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ssGBLUP Method Improