Multi-Trait analysis of growth traits: fitting reduced rank models using principal components for Simmental beef cattle

ABSTRACT: The aim of this research was to evaluate the dimensional reduction of additive direct genetic covariance matrices in genetic evaluations of growth traits (range 100-730 days) in Simmental cattle using principal components, as well as to estimate (co)variance components and genetic paramete...

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Main Authors: Rodrigo Reis Mota, Edson Vinícius Costa, Paulo Sávio Lopes, Moyses Nascimento, Luciano Pinheiro da Silva, Fabyano Fonseca e Silva, Luiz Fernando Aarão Marques
Format: Article
Language:English
Published: Universidade Federal de Santa Maria 2016-09-01
Series:Ciência Rural
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-84782016000901656&lng=en&tlng=en
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spelling doaj-0de2969fce3649f3bbfc7fee1cb4ba3d2020-11-24T23:18:40ZengUniversidade Federal de Santa MariaCiência Rural1678-45962016-09-014691656166110.1590/0103-8478cr20150927S0103-84782016000901656Multi-Trait analysis of growth traits: fitting reduced rank models using principal components for Simmental beef cattleRodrigo Reis MotaEdson Vinícius CostaPaulo Sávio LopesMoyses NascimentoLuciano Pinheiro da SilvaFabyano Fonseca e SilvaLuiz Fernando Aarão MarquesABSTRACT: The aim of this research was to evaluate the dimensional reduction of additive direct genetic covariance matrices in genetic evaluations of growth traits (range 100-730 days) in Simmental cattle using principal components, as well as to estimate (co)variance components and genetic parameters. Principal component analyses were conducted for five different models-one full and four reduced-rank models. Models were compared using Akaike information (AIC) and Bayesian information (BIC) criteria. Variance components and genetic parameters were estimated by restricted maximum likelihood (REML). The AIC and BIC values were similar among models. This indicated that parsimonious models could be used in genetic evaluations in Simmental cattle. The first principal component explained more than 96% of total variance in both models. Heritability estimates were higher for advanced ages and varied from 0.05 (100 days) to 0.30 (730 days). Genetic correlation estimates were similar in both models regardless of magnitude and number of principal components. The first principal component was sufficient to explain almost all genetic variance. Furthermore, genetic parameter similarities and lower computational requirements allowed for parsimonious models in genetic evaluations of growth traits in Simmental cattle.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-84782016000901656&lng=en&tlng=enherdabilidadedemanda computacionalparâmetros genéticos
collection DOAJ
language English
format Article
sources DOAJ
author Rodrigo Reis Mota
Edson Vinícius Costa
Paulo Sávio Lopes
Moyses Nascimento
Luciano Pinheiro da Silva
Fabyano Fonseca e Silva
Luiz Fernando Aarão Marques
spellingShingle Rodrigo Reis Mota
Edson Vinícius Costa
Paulo Sávio Lopes
Moyses Nascimento
Luciano Pinheiro da Silva
Fabyano Fonseca e Silva
Luiz Fernando Aarão Marques
Multi-Trait analysis of growth traits: fitting reduced rank models using principal components for Simmental beef cattle
Ciência Rural
herdabilidade
demanda computacional
parâmetros genéticos
author_facet Rodrigo Reis Mota
Edson Vinícius Costa
Paulo Sávio Lopes
Moyses Nascimento
Luciano Pinheiro da Silva
Fabyano Fonseca e Silva
Luiz Fernando Aarão Marques
author_sort Rodrigo Reis Mota
title Multi-Trait analysis of growth traits: fitting reduced rank models using principal components for Simmental beef cattle
title_short Multi-Trait analysis of growth traits: fitting reduced rank models using principal components for Simmental beef cattle
title_full Multi-Trait analysis of growth traits: fitting reduced rank models using principal components for Simmental beef cattle
title_fullStr Multi-Trait analysis of growth traits: fitting reduced rank models using principal components for Simmental beef cattle
title_full_unstemmed Multi-Trait analysis of growth traits: fitting reduced rank models using principal components for Simmental beef cattle
title_sort multi-trait analysis of growth traits: fitting reduced rank models using principal components for simmental beef cattle
publisher Universidade Federal de Santa Maria
series Ciência Rural
issn 1678-4596
publishDate 2016-09-01
description ABSTRACT: The aim of this research was to evaluate the dimensional reduction of additive direct genetic covariance matrices in genetic evaluations of growth traits (range 100-730 days) in Simmental cattle using principal components, as well as to estimate (co)variance components and genetic parameters. Principal component analyses were conducted for five different models-one full and four reduced-rank models. Models were compared using Akaike information (AIC) and Bayesian information (BIC) criteria. Variance components and genetic parameters were estimated by restricted maximum likelihood (REML). The AIC and BIC values were similar among models. This indicated that parsimonious models could be used in genetic evaluations in Simmental cattle. The first principal component explained more than 96% of total variance in both models. Heritability estimates were higher for advanced ages and varied from 0.05 (100 days) to 0.30 (730 days). Genetic correlation estimates were similar in both models regardless of magnitude and number of principal components. The first principal component was sufficient to explain almost all genetic variance. Furthermore, genetic parameter similarities and lower computational requirements allowed for parsimonious models in genetic evaluations of growth traits in Simmental cattle.
topic herdabilidade
demanda computacional
parâmetros genéticos
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-84782016000901656&lng=en&tlng=en
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