Carabaño M J, Bachagha K, Ramón M, Díaz C
Departamento de Mejora Genética Animal, Instituto Nacional de Investigación y Tecnología Agraria y Alimentaria (INIA), Madrid 28040, Spain.
Departamento de Mejora Genética Animal, Instituto Nacional de Investigación y Tecnología Agraria y Alimentaria (INIA), Madrid 28040, Spain.
J Dairy Sci. 2014 Dec;97(12):7889-904. doi: 10.3168/jds.2014-8023. Epub 2014 Sep 26.
Data from milk recording of Holstein-Friesian cows together with weather information from 2 regions in Southern Spain were used to define the models that can better describe heat stress response for production traits and somatic cell score (SCS). Two sets of analyses were performed, one aimed at defining the population phenotypic response and the other at studying the genetic components. The first involved 2,514,762 test-day records from up to 5 lactations of 128,112 cows. Two models, one fitting a comfort threshold for temperature and a slope of decay after the threshold, and the other a cubic Legendre polynomial (LP) model were tested. Average (TAVE) and maximum daily temperatures were alternatively considered as covariates. The LP model using TAVE as covariate showed the best goodness of fit for all traits. Estimated rates of decay from this model for production at 25 and 34°C were 36 and 170, 3.8 and 3.0, and 3.9 and 8.2g/d per degree Celsius for milk, fat, and protein yield, respectively. In the second set of analyses, a sample of 280,958 test-day records from first lactations of 29,114 cows was used. Random regression models including quadratic or cubic LP regressions (TEM_) on TAVE or a fixed threshold and an unknown slope (DUMMY), including or not cubic regressions on days in milk (DIM3_), were tested. For milk and SCS, the best models were the DIM3_ models. In contrast, for fat and protein yield, the best model was TEM3. The DIM3DUMMY models showed similar performance to DIM3TEM3. The estimated genetic correlations between the same trait under cold and hot temperatures (ρ) indicated the existence of a large genotype by environment interaction for fat (ρ=0.53 for model TEM3) and protein yield (ρ around 0.6 for DIM3TEM3) and for SCS (ρ=0.64 for model DIM3TEM3), and a small genotype by environment interaction for milk (ρ over 0.8). The eigendecomposition of the additive genetic covariance matrix from model TEM3 showed the existence of a dominant component, a constant term that is not affected by temperature, representing from 64% of the variation for SCS to 91% of the variation for milk. The second component, showing a flat pattern at intermediate temperatures and increasing or decreasing slopes for the extremes, gathered 15, 11, and 24% of the variation for fat and protein yield and SCS, respectively. This component could be further evaluated as a selection criterion for heat tolerance independently of the production level.
来自荷斯坦 - 弗里生奶牛产奶记录的数据以及西班牙南部两个地区的天气信息被用于定义能够更好地描述生产性状和体细胞评分(SCS)热应激反应的模型。进行了两组分析,一组旨在定义群体表型反应,另一组旨在研究遗传成分。第一组分析涉及128,112头奶牛多达5个泌乳期的2,514,762条测定日记录。测试了两个模型,一个拟合温度舒适阈值和阈值后的衰减斜率,另一个是三次勒让德多项式(LP)模型。平均(TAVE)和每日最高温度被交替用作协变量。使用TAVE作为协变量的LP模型对所有性状显示出最佳的拟合优度。该模型估计在25和34°C时产奶量、乳脂率和乳蛋白率每升高1摄氏度的衰减率分别为36和170、3.8和3.0、3.9和8.2克/天。在第二组分析中,使用了来自29,114头奶牛第一个泌乳期的280,958条测定日记录样本。测试了随机回归模型,包括对TAVE的二次或三次LP回归(TEM_)或固定阈值和未知斜率(DUMMY),包括或不包括对泌乳天数(DIM3_)的三次回归。对于产奶量和SCS,最佳模型是DIM3_模型。相比之下,对于乳脂率和乳蛋白率,最佳模型是TEM3。DIM3DUMMY模型表现与DIM3TEM3相似。估计寒冷和炎热温度下同一性状之间的遗传相关性(ρ)表明,对于乳脂率(模型TEM3的ρ = 0.