Genetic parameters and expected responses to selection for components of feed efficiency in a Duroc pig line

Abstract Background Improving feed efficiency ( $${\text{FE}}$$ FE ) is a key factor for any pig breeding company. Although this can be achieved by selection on an index of multi-trait best linear unbiased prediction of breeding values with optimal economic weights, considering deviations of feed in...

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Main Authors: Juan P. Sánchez, Mohamed Ragab, Raquel Quintanilla, Max F. Rothschild, Miriam Piles
Format: Article
Language:deu
Published: BMC 2017-12-01
Series:Genetics Selection Evolution
Online Access:http://link.springer.com/article/10.1186/s12711-017-0362-x
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spelling doaj-8b0fc98410624b5dbd0ad8824e84a7842020-11-25T00:30:18ZdeuBMCGenetics Selection Evolution1297-96862017-12-0149111310.1186/s12711-017-0362-xGenetic parameters and expected responses to selection for components of feed efficiency in a Duroc pig lineJuan P. Sánchez0Mohamed Ragab1Raquel Quintanilla2Max F. Rothschild3Miriam Piles4Genetica i Millora Animal, IRTA, Torre MarimonGenetica i Millora Animal, IRTA, Torre MarimonGenetica i Millora Animal, IRTA, Torre MarimonDepartment of Animal Science, Iowa State UniversityGenetica i Millora Animal, IRTA, Torre MarimonAbstract Background Improving feed efficiency ( $${\text{FE}}$$ FE ) is a key factor for any pig breeding company. Although this can be achieved by selection on an index of multi-trait best linear unbiased prediction of breeding values with optimal economic weights, considering deviations of feed intake from actual needs ( $${\text{RFI}}$$ RFI ) should be of value for further research on biological aspects of $${\text{FE}}$$ FE . Here, we present a random regression model that extends the classical definition of $${\text{RFI}}$$ RFI by including animal-specific needs in the model. Using this model, we explore the genetic determinism of several $${\text{FE}}$$ FE components: use of feed for growth ( $${\text{WG}}$$ WG ), use of feed for backfat deposition ( $${\text{FG}}$$ FG ), use of feed for maintenance ( $${\text{MW}}$$ MW ), and unspecific efficiency in the use of feed ( $${\text{RFI}}$$ RFI ). Expected response to alternative selection indexes involving different components is also studied. Results Based on goodness-of-fit to the available feed intake ( $${\text{FI}}$$ FI ) data, the model that assumes individual (genetic and permanent) variation in the use of feed for maintenance, $${\text{WG}}$$ WG and $${\text{FG}}$$ FG showed the best performance. Joint individual variation in feed allocation to maintenance, growth and backfat deposition comprised 37% of the individual variation of $${\text{FI}}$$ FI . The estimated heritabilities of $${\text{RFI}}$$ RFI using the model that accounts for animal-specific needs and the traditional $${\text{RFI}}$$ RFI model were 0.12 and 0.18, respectively. The estimated heritabilities for the regression coefficients were 0.44, 0.39 and 0.55 for $${\text{MW}}$$ MW , $${\text{WG}}$$ WG and $${\text{FG}}$$ FG , respectively. Estimates of genetic correlations of $${\text{RFI}}$$ RFI were positive with amount of feed used for $${\text{WG}}$$ WG and $${\text{FG}}$$ FG but negative for $${\text{MW}}$$ MW . Expected response in overall efficiency, reducing $${\text{FI}}$$ FI without altering performance, was 2.5% higher when the model assumed animal-specific needs than when the traditional definition of $${\text{RFI}}$$ RFI was considered. Conclusions Expected response in overall efficiency, by reducing $${\text{FI}}$$ FI without altering performance, is slightly better with a model that assumes animal-specific needs instead of batch-specific needs to correct $${\text{FI}}$$ FI . The relatively small difference between the traditional $${\text{RFI}}$$ RFI model and our model is due to random intercepts (unspecific use of feed) accounting for the majority of variability in $${\text{FI}}$$ FI . Overall, a model that accounts for animal-specific needs for $${\text{MW}}$$ MW , $${\text{WG}}$$ WG and $${\text{FG}}$$ FG is statistically superior and allows for the possibility to act differentially on $${\text{FE}}$$ FE components.http://link.springer.com/article/10.1186/s12711-017-0362-x
collection DOAJ
