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肉牛体重的协方差函数和随机回归模型

Covariance functions and random regression models for cow weight in beef cattle.

作者信息

Arango J A, Cundiff L V, Van Vleck L D

机构信息

Department of Animal Science, University of Nebraska, Lincoln 68583-0908, USA.

出版信息

J Anim Sci. 2004 Jan;82(1):54-67. doi: 10.2527/2004.82154x.

Abstract

Data from the first four cycles of the Germplasm Evaluation program at the U.S. Meat Animal Research Center were used to evaluate weights of Angus, Hereford, and F1 cows produced by crosses of 22 sire and 2 dam (Angus and Hereford) breeds. Four weights per year were available for cows from 2 through 8 yr of age (AY) with age in months (AM). Weights (n = 61,798) were analyzed with REML using covariance function-random regression models (CF-RRM), with regression on orthogonal (Legendre) polynomials of AM. Models included fixed regression on AM and effects of cow line, age in years, season of measurement, and their interactions; year of birth; and pregnancy-lactation codes. Random parts of the models fitted RRM coefficients for additive (a) and permanent environmental (c) effects. Estimates of CF were used to estimate covariances among all ages. Temporary environmental effects were modeled to account for heterogeneity of variance by AY. Quadratic fixed regression was sufficient to model population trajectory and was fitted in all analyses. Other models varied order of fit and rank of coefficients for a and c. A parsimonious model included linear and quartic regression coefficients for a and c, respectively. A reduced cubic order sufficed for c. Estimates of all variances increased with age. Estimates for older ages disagreed with estimates using traditional bivariate models. Plots of covariances for c were smooth for intermediate, but erratic for extreme ages. Heritability estimates ranged from 0.38 (36 mo) to 0.78 (94 mo), with fluctuations especially for extreme ages. Estimates of genetic correlations were high for most pairs of ages, with the lowest estimate (0.70) between extreme ages (19 and 103 mo). Results suggest that although cow weights do not fit a repeatability model with constant variances as well as CF-RRM, a repeatability model might be an acceptable approximation for prediction of additive genetic effects.

摘要

美国肉类动物研究中心种质评估项目前四个周期的数据用于评估由22个父本品种和2个母本品种(安格斯和赫里福德)杂交产生的安格斯、赫里福德和F1代母牛的体重。对于2至8岁(年龄以年计,AY)的母牛,每年有四个体重数据,年龄以月计(AM)。使用协方差函数 - 随机回归模型(CF - RRM),通过REML分析了61798个体重数据,对AM进行正交(勒让德)多项式回归。模型包括对AM的固定回归以及母牛品系、年龄(以年计)、测量季节及其交互作用的影响;出生年份;以及妊娠 - 泌乳编码。模型的随机部分拟合了加性(a)和永久环境(c)效应的RRM系数。CF的估计值用于估计所有年龄之间的协方差。对临时环境效应进行建模以考虑不同年龄组方差的异质性。二次固定回归足以对群体轨迹进行建模,并在所有分析中使用。其他模型在拟合顺序和a与c系数的秩方面有所不同。一个简约模型分别包括a和c的线性和四次回归系数。对于c,三次回归降阶就足够了。所有方差的估计值都随年龄增加。老年的估计值与使用传统双变量模型的估计值不一致。c的协方差图在中间年龄时平滑,但在极端年龄时不稳定。遗传力估计值范围从0.38(36个月)到0.78(94个月),在极端年龄时波动尤其明显。大多数年龄对之间的遗传相关性估计值较高,极端年龄(19和103个月)之间的估计值最低(0.70)。结果表明,尽管母牛体重不像CF - RRM那样符合具有恒定方差的重复性模型,但重复性模型可能是预测加性遗传效应的可接受近似模型。

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