Estimation of genetic parameters for test-day milk yield in Holstein cows using a random regression model

Test-day milk yield records of 11,023 first-parity Holstein cows were used to estimate genetic parameters for milk yield during different lactation periods. (Co)variance components were estimated using two random regression models, RRM1 and RRM2, and the restricted maximum likelihood method, compare...

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Bibliographic Details
Main Author: Cobuci,Jaime Araujo (author)
Other Authors: Euclydes,Ricardo Frederico (author), Lopes,Paulo Sávio (author), Costa,Claudio Napolis (author), Torres,Robledo de Almeida (author), Pereira,Carmen Silva (author)
Format: article
Language:eng
Published: 2005
Subjects:
Online Access:http://old.scielo.br/scielo.php?script=sci_arttext&pid=S1415-47572005000100013
Country:Brazil
Oai:oai:scielo:S1415-47572005000100013
Description
Summary:Test-day milk yield records of 11,023 first-parity Holstein cows were used to estimate genetic parameters for milk yield during different lactation periods. (Co)variance components were estimated using two random regression models, RRM1 and RRM2, and the restricted maximum likelihood method, compared by the likelihood ratio test. Additive genetic variances determined by RRM1 and additive genetic and permanent environmental variances estimated by RRM2 were described, using the Wilmink function. Residual variance was constant throughout lactation for the two models. The heritability estimates obtained by RRM1 (0.34 to 0.56) were higher than those obtained by RRM2 (0.15 to 0.31). Due to the high heritability estimates for milk yield throughout lactation and the negative genetic correlation between test-day yields during different lactation periods, the RRM1 model did not fit the data. Overall, genetic correlations between individual test days tended to decrease at the extremes of the lactation trajectory, showing values close to unity for adjacent test days. The inclusion of random regression coefficients to describe permanent environmental effects led to a more precise estimation of genetic and non-genetic effects that influence milk yield.