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丹麦长白猪降低公猪膻味的基因组预测效率

Efficiency of genomic prediction for boar taint reduction in Danish Landrace pigs.

作者信息

Lukić B, Pong-Wong R, Rowe S J, de Koning D J, Velander I, Haley C S, Archibald A L, Woolliams J A

机构信息

Faculty of Agriculture in Osijek, J.J. Strossmayer University of Osijek, Kralja Petra Svačića 1d, 31000, Osijek, Croatia.

The Roslin Institute and R(D)SVS, University of Edinburgh, Easter Bush, Midlothian, EH25 9RG, UK.

出版信息

Anim Genet. 2015 Dec;46(6):607-16. doi: 10.1111/age.12369. Epub 2015 Oct 9.

Abstract

Genetic selection against boar taint, which is caused by high skatole and androstenone concentrations in fat, is a more acceptable alternative than is the current practice of castration. Genomic predictors offer an opportunity to overcome the limitations of such selection caused by the phenotype being expressed only in males at slaughter, and this study evaluated different approaches to obtain such predictors. Samples from 1000 pigs were included in a design which was dominated by 421 sib pairs, each pair having one animal with high and one with low skatole concentration (≥0.3 μg/g). All samples were measured for both skatole and androstenone and genotyped using the Illumina SNP60 porcine BeadChip for 62 153 single nucleotide polymorphisms. The accuracy of predicting phenotypes was assessed by cross-validation using six different genomic evaluation methods: genomic best linear unbiased prediction (GBLUP) and five Bayesian regression methods. In addition, this was compared to the accuracy of predictions using only QTL that showed genome-wide significance. The range of accuracies obtained by different prediction methods was narrow for androstenone, between 0.29 (Bayes Lasso) and 0.31 (Bayes B), and wider for skatole, between 0.21 (GBLUP) and 0.26 (Bayes SSVS). Relative accuracies, corrected for h(2) , were 0.54-0.56 and 0.75-0.94 for androstenone and skatole respectively. The whole-genome evaluation methods gave greater accuracy than using only the QTL detected in the data. The results demonstrate that GBLUP for androstenone is the simplest genomic technology to implement and was also close to the most accurate method. More specialised models may be preferable for skatole.

摘要

针对公猪膻味的基因选择是一种比目前阉割做法更可接受的选择,公猪膻味是由脂肪中高浓度的粪臭素和雄烯酮引起的。基因组预测因子为克服此类选择的局限性提供了机会,因为这种选择的表型仅在屠宰时的雄性中表达,本研究评估了获得此类预测因子的不同方法。来自1000头猪的样本被纳入一项设计中,该设计以421对同胞对为主,每对中有一头动物的粪臭素浓度高,另一头浓度低(≥0.3μg/g)。所有样本都测量了粪臭素和雄烯酮,并使用Illumina SNP60猪基因芯片对62153个单核苷酸多态性进行基因分型。使用六种不同的基因组评估方法通过交叉验证评估预测表型的准确性:基因组最佳线性无偏预测(GBLUP)和五种贝叶斯回归方法。此外,将其与仅使用显示全基因组显著性的QTL的预测准确性进行比较。不同预测方法获得的准确性范围对于雄烯酮较窄,在0.29(贝叶斯套索法)和0.31(贝叶斯B法)之间,对于粪臭素较宽,在0.21(GBLUP)和0.26(贝叶斯SSVS)之间。经h(2)校正后的相对准确性,雄烯酮为0.54 - 0.56,粪臭素为0.75 - 0.94。全基因组评估方法比仅使用数据中检测到的QTL具有更高的准确性。结果表明,用于雄烯酮的GBLUP是实施起来最简单的基因组技术,并且也接近最准确的方法。对于粪臭素,更专门的模型可能更可取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/245f/4949655/ec628fa77151/AGE-46-607-g001.jpg

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