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1.
J Anim Breed Genet ; 132(5): 392-8, 2015 Oct.
Artículo en Inglés | MEDLINE | ID: mdl-25817797

RESUMEN

The genetic improvement in pig litter size has been substantial. The number of teats on the sow must thus increase as well to meet the needs of the piglets, because each piglet needs access to its own teat. We applied a genetic heterogeneity model to teat counts in pigs, and estimated a medium heritability for teat counts (0.35), but found a low heritability for residual variance (0.06), indicating that selection for reduced residual variance might have a limited effect. A numerically positive correlation (0.8) was estimated between the breeding values for the mean and the residual variance. However, because of the low heritability of the residual variance, the residual variance will probably increase very slowly with the mean.


Asunto(s)
Cruzamiento , Biología Computacional , Glándulas Mamarias Animales , Porcinos/anatomía & histología , Porcinos/genética , Animales , Femenino , Variación Genética , Modelos Estadísticos
2.
J Dairy Sci ; 96(4): 2627-2636, 2013 Apr.
Artículo en Inglés | MEDLINE | ID: mdl-23415533

RESUMEN

Trait uniformity, or micro-environmental sensitivity, may be studied through individual differences in residual variance. These differences appear to be heritable, and the need exists, therefore, to fit models to predict breeding values explaining differences in residual variance. The aim of this paper is to estimate breeding values for micro-environmental sensitivity (vEBV) in milk yield and somatic cell score, and their associated variance components, on a large dairy cattle data set having more than 1.6 million records. Estimation of variance components, ordinary breeding values, and vEBV was performed using standard variance component estimation software (ASReml), applying the methodology for double hierarchical generalized linear models. Estimation using ASReml took less than 7 d on a Linux server. The genetic standard deviations for residual variance were 0.21 and 0.22 for somatic cell score and milk yield, respectively, which indicate moderate genetic variance for residual variance and imply that a standard deviation change in vEBV for one of these traits would alter the residual variance by 20%. This study shows that estimation of variance components, estimated breeding values and vEBV, is feasible for large dairy cattle data sets using standard variance component estimation software. The possibility to select for uniformity in Holstein dairy cattle based on these estimates is discussed.


Asunto(s)
Cruzamiento , Bovinos/genética , Heterogeneidad Genética , Animales , Recuento de Células , Ambiente , Femenino , Lactancia/genética , Leche/citología , Modelos Genéticos , Modelos Estadísticos , Fenotipo , Carácter Cuantitativo Heredable
3.
Genet Res (Camb) ; 94(6): 307-17, 2012 Dec.
Artículo en Inglés | MEDLINE | ID: mdl-23374241

RESUMEN

The possibility of breeding for uniform individuals by selecting animals expressing a small response to environment has been studied extensively in animal breeding. Bayesian methods for fitting models with genetic components in the residual variance have been developed for this purpose, but have limitations due to the computational demands. We use the hierarchical (h)-likelihood from the theory of double hierarchical generalized linear models (DHGLM) to derive an estimation algorithm that is computationally feasible for large datasets. Random effects for both the mean and residual variance parts of the model are estimated together with their variance/covariance components. An important feature of the algorithm is that it can fit a correlation between the random effects for mean and variance. An h-likelihood estimator is implemented in the R software and an iterative reweighted least square (IRWLS) approximation of the h-likelihood is implemented using ASReml. The difference in variance component estimates between the two implementations is investigated, as well as the potential bias of the methods, using simulations. IRWLS gives the same results as h-likelihood in simple cases with no severe indication of bias. For more complex cases, only IRWLS could be used, and bias did appear. The IRWLS is applied on the pig litter size data previously analysed by Sorensen & Waagepetersen (2003) using Bayesian methodology. The estimates we obtained by using IRWLS are similar to theirs, with the estimated correlation between the random genetic effects being -0·52 for IRWLS and -0·62 in Sorensen & Waagepetersen (2003).


Asunto(s)
Cruzamiento , Modelos Lineales , Tamaño de la Camada/genética , Modelos Genéticos , Porcinos/genética , Algoritmos , Animales , Simulación por Computador , Funciones de Verosimilitud , Porcinos/fisiología
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