Biosciences Research Division, Department of Primary Industries, Bundoora, Victoria 3083, Australia.
Genet Sel Evol. 2012 Nov 12;44(1):33. doi: 10.1186/1297-9686-44-33.
Genomic predictions can be applied early in life without impacting selection candidates. This is especially useful for meat quality traits in sheep. Carcass and novel meat quality traits were predicted in a multi-breed sheep population that included Merino, Border Leicester, Polled Dorset and White Suffolk sheep and their crosses.
Prediction of breeding values by best linear unbiased prediction (BLUP) based on pedigree information was compared to prediction based on genomic BLUP (GBLUP) and a Bayesian prediction method (BayesR). Cross-validation of predictions across sire families was used to evaluate the accuracy of predictions based on the correlation of predicted and observed values and the regression of observed on predicted values was used to evaluate bias of methods. Accuracies and regression coefficients were calculated using either phenotypes or adjusted phenotypes as observed variables.
Genomic methods increased the accuracy of predicted breeding values to on average 0.2 across traits (range 0.07 to 0.31), compared to an average accuracy of 0.09 for pedigree-based BLUP. However, for some traits with smaller reference population size, there was no increase in accuracy or it was small. No clear differences in accuracy were observed between GBLUP and BayesR. The regression of phenotypes on breeding values was close to 1 for all methods, indicating little bias, except for GBLUP and adjusted phenotypes (regression = 0.78). Accuracies calculated with adjusted (for fixed effects) phenotypes were less variable than accuracies based on unadjusted phenotypes, indicating that fixed effects influence the latter. Increasing the reference population size increased accuracy, indicating that adding more records will be beneficial. For the Merino, Polled Dorset and White Suffolk breeds, accuracies were greater than for the Border Leicester breed due to the smaller sample size and limited across-breed prediction. BayesR detected only a few large marker effects but one region on chromosome 6 was associated with large effects for several traits. Cross-validation produced very similar variability of accuracy and regression coefficients for BLUP, GBLUP and BayesR, showing that this variability is not a property of genomic methods alone. Our results show that genomic selection for novel difficult-to-measure traits is a feasible strategy to achieve increased genetic gain.
基因组预测可以在生命早期应用,而不会影响选择对象。这对于绵羊的肉质性状尤其有用。本研究在一个包含美利奴羊、边境莱斯特羊、无角道赛特羊和白萨福克羊及其杂交后代的多品种绵羊群体中,预测了胴体和新型肉质性状。
基于系谱信息的最佳线性无偏预测(BLUP)与基于基因组的 BLUP(GBLUP)和贝叶斯预测方法(BayesR)的预测进行了比较。通过跨 sire 家族的预测交叉验证来评估基于预测值与观察值的相关性的预测准确性,以及观察值对预测值的回归来评估方法的偏差。使用表型或调整后的表型作为观察变量来计算准确性和回归系数。
与基于系谱的 BLUP 的平均准确性为 0.09 相比,基因组方法将预测的育种值的准确性平均提高到 0.2(范围为 0.07 至 0.31)。然而,对于某些参考群体规模较小的性状,准确性没有提高或提高幅度很小。GBLUP 和 BayesR 之间没有观察到准确性的明显差异。所有方法的表型对育种值的回归都接近 1,表明偏差较小,除了 GBLUP 和调整后的表型(回归=0.78)。用调整后的(固定效应)表型计算的准确性比基于未调整表型的准确性变化更小,这表明固定效应会影响后者。增加参考群体大小可以提高准确性,这表明增加更多记录将是有益的。对于美利奴羊、无角道赛特羊和白萨福克羊,由于样本量较小且跨品种预测有限,准确性高于边境莱斯特羊。BayesR 只检测到少数几个大的标记效应,但在第 6 号染色体上的一个区域与几个性状的大效应相关。交叉验证为 BLUP、GBLUP 和 BayesR 产生了非常相似的准确性和回归系数的变异性,这表明这种变异性不是基因组方法所独有的。我们的研究结果表明,对新型难以测量的性状进行基因组选择是实现遗传增益增加的可行策略。