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Improved precision of QTL mapping using a nonlinear Bayesian method in a multi-breed population leads to greater accuracy of across-breed genomic predictions

机译:使用非线性贝叶斯方法在多育种种群中提高QTL映射的精度可提高杂交基因组预测的准确性

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Genomic selection is increasingly widely practised, particularly in dairy cattle. However, the accuracy of current predictions using GBLUP (genomic best linear unbiased prediction) decays rapidly across generations, and also as selection candidates become less related to the reference population. This is likely caused by the effects of causative mutations being dispersed across many SNPs (single nucleotide polymorphisms) that span large genomic intervals. In this paper, we hypothesise that the use of a nonlinear method (BayesR), combined with a multi-breed (Holstein/Jersey) reference population will map causative mutations with more precision than GBLUP and this, in turn, will increase the accuracy of genomic predictions for selection candidates that are less related to the reference animals. BayesR improved the across-breed prediction accuracy for Australian Red dairy cattle for five milk yield and composition traits by an average of 7% over the GBLUP approach (Australian Red animals were not included in the reference population). Using the multi-breed reference population with BayesR improved accuracy of prediction in Australian Red cattle by 2 – 5% compared to using BayesR with a single breed reference population. Inclusion of 8478 Holstein and 3917 Jersey cows in the reference population improved accuracy of predictions for these breeds by 4 and 5%. However, predictions for Holstein and Jersey cattle were similar using within-breed and multi-breed reference populations. We propose that the improvement in across-breed prediction achieved by BayesR with the multi-breed reference population is due to more precise mapping of quantitative trait loci (QTL), which was demonstrated for several regions. New candidate genes with functional links to milk synthesis were identified using differential gene expression in the mammary gland. QTL detection and genomic prediction are usually considered independently but persistence of genomic prediction accuracies across breeds requires accurate estimation of QTL effects. We show that accuracy of across-breed genomic predictions was higher with BayesR than with GBLUP and that BayesR mapped QTL more precisely. Further improvements of across-breed accuracy of genomic predictions and QTL mapping could be achieved by increasing the size of the reference population, including more breeds, and possibly by exploiting pleiotropic effects to improve mapping efficiency for QTL with small effects.
机译:基因组选择越来越广泛地被实践,特别是在奶牛中。但是,使用GBLUP(基因组最佳线性无偏预测)的当前预测的精度在各个代之间迅速下降,而且随着选择候选对象与参考群体的联系越来越少。这可能是由于致病性突变分散在跨越较大基因组间隔的许多SNP(单核苷酸多态性)中造成的。在本文中,我们假设非线性方法(BayesR)与多品种(Holstein / Jersey)参考群体的结合使用将比GBLUP更加精确地绘制致病突变,这反过来将提高准确率。与参考动物关系不大的选择候选者的基因组预测。与GBLUP方法相比,BayesR将五个奶产量和组成特征的澳大利亚红奶牛的杂交预测准确度平均提高了7%(参考人群中不包括澳大利亚红动物)。与使用BayesR和单一品种参考种群相比,将多品种参考种群与BayesR结合使用可使澳大利亚红牛的预测准确性提高2 – 5%。在参考种群中包括8478荷斯坦奶牛和3917泽西奶牛,这些品种的预测准确性提高了4%和5%。然而,使用内部和多品种参考种群对荷斯坦和泽西牛的预测相似。我们认为,通过BayesR与多品种参考种群实现的杂交预测的改进是由于定量性状基因座(QTL)更精确的映射所致,这已在多个地区得到证实。使用差异基因在乳腺中的表达,鉴定了与牛奶合成功能相关的新候选基因。通常独立考虑QTL检测和基因组预测,但是跨品种的基因组预测准确性的持久性需要对QTL效果的准确估计。我们显示,使用BayesR进行的杂交基因组预测的准确性高于使用GBLUP进行的预测,并且BayesR映射的QTL更精确。通过增加包括更多品种在内的参考种群的规模,并可能通过利用多效效应来提高QTL的作图效率,而进一步提高基因组预测和QTL作图的跨谱准确性。

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