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首页> 外文期刊>Journal of Animal Science >Accuracy of genomic prediction using deregressed breeding values estimated from purebred and crossbred offspring phenotypes in pigs
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Accuracy of genomic prediction using deregressed breeding values estimated from purebred and crossbred offspring phenotypes in pigs

机译:使用纯种和杂种杂种后代表型估计的重大育种价值的基因组预测的准确性

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摘要

Genomic selection is applied to dairy cattle breeding to improve the genetic progress of purebred (PB) animals, whereas in pigs and poultry the target is a crossbred (CB) animal for which a different strategy appears to be needed. The source of information used to estimate the breeding values, i.e., using phenotypes of CB or PB animals, may affect the accuracy of prediction. The objective of our study was to assess the direct genomic value (DGV) accuracy of CB and PB pigs using different sources of phenotypic information. Data used were from 3 populations: 2,078 Dutch Landrace-based, 2,301 Large White-based, and 497 crossbreds from an F1 cross between the 2 lines. Two female reproduction traits were analyzed: gestation length (GLE) and total number of piglets born (TNB). Phenotypes used in the analyses originated from offspring of genotyped individuals. Phenotypes collected on CB and PB animals were analyzed as separate traits using a single-trait model. Breeding values were estimated separately for each trait in a pedigree BLUP analysis and subsequently deregressed. Deregressed EBV for each trait originating from different sources (CB or PB offspring) were used to study the accuracy of genomic prediction. Accuracy of prediction was computed as the correlation between DGV and the DEBV of the validation population. Accuracy of prediction within PB populations ranged from 0.43 to 0.62 across GLE and TNB. Accuracies to predict genetic merit of CB animals with one PB population in the training set ranged from 0.12 to 0.28, with the exception of using the CB offspring phenotype of the Dutch Landrace that resulted in an accuracy estimate around 0 for both traits. Accuracies to predict genetic merit of CB animals with both parental PB populations in the training set ranged from 0.17 to 0.30. We conclude that prediction within population and trait had good predictive ability regardless of the trait being the PB or CB performance, whereas using PB population(s) to predict genetic merit of CB animals had zero to moderate predictive ability. We observed that the DGV accuracy of CB animals when training on PB data was greater than or equal to training on CB data. However, when results are corrected for the different levels of reliabilities in the PB and CB training data, we showed that training on CB data does outperform PB data for the prediction of CB genetic merit, indicating that more CB animals should be phenotyped to increase the reliability and, consequently, accuracy of DGV for CB genetic merit.
机译:基因组选择适用于乳制品养殖育种,以改善纯种(PB)动物的遗传进展,而在猪和家禽中,靶是一种杂交(Cb)动物,似乎需要不同的策略。用于估计育种值的信息来源,即使用CB或Pb动物的表型可能影响预测的准确性。我们的研究目的是利用不同的表型信息来评估CB和PB猪的直接基因组值(DGV)精度。使用的数据来自3个群体:2,078个荷兰地拉站,2,301个大量的白色和497个杂交,来自2行之间的F1交叉。分析了两个女性再现性状:妊娠长度(GLE)和出生(TNB)的仔猪总数。用于分析中使用的表型起源于基因分型个体的后代。使用单个特征模型分析CB和Pb动物的表型作为单独的性状分析。在血统到期分析中分别为每个特征分别估计繁殖值,随后取决于“。用于源自不同来源(CB或PB后代)的每个特征的向外EBV用于研究基因组预测的准确性。计算预测的准确性作为DGV与验证群体的Debv之间的相关性。 PB群体中预测的准确性范围为0.43至0.62,在GLE和TNB上。预测训练集中具有一个Pb群体的Cb动物遗传优异的准确性范围为0.12至0.28,除了使用荷兰地板的CB后代表型,可以为两个特征估计约0.预测CB动物的遗传优异,训练集中的父母PB群体的遗传优异范围为0.17至0.30。我们得出结论,无论属于Pb还是Cb性能,人口和特质内的预测具有良好的预测能力,而使用PB群体预测CB动物的遗传优异则具有零至中度预测能力。我们观察到CB动物在PB数据训练时的DGV精度大于或等于CB数据的训练。然而,当PB和CB培训数据中的不同可靠性校正结果时,我们表明CB数据的培训确实表明了CB遗传优异的预测,表明更多CB动物应该表现出来增加可靠性,因此,DGV的CB遗传优异的准确性。

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