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Genomic prediction of simulated multibreed and purebred performance using observed fifty thousand single nucleotide polymorphism genotypes1

机译:使用观察到的五万个单核苷酸多态性基因型预测模拟多品种和纯种性能的基因组预测1

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摘要

Genomic prediction involves characterization of chromosome fragments in a training population to predict merit. Confidence in the predictions relies on their evaluation in a validation population. Many commercial animals are multibreed (MB) or crossbred, but seedstock populations tend to be purebred (PB). Training in MB allows selection of PB for crossbred performance. Training in PB to predict MB performance quantifies the potential for across-breed genomic prediction. Efficiency of genomic selection was evaluated for a trait with heritability 0.5 simulated using actual SNP genotypes. The PB population had 1,086 Angus animals, and the MB population had 924 individuals from 8 sire breeds. Phenotypic values were simulated for scenarios including 50, 100, 250, or 500 additive QTL randomly selected from 50K SNP panels. Panels containing various numbers of SNP, including or excluding the QTL, were used in the analysis. A Bayesian model averaging method was used to simultaneously estimate the effects of all markers on the panels in MB (or PB) training populations. Estimated effects were utilized to predict genomic merit of animals in PB (or MB) validation populations. Correlations between predicted and simulated genomic merit in the validation population was used to reflect predictive ability. Panels that included QTL were able to account for 50% or more of the within-breed genetic variance when the trait was influenced by 50 QTL. The predictive power eroded as the number of QTL increased. Panels that composed the QTL and no other markers were able to account for 50% or more genetic variance even with 500 QTL. Panels that included genomic markers as well as QTL had less predictive power as the number of markers on the panel was increased. Panels that excluded the QTL and relied on markers in linkage disequilibrium (LD) to predict QTL effects performed more poorly than marker panels with QTL. Real-life situations with 50K panels that excluded the QTL could account for no more than 20% genetic variation for 50 QTL and less than 10% for 500 QTL. The difference between panels that included and excluded QTL indicates that the predictive ability of existing panels is limited by their LD. Training in PB to predict MB tended to be more predictive than training in MB to predict PB due to greater average levels of LD in PB than in MB populations. Improved across breed prediction of genomic merit will require panels with more than 50,000 markers. [PUBLICATION ABSTRACT]
机译:基因组预测涉及表征训练群体中的染色体片段以预测优点。对预测的信心取决于对验证人群的评估。许多商业动物是多品种(MB)或杂种,但种子种群往往是纯种(PB)。 MB训练允许选择PB来提高杂交性能。进行PB训练以预测MB性能可量化杂交基因组预测的潜力。使用实际的SNP基因型评估遗传性0.5的性状,评估基因组选择的效率。 PB种群有1086只安格斯动物,MB种群有924个来自8个父系品种的个体。针对包括从50K SNP面板中随机选择的50、100、250或500个附加QTL的场景模拟了表型值。分析中使用了包含各种SNP(包括或不包括QTL)的面板。使用贝叶斯模型平均法来同时估计MB(或PB)训练人群中所有标记物对面板的影响。利用估计的效应来预测PB(或MB)验证种群中动物的基因组价值。验证人群中预测和模拟基因组价值之间的相关性被用来反映预测能力。当性状受50个QTL影响时,包括QTL的研究小组能够解决该品种内遗传变异的50%或更多。随着QTL数量的增加,预测能力逐渐下降。即使只有500个QTL,组成QTL且没有其他标记的小组也能解释50%或更多的遗传变异。随着基因组标记物数量的增加,包括基因组标记物和QTL的基因组的预测能力较弱。排除QTL并依靠连锁不平衡(LD)标记的小组预测QTL的效果比带有QTL的标记小组差。包含QTL的50K面板的实际情况可能导致50 QTL的遗传变异不超过20%,而500 QTL的遗传变异不到10%。包含和不包含QTL的专家组之间的差异表明,现有专家组的预测能力受到其LD的限制。 PB中预测MB的培训比MB中预测PB的培训更具预测性,因为PB中LD的平均水平高于MB人群。跨品种的基因组价值预测的改进将需要具有超过50,000个标记的标本。 [出版物摘要]

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