Department of Comparative Biomedicine and Food Science (BCA), University of Padova, Viale dell'Università 16, 35020, Legnaro, Italy.
Italian Simmental Cattle Breeders Association (ANAPRI), Via Nievo 19, 33100, Udine, Italy.
J Dairy Sci. 2017 Jul;100(7):5526-5540. doi: 10.3168/jds.2016-11667. Epub 2017 May 4.
The objectives of this study were to estimate, for the Italian Simmental cattle population, genetic parameters for 92 traits and their infrared predictions (IP) and to investigate the genetic relationship between measured traits (MT) and IP. Data for milk fat fatty acid composition (n = 1,040), detailed protein composition (n = 3,337), lactoferrin (n = 558), pH (n = 3,438), coagulation properties (n = 3,266), curd yield and composition obtained by a micro-cheese making procedure (n = 1,177), and content of Ca, P, Mg, and K (n = 689) were obtained using reference laboratory analysis. Infrared prediction for all the investigated traits was performed using 143,198 spectra records belonging to 17,619 Italian Simmental cows. (Co)variance components for MT and their IP were estimated in a set of bivariate animal model REML analyses and genetic correlations between MT and IP were estimated using all IP obtained at the population level. A significant positive relationship was observed between the coefficient of determination of the infrared prediction models and the phenotypic and genetic variation of the IP. The decrease in the estimated genetic variance of IP compared with MT was on average 64%. For traits exhibiting calibration models with coefficients of determination in cross-validation (R) greater than 0.9, the decrease in the genetic variance ranged from approximately 20 to 50%. Most traits (88 out of 92) exhibited lower heritability estimates for IP than for the corresponding MT. The estimated genetic correlations between IP and MT (r) were in general very high. A positive relationship (r = 0.57) between R of calibration models and the estimated r has been detected. For calibration models exhibiting R higher than 0.75, r were greater than 0.9. The variability in the estimated correlations increased when R decreased, and for calibration models of moderate predictive ability, estimates of r ranged from 0.2 to 1. Genetic parameter estimates suggested that IP can be used as indicator traits in breeding programs for the enhancement of fine composition and technological properties of milk. The genetic gain achievable selecting for IP is expected to be high for fatty acid composition, minerals, and for technological properties of milk, whereas it will be low for casein and whey protein composition and for the content of lactoferrin.
本研究的目的是估计意大利西门塔尔牛群体中 92 个性状的遗传参数及其红外预测值(IP),并研究测量性状(MT)和 IP 之间的遗传关系。数据来自乳脂脂肪酸组成(n=1040)、详细蛋白质组成(n=3337)、乳铁蛋白(n=558)、pH 值(n=3438)、凝结特性(n=3266)、通过微型奶酪制作程序获得的凝乳产量和组成(n=1177),以及 Ca、P、Mg 和 K 的含量(n=689)是使用参考实验室分析获得的。使用属于 17619 头意大利西门塔尔牛的 143198 个光谱记录,对所有研究性状进行了红外预测。在一套二元动物模型 REML 分析中,估计了 MT 和它们的 IP 的方差分量,并使用群体水平上获得的所有 IP 估计了 MT 和 IP 之间的遗传相关性。观察到红外预测模型的决定系数与 IP 的表型和遗传变异之间存在显著的正相关关系。与 MT 相比,IP 的遗传方差估计值的减少平均为 64%。对于在交叉验证中决定系数(R)大于 0.9 的校准模型的性状,遗传方差的减少范围约为 20%至 50%。大多数性状(92 个中的 88 个)的 IP 遗传力估计值低于相应的 MT。IP 和 MT 之间的遗传相关性(r)估计值通常非常高。检测到校准模型的 R 与估计 r 之间存在正相关关系(r=0.57)。对于 R 高于 0.75 的校准模型,r 大于 0.9。当 R 降低时,估计相关性的变异性增加,对于预测能力中等的校准模型,r 的估计值范围为 0.2 到 1。遗传参数估计表明,IP 可作为提高牛奶精细成分和技术特性的选择指标。选择 IP 可实现的遗传增益预计将在脂肪酸组成、矿物质和牛奶技术特性方面较高,而在酪蛋白和乳清蛋白组成以及乳铁蛋白含量方面则较低。