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首页> 外文期刊>Genetics, selection, evolution >Accuracy of prediction of simulated polygenic phenotypes and their underlying quantitative trait loci genotypes using real or imputed whole-genome markers in cattle
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Accuracy of prediction of simulated polygenic phenotypes and their underlying quantitative trait loci genotypes using real or imputed whole-genome markers in cattle

机译:使用真实或估算的全基因组标记对牛模拟多基因表型及其潜在数量性状基因座基因型进行预测的准确性

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More accurate genomic predictions are expected when the effects of QTL (quantitative trait loci) are predicted from markers in close physical proximity to the QTL. The objective of this study was to quantify to what extent whole-genome methods using 50 K or imputed 770 K SNPs (single nucleotide polymorphisms) could predict single or multiple QTL genotypes based on SNPs in close proximity to those QTL. Phenotypes with a heritability of 1 were simulated for 2677 Hereford animals genotyped with the BovineSNP50 BeadChip. Genotypes for the high-density 770 K SNP panel were imputed using Beagle software. Various Bayesian regression methods were used to predict single QTL or a trait influenced by 42 such QTL. We quantified to what extent these predictions were based on SNPs in close proximity to the QTL by comparing whole-genome predictions to local predictions based on estimates of the effects of variable numbers of SNPs i.e. ±1, ±2, ±5, ±10, ±50 or ±100 that flanked the QTL. Prediction accuracies based on local SNPs using whole-genome training for single QTL with the 50 K SNP panel and BayesC0 ranged from 0.49 (±1 SNP) to 0.75 (±100 SNPs). The minimum number of local SNPs for an accurate prediction is ±10 SNPs. Prediction accuracies that were based on local SNPs only were higher than those based on whole-genome SNPs for both 50 K and 770 K SNP panels. For the 770 K SNP panel, prediction accuracies were higher than 0.70 and varied little i.e. between 0.73 (±1 SNP) and 0.77 (±5 SNPs). For the summed 42 QTL, prediction accuracies were generally higher than for single QTL regardless of the number of local SNPs. For QTL with low minor allele frequency (MAF) compared to QTL with high MAF, prediction accuracies increased as the number of SNPs around the QTL increased. These results suggest that with both 50 K and imputed 770 K SNP genotypes the level of linkage disequilibrium is sufficient to predict single and multiple QTL. However, prediction accuracies are eroded through spuriously estimated effects of SNPs that are distant from the QTL. Prediction accuracies were higher with the 770 K than with the 50 K SNP panel.
机译:当从与QTL物理距离很近的标记物预测QTL(定量性状基因座)的影响时,可以预期到更准确的基因组预测。这项研究的目的是量化使用50 K或估算的770 K SNP(单核苷酸多态性)的全基因组方法在多大程度上可以基于与那些QTL接近的SNP预测单个或多个QTL基因型。对用BovineSNP50 BeadChip基因分型的2677赫里福德动物模拟了遗传力为1的表型。使用Beagle软件估算了高密度770 K SNP面板的基因型。使用各种贝叶斯回归方法来预测单个QTL或受42个此类QTL影响的性状。通过将全基因组预测与基于可变数目SNP的影响(即±1,±2,±5,±10, QTL两侧为±50或±100。使用50 K SNP面板和BayesC0对单个QTL进行全基因组训练的基于本地SNP的预测准确性范围为0.49(±1 SNP)至0.75(±100 SNP)。准确预测的本地SNP的最小数量为±10个SNP。对于50 K和770 K SNP面板,仅基于本地SNP的预测准确性高于基于全基因组SNP的预测准确性。对于770 K SNP面板,预测精度高于0.70并且变化很小,即在0.73(±1 SNP)和0.77(±5 SNP)之间。对于总计的42个QTL,无论本地SNP数量如何,预测准确性通常都高于单个QTL。对于低等位基因频率(MAF)较低的QTL,与具有较高MAF的QTL相比,预测准确性随着QTL周围SNP数量的增加而增加。这些结果表明,对于50 K和770 K推定的SNP基因型,连锁不平衡水平足以预测单个和多个QTL。但是,通过远离QTL的SNP的虚假估计影响,预测准确性受到侵蚀。 770 K的预测精度高于50 K SNP面板。

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