Milk yield records (305d, 2X, actual milk yield) of 123,639 registered first lactation Holstein cows were used to compare linear regression (y = β 0 + β 1X + e),quadratic regression, (y = β 0 + β 1X + β 2X 2 + e) cubic regression (y = β 0 + β 1X + β 2X 2 + β 3X 3 + e) and fixed factor models, with cubic-spline interpolation models, for estimating the effects of inbreeding on milk yield. Ten animal models, all with herd-year-season of calving as fixed effect, were compared using the Akaike corrected-Information Criterion (AICc). The cubic-spline interpolation model with seven knots had the lowest AICc, whereas for all those labeled as "traditional", AICc was higher than the best model. Results from fitting inbreeding using a cubic-spline with seven knots were compared to results from fitting inbreeding as a linear covariate or as a fixed factor with seven levels. Estimates of inbreeding effects were not significantly different between the cubic- spline model and the fixed factor model, but were significantly different from the linear regression model. Milk yield decreased significantly at inbreeding levels greater than 9%. Variance component estimates were similar for the three models. Ranking of the top 100 sires with daughter records remained unaffected by the model used. © 2011, Sociedade Brasileira de Genética.
CITATION STYLE
Geha, M. J., Keown, J. F., & Dale van Vleck, L. (2011). Cubic-spline interpolation to estimate effects of inbreeding on milk yield in first lactation Holstein cows. Genetics and Molecular Biology, 34(3), 443–450. https://doi.org/10.1590/S1415-47572011000300013
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