Aspilcueta-Borquis R R, Di Palo R, Araujo Neto F R, Baldi F, de Camargo G M F, de Albuquerque L G, Zicarelli L, Tonhati H
Departamento de Zootecnia, Faculdade de Ciências Agrárias e Veterinárias, Universidade Estadual Paulista, Jaboticabal, São Paulo, SP, Brasil.
Genet Mol Res. 2010 Aug 24;9(3):1636-44. doi: 10.4238/vol9-3gmr846.
Buffalo milk has excellent physical and chemical qualities as a consequence of the high percentage of constituents. This milk property is desirable for the dairy industry because it facilitates manufacture of mozzarella cheese. We estimated genetic parameters for milk yield, milk fat and protein and their effects on mozzarella cheese production using Bayesian inference. Using information from 4907 lactation records of buffaloes, genetic and non-genetic parameters were estimated for accumulated 305-day milk yield (MY), milk fat (%F) and protein (%P) percentages and mozzarella production per lactation (MP). The (co)variance components were obtained by Bayesian inference using a multiple trait model, which included as fixed effects contemporary group, milking number and buffalo age at calving as covariables (linear and quadratic), along with the additive genetic, permanent environmental and residual random effects. Mean a posteriori heritability distributions for MY, %F, %P, and MP were 0.25, 0.30, 0.38, and 0.23, respectively. The genetic correlation estimates between MY with %P and %F were negative and moderate. Positive genetic correlation estimates varying from 0.19 (%P/MP) to 0.95 (MY/MP) were obtained among the traits. Milk yield, milk components, and mozzarella production in Murrah buffaloes have enough genetic variation for selection purposes. We conclude that selection to increase milk yield would be effective in improving mozzarella production.
由于成分比例高,水牛奶具有优异的物理和化学品质。这种牛奶特性对乳制品行业很有吸引力,因为它便于制作马苏里拉奶酪。我们使用贝叶斯推理估计了产奶量、乳脂肪和蛋白质的遗传参数及其对马苏里拉奶酪生产的影响。利用4907条水牛泌乳记录的信息,对累积305天产奶量(MY)、乳脂肪(%F)和蛋白质(%P)百分比以及每次泌乳的马苏里拉奶酪产量(MP)的遗传和非遗传参数进行了估计。通过使用多性状模型的贝叶斯推理获得(协)方差分量,该模型包括作为固定效应的当代组、挤奶次数和产犊时水牛年龄作为协变量(线性和二次),以及加性遗传、永久环境和残余随机效应。MY、%F、%P和MP的平均后验遗传力分布分别为0.25、0.30、0.38和0.23。MY与%P和%F之间的遗传相关估计为负且中等。各性状间获得的正遗传相关估计值从0.19(%P/MP)到0.95(MY/MP)不等。穆拉水牛的产奶量、乳成分和马苏里拉奶酪产量具有足够的遗传变异可供选择。我们得出结论,选择提高产奶量将有效提高马苏里拉奶酪的产量。