Ability of non-linear mixed models to predict growth in laying hens

In this study, the Von Bertalanffy, Richards, Gompertz, Brody, and Logistics non-linear mixed regression models were compared for their ability to estimate the growth curve in commercial laying hens. Data were obtained from 100 Lohmann LSL layers. The animals were identified and then weighed weekly...

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Main Authors: Luis Fernando Galeano-Vasco, Mario Fernando Cerón-Muñoz, William Narváez-Solarte
Format: Article
Language:English
Published: Sociedade Brasileira de Zootecnia 2014-11-01
Series:Revista Brasileira de Zootecnia
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1516-35982014001100573&lng=en&tlng=en
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spelling doaj-d05b5362a6b84dc2b327887b744fbfbc2020-11-24T23:46:05ZengSociedade Brasileira de ZootecniaRevista Brasileira de Zootecnia1806-92902014-11-01431157357810.1590/S1516-35982014001100003S1516-35982014001100573Ability of non-linear mixed models to predict growth in laying hensLuis Fernando Galeano-VascoMario Fernando Cerón-MuñozWilliam Narváez-SolarteIn this study, the Von Bertalanffy, Richards, Gompertz, Brody, and Logistics non-linear mixed regression models were compared for their ability to estimate the growth curve in commercial laying hens. Data were obtained from 100 Lohmann LSL layers. The animals were identified and then weighed weekly from day 20 after hatch until they were 553 days of age. All the nonlinear models used were transformed into mixed models by the inclusion of random parameters. Accuracy of the models was determined by the Akaike and Bayesian information criteria (AIC and BIC, respectively), and the correlation values. According to AIC, BIC, and correlation values, the best fit for modeling the growth curve of the birds was obtained with Gompertz, followed by Richards, and then by Von Bertalanffy models. The Brody and Logistic models did not fit the data. The Gompertz nonlinear mixed model showed the best goodness of fit for the data set, and is considered the model of choice to describe and predict the growth curve of Lohmann LSL commercial layers at the production system of University of Antioquia.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1516-35982014001100573&lng=en&tlng=enchickensmathematical modelspoultryregression analysisweight gain
collection DOAJ
language English
format Article
sources DOAJ
author Luis Fernando Galeano-Vasco
Mario Fernando Cerón-Muñoz
William Narváez-Solarte
spellingShingle Luis Fernando Galeano-Vasco
Mario Fernando Cerón-Muñoz
William Narváez-Solarte
Ability of non-linear mixed models to predict growth in laying hens
Revista Brasileira de Zootecnia
chickens
mathematical models
poultry
regression analysis
weight gain
author_facet Luis Fernando Galeano-Vasco
Mario Fernando Cerón-Muñoz
William Narváez-Solarte
author_sort Luis Fernando Galeano-Vasco
title Ability of non-linear mixed models to predict growth in laying hens
title_short Ability of non-linear mixed models to predict growth in laying hens
title_full Ability of non-linear mixed models to predict growth in laying hens
title_fullStr Ability of non-linear mixed models to predict growth in laying hens
title_full_unstemmed Ability of non-linear mixed models to predict growth in laying hens
title_sort ability of non-linear mixed models to predict growth in laying hens
publisher Sociedade Brasileira de Zootecnia
series Revista Brasileira de Zootecnia
issn 1806-9290
publishDate 2014-11-01
description In this study, the Von Bertalanffy, Richards, Gompertz, Brody, and Logistics non-linear mixed regression models were compared for their ability to estimate the growth curve in commercial laying hens. Data were obtained from 100 Lohmann LSL layers. The animals were identified and then weighed weekly from day 20 after hatch until they were 553 days of age. All the nonlinear models used were transformed into mixed models by the inclusion of random parameters. Accuracy of the models was determined by the Akaike and Bayesian information criteria (AIC and BIC, respectively), and the correlation values. According to AIC, BIC, and correlation values, the best fit for modeling the growth curve of the birds was obtained with Gompertz, followed by Richards, and then by Von Bertalanffy models. The Brody and Logistic models did not fit the data. The Gompertz nonlinear mixed model showed the best goodness of fit for the data set, and is considered the model of choice to describe and predict the growth curve of Lohmann LSL commercial layers at the production system of University of Antioquia.
topic chickens
mathematical models
poultry
regression analysis
weight gain
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1516-35982014001100573&lng=en&tlng=en
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AT mariofernandoceronmunoz abilityofnonlinearmixedmodelstopredictgrowthinlayinghens
AT williamnarvaezsolarte abilityofnonlinearmixedmodelstopredictgrowthinlayinghens
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