language deu
format Article
sources DOAJ
author Juan P. Sánchez
Mohamed Ragab
Raquel Quintanilla
Max F. Rothschild
Miriam Piles
spellingShingle Juan P. Sánchez
Mohamed Ragab
Raquel Quintanilla
Max F. Rothschild
Miriam Piles
Genetic parameters and expected responses to selection for components of feed efficiency in a Duroc pig line
Genetics Selection Evolution
author_facet Juan P. Sánchez
Mohamed Ragab
Raquel Quintanilla
Max F. Rothschild
Miriam Piles
author_sort Juan P. Sánchez
title Genetic parameters and expected responses to selection for components of feed efficiency in a Duroc pig line
title_short Genetic parameters and expected responses to selection for components of feed efficiency in a Duroc pig line
title_full Genetic parameters and expected responses to selection for components of feed efficiency in a Duroc pig line
title_fullStr Genetic parameters and expected responses to selection for components of feed efficiency in a Duroc pig line
title_full_unstemmed Genetic parameters and expected responses to selection for components of feed efficiency in a Duroc pig line
title_sort genetic parameters and expected responses to selection for components of feed efficiency in a duroc pig line
publisher BMC
series Genetics Selection Evolution
issn 1297-9686
publishDate 2017-12-01
description Abstract Background Improving feed efficiency ( $${\text{FE}}$$ FE ) is a key factor for any pig breeding company. Although this can be achieved by selection on an index of multi-trait best linear unbiased prediction of breeding values with optimal economic weights, considering deviations of feed intake from actual needs ( $${\text{RFI}}$$ RFI ) should be of value for further research on biological aspects of $${\text{FE}}$$ FE . Here, we present a random regression model that extends the classical definition of $${\text{RFI}}$$ RFI by including animal-specific needs in the model. Using this model, we explore the genetic determinism of several $${\text{FE}}$$ FE components: use of feed for growth ( $${\text{WG}}$$ WG ), use of feed for backfat deposition ( $${\text{FG}}$$ FG ), use of feed for maintenance ( $${\text{MW}}$$ MW ), and unspecific efficiency in the use of feed ( $${\text{RFI}}$$ RFI ). Expected response to alternative selection indexes involving different components is also studied. Results Based on goodness-of-fit to the available feed intake ( $${\text{FI}}$$ FI ) data, the model that assumes individual (genetic and permanent) variation in the use of feed for maintenance, $${\text{WG}}$$ WG and $${\text{FG}}$$ FG showed the best performance. Joint individual variation in feed allocation to maintenance, growth and backfat deposition comprised 37% of the individual variation of $${\text{FI}}$$ FI . The estimated heritabilities of $${\text{RFI}}$$ RFI using the model that accounts for animal-specific needs and the traditional $${\text{RFI}}$$ RFI model were 0.12 and 0.18, respectively. The estimated heritabilities for the regression coefficients were 0.44, 0.39 and 0.55 for $${\text{MW}}$$ MW , $${\text{WG}}$$ WG and $${\text{FG}}$$ FG , respectively. Estimates of genetic correlations of $${\text{RFI}}$$ RFI were positive with amount of feed used for $${\text{WG}}$$ WG and $${\text{FG}}$$ FG but negative for $${\text{MW}}$$ MW . Expected response in overall efficiency, reducing $${\text{FI}}$$ FI without altering performance, was 2.5% higher when the model assumed animal-specific needs than when the traditional definition of $${\text{RFI}}$$ RFI was considered. Conclusions Expected response in overall efficiency, by reducing $${\text{FI}}$$ FI without altering performance, is slightly better with a model that assumes animal-specific needs instead of batch-specific needs to correct $${\text{FI}}$$ FI . The relatively small difference between the traditional $${\text{RFI}}$$ RFI model and our model is due to random intercepts (unspecific use of feed) accounting for the majority of variability in $${\text{FI}}$$ FI . Overall, a model that accounts for animal-specific needs for $${\text{MW}}$$ MW , $${\text{WG}}$$ WG and $${\text{FG}}$$ FG is statistically superior and allows for the possibility to act differentially on $${\text{FE}}$$ FE components.
url http://link.springer.com/article/10.1186/s12711-017-0362-x
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