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使用不同函数对巴西荷斯坦奶牛的测定日产奶量进行建模的随机回归模型。

Random regression models using different functions to model test-day milk yield of Brazilian Holstein cows.

作者信息

Bignardi A B, El Faro L, Torres Júnior R A A, Cardoso V L, Machado P F, Albuquerque L G

机构信息

Departamento de Zootecnia, Faculdade de Ciências Agrárias e Veterinárias, Universidade Estadual Paulista Julio de Mesquita Filho, Jaboticabal, SP, Brasil.

出版信息

Genet Mol Res. 2011 Oct 31;10(4):3565-75. doi: 10.4238/2011.October.31.4.

Abstract

We analyzed 152,145 test-day records from 7317 first lactations of Holstein cows recorded from 1995 to 2003. Our objective was to model variations in test-day milk yield during the first lactation of Holstein cows by random regression model (RRM), using various functions in order to obtain adequate and parsimonious models for the estimation of genetic parameters. Test-day milk yields were grouped into weekly classes of days in milk, ranging from 1 to 44 weeks. The contemporary groups were defined as herd-test-day. The analyses were performed using a single-trait RRM, including the direct additive, permanent environmental and residual random effects. In addition, contemporary group and linear and quadratic effects of the age of cow at calving were included as fixed effects. The mean trend of milk yield was modeled with a fourth-order orthogonal Legendre polynomial. The additive genetic and permanent environmental covariance functions were estimated by random regression on two parametric functions, Ali and Schaeffer and Wilmink, and on B-spline functions of days in milk. The covariance components and the genetic parameters were estimated by the restricted maximum likelihood method. Results from RRM parametric and B-spline functions were compared to RRM on Legendre polynomials and with a multi-trait analysis, using the same data set. Heritability estimates presented similar trends during mid-lactation (13 to 31 weeks) and between week 37 and the end of lactation, for all RRM. Heritabilities obtained by multi-trait analysis were of a lower magnitude than those estimated by RRM. The RRMs with a higher number of parameters were more useful to describe the genetic variation of test-day milk yield throughout the lactation. RRM using B-spline and Legendre polynomials as base functions appears to be the most adequate to describe the covariance structure of the data.

摘要

我们分析了1995年至2003年记录的7317头荷斯坦奶牛头胎泌乳期的152,145条测定日记录。我们的目标是通过随机回归模型(RRM)对荷斯坦奶牛头胎泌乳期测定日产奶量的变化进行建模,使用各种函数以获得用于估计遗传参数的合适且简洁的模型。测定日产奶量按泌乳周数分为每周一组,范围从1至44周。同期群定义为牛群-测定日。分析使用单性状RRM进行,包括直接加性、永久环境和残差随机效应。此外,同期群以及产犊时奶牛年龄的线性和二次效应作为固定效应纳入。产奶量的平均趋势用四阶正交勒让德多项式建模。加性遗传和永久环境协方差函数通过对两个参数函数(Ali和Schaeffer以及Wilmink)以及泌乳天数的B样条函数进行随机回归来估计。协方差分量和遗传参数通过限制最大似然法估计。使用相同数据集,将RRM参数函数和B样条函数的结果与基于勒让德多项式的RRM以及多性状分析的结果进行比较。对于所有RRM,遗传力估计在泌乳中期(13至31周)以及第37周和泌乳期末之间呈现相似趋势。通过多性状分析获得的遗传力低于RRM估计的遗传力。具有更多参数的RRM对于描述整个泌乳期测定日产奶量的遗传变异更有用。使用B样条和勒让德多项式作为基函数的RRM似乎最适合描述数据的协方差结构。

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