Department of Animal Breeding and Genetics, Swedish University of Agricultural Sciences, PO Box 7023, S-75007 Uppsala, Sweden.
J Dairy Sci. 2010 Dec;93(12):5930-41. doi: 10.3168/jds.2010-3301.
The objectives of this study were (1) to explore traits that better capture weekly or monthly changes in somatic cell counts (SCC) than does the commonly used lactation-average SCC, (2) to estimate their heritabilities and relationships to clinical mastitis (CM), and (3) to determine if these traits are feasible for use in monthly testing schemes. Clinical mastitis and weekly test-day (TD) records of SCC and milk production traits from 1,006 lactations of Swedish Red and Holstein cows collected from 1989 to 2004 were used (data set W). A data subset was also created to mimic monthly recording (data set M, 980 lactations). Twenty SCC traits were defined, taking into account SCC general levels and variation along the lactation curve, time and level of infection, and time of recovery. To reduce dimensionality, cluster and stepwise logistic regression procedures were applied. In data set W, 3 traits, "standard deviation of SCC over the lactation," a discrete (0/1) indicator of "at least one TD with SCC >500,000 cells/mL", and "number of days sick in the widest SCC peak" (DWidest) were the variables kept both with cluster procedures and a stepwise logistic regression with the logit of CM as dependent variable. In data set M, DWidest was replaced by "number of SCC peaks" and "average number of days sick per peak" (ADSick). Lactation-average SCC (in the first 150 d or between 150 and 305 d) did not enter into the logistic regression. Heritability estimates obtained for these new traits under a Bayesian setting and a Gibbs sampling approach were 10 to 16% (except for ADSick: 5%). Heritabilities were at least as high in the monthly data set as in the weekly data set. Thus, these SCC traits seem promising for use in breeding programs based on monthly milk recording.
(1)探索比常用泌乳期平均体细胞计数(SCC)更好地捕捉每周或每月 SCC 变化的特征;(2)估计它们的遗传力及其与临床乳腺炎(CM)的关系;(3)确定这些特征是否可用于每月测试方案。本研究使用了 1989 年至 2004 年间收集的瑞典红牛和荷斯坦奶牛的 1006 个泌乳期的临床乳腺炎和每周测试日(TD)SCC 和产奶性状记录(数据集 W)。还创建了一个数据子集来模拟每月记录(数据集 M,980 个泌乳期)。考虑到 SCC 的一般水平和沿泌乳曲线的变化、感染的时间和水平以及恢复的时间,定义了 20 个 SCC 特征。为了降低维度,应用了聚类和逐步逻辑回归程序。在数据集 W 中,“泌乳期 SCC 的标准差”、“至少有一个 TD 的 SCC >500,000 个细胞/mL”的离散(0/1)指标和“最宽 SCC 峰中患病的天数”(DWidest)这 3 个特征通过聚类程序和以 CM 的对数为因变量的逐步逻辑回归得以保留。在数据集 M 中,DWidest 被“SCC 峰数”和“每个峰患病的平均天数”(ADSick)所取代。泌乳期平均 SCC(在第 150 天之前或在 150 天至 305 天之间)未进入逻辑回归。在贝叶斯设置和 Gibbs 抽样方法下,这些新特征的遗传力估计值为 10%至 16%(除了 ADSick:5%)。这些 SCC 特征在月度数据集中的遗传力至少与在每周数据集中一样高。因此,这些 SCC 特征似乎很有希望用于基于每月牛奶记录的育种计划。