首页> 外文期刊>Iranian Journal of Applied Animal Science >A Comparison of the Sensitivity of the BayesC and Genomic Best Linear Unbiased Prediction(GBLUP) Methods of Estimating Genomic Breeding Values under Different Quantitative Trait Locus(QTL) Model Assumptions
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A Comparison of the Sensitivity of the BayesC and Genomic Best Linear Unbiased Prediction(GBLUP) Methods of Estimating Genomic Breeding Values under Different Quantitative Trait Locus(QTL) Model Assumptions

机译:不同定量性状基因座(QTL)假设下BayesC和基因组最佳线性无偏预测(GBLUP)估计基因组育种值的敏感性比较

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The objective of this study was to compare the accuracy of estimating and predicting breeding values using two diverse approaches, GBLUP and BayesC, using simulated data under different quantitative trait locus(QTL) effect distributions. Data were simulated with three different distributions for the QTL effect which were uniform, normal and gamma (1.66, 0.4). The number of QTL was assumed to be either 5, 10 or 20. In total, 9 different scenarios were generated to compare the markers estimated breeding values obtained from these scenarios using t-tests. In comparisons between GBLUP and BayesC within different scenarios for a trait of interest, the genomic estimated breeding values produced and the true breeding values in a training set were highly correlated (r>0.80), despite diverse assumptions and distributions. BayesC produced more accurate estimations than GBLUP in most simulated traits. In all scenarios, GBLUP had a consistently high accuracy independent of different distributions of QTL effects and at all numbers of QTL. BayesC produced estimates with higher accuracies in traits influenced by a low number of QTL and with gamma QTL effects distribution. In conclusion, GBLUP and BayesC had persistent high accuracies in all scenarios, although BayesC performed better in traits with low numbers of QTL and a Gamma effect distribution.
机译:这项研究的目的是比较使用两种不同的方法GBLUP和BayesC估算和预测育种值的准确性,并使用不同数量性状基因座(QTL)效应分布下的模拟数据。使用均匀,正态和伽玛(1.66,0.4)的三个不同的QTL分布模拟数据。假定QTL的数量为5、10或20。总共生成了9个不同的场景,以比较使用t检验从这些场景获得的标记估计育种值。在GBLUP和BayesC在不同情况下针对感兴趣的性状进行比较时,尽管假设和分布各不相同,但在训练集中产生的基因组估计育种值与真实育种值高度相关(r> 0.80)。在大多数模拟性状中,BayesC产生的估计比GBLUP更准确。在所有情况下,GBLUP始终具有较高的准确性,而不受QTL效果的不同分布以及所有QTL的影响。 BayesC得出的估计值受较少数量的QTL和伽马QTL效应分布的影响,其性状的准确性较高。总之,尽管BayesC在QTL数量低和Gamma效应分布较低的性状上表现更好,但在所有情况下GBLUP和BayesC的准确性都很高。

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