic evaluation programs are non-genotyped. Including these animals in a genomic evaluation requires the imputation of the missing genotypes when using regression methods. To overcome these challenges, a hybrid approach is proposed. This approach fits a subset of SNP markers selected based on FST scores and a classical polygenic effect. The method was first tested using only genotyped animals and then extended to accommodate non-genotyped animals. The proposed approach was evaluated using simulated data for a trait with heritability of 0.1 and 0.4 and weaning weight in a crossbred beef cattle population. When all animals were genotyped, the hybrid approach using only 2.5% of prioritized SNPs exceeded the prediction accuracies of BayesB, BayesC, and GBLUP by more than 7%. When non-genotyped animals were incorporated, the proposed approach significantly outperformed ss-GBLUP method in terms of prediction accuracy under both simulated heritability scenarios. Although the results seem to depend on the genetic complexity of the trait, the proposed approach resulted in higher prediction accuracies than current methods. Furthermore, its computational costs in terms of CPU time and peak memory are substantially lower than the current methods.
机译:基因分型技术的戏剧性进步大大降低了基因分型的复杂性和成本。标记面板密度的连续增加导致基因组选择的准确性没有提高。由于过度计算成本,一些牲畜群体的基因组关系矩阵的直接反演是不可行的。此外,大多数遗传评估程序中的动物是非基因分型的。在基因组评估中包括这些动物需要在使用回归方法时缺失基因型的归档。为了克服这些挑战,提出了一种混合方法。该方法适用于基于FST分数选择的SNP标记的子集和经典的多基因效应。首先使用基因分型动物进行测试,然后延伸以容纳非基因分型动物。通过遗传性的性状评估所提出的方法,以遗传性为0.1和0.4,在杂交牛群中的断奶重量。当所有动物进行基因分型时,使用仅2.5%优先SNP的混合方法超过了Bayesb,Bayesc和Gblup的预测准确性,超过7%。当掺入非基因分型动物时,在模拟遗传性方案下,所提出的方法在预测精度方面显着优于SS-GBLUP方法。虽然结果似乎取决于特征的遗传复杂性,但所提出的方法导致比目前的方法更高的预测准确性。此外,其在CPU时间和峰值存储器方面的计算成本基本上低于当前方法。

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