Dipartimento di Agraria, University of Sassari, Viale Italia 39, 07100 Sassari, Italy.
Dipartimento di Agraria, University of Sassari, Viale Italia 39, 07100 Sassari, Italy.
J Dairy Sci. 2019 Apr;102(4):3189-3203. doi: 10.3168/jds.2018-15333. Epub 2019 Feb 22.
Fatty acid (FA) composition is one of the most important aspects of milk nutritional quality. However, the inclusion of this trait as a breeding goal for dairy species is hampered by the logistics and high costs of phenotype recording. Fourier-transform infrared spectroscopy (FTIR) is a valid and cheap alternative to laboratory gas chromatography (GC) for predicting milk FA composition. Moreover, as for other novel phenotypes, the efficiency of selection for these traits can be enhanced by using genomic data. The objective of this research was to compare traditional versus genomic selection approaches for estimating genetic parameters and breeding values of milk fatty acid composition in dairy sheep using either GC-measured or FTIR-predicted FA as phenotypes. Milk FA profiles were available for a total of 923 Sarda breed ewes. The youngest 100 had their own phenotype masked to mimic selection candidates. Pedigree relationship information and genotypes were available for 923 and 769 ewes, respectively. Three statistical approaches were used: the classical-pedigree-based BLUP, the genomic BLUP that considers the genomic relationship matrix G, and the single-step genomic BLUP (ssGBLUP) where pedigree and genomic relationship matrices are blended into a single H matrix. Heritability estimates using pedigree were lower than ssGBLUP, and very similar between GC and FTIR regarding the statistical approach used. For some FA, mostly associated with animal diet (i.e., C18:2n-6, C18:3n-3), random effect of combination of flock and test date explained a relevant quota of total variance, reducing the heritability estimates accordingly. Genomic approaches (genomic BLUP and ssGBLUP) outperformed the traditional pedigree method both for GC and FTIR FA. Prediction accuracies in the older cohort were larger than the young cohort. Genomic prediction accuracies (obtained using either G or H relationship matrix) in the young cohort of animals, where their own phenotypes were masked, were similar for GC and FTIR. Multiple-trait analysis slightly affected genomic breeding value accuracies. These results suggest that FTIR-predicted milk FA composition could represent a valid option for inclusion in breeding programs.
脂肪酸(FA)组成是牛奶营养质量最重要的方面之一。然而,由于表型记录的物流和高成本,将这一特征纳入奶牛品种的选育目标受到了阻碍。傅里叶变换红外光谱(FTIR)是一种替代实验室气相色谱(GC)的有效且廉价的方法,可用于预测牛奶 FA 组成。此外,对于其他新型表型,使用基因组数据可以提高对这些性状的选择效率。本研究的目的是比较传统选择和基因组选择方法,以使用 GC 测量或 FTIR 预测的 FA 作为表型,估计奶绵羊牛奶脂肪酸组成的遗传参数和育种值。共有 923 只萨达品种母羊的牛奶 FA 图谱。最年轻的 100 只母羊的表型被掩盖,以模拟选择候选者。分别为 923 只和 769 只母羊提供了系谱关系信息和基因型。使用了三种统计方法:基于经典系谱的 BLUP、考虑基因组关系矩阵 G 的基因组 BLUP 和将系谱和基因组关系矩阵融合到单个 H 矩阵中的单步基因组 BLUP(ssGBLUP)。使用系谱的遗传力估计值低于 ssGBLUP,并且使用的统计方法与 GC 和 FTIR 非常相似。对于一些 FA,主要与动物饮食有关(即 C18:2n-6、C18:3n-3),群体和测试日期的组合随机效应解释了总方差的一个相关份额,从而相应降低了遗传力估计值。在 GC 和 FTIR FA 中,基因组方法(基因组 BLUP 和 ssGBLUP)都优于传统的系谱方法。在较老的群体中,预测精度大于年轻群体。在动物的年轻群体中,使用 G 或 H 关系矩阵获得的基因组预测精度在 GC 和 FTIR 中相似,在该群体中,它们自己的表型被掩盖。多性状分析对基因组育种值的准确性有轻微影响。这些结果表明,FTIR 预测的牛奶 FA 组成可以作为纳入育种计划的有效选择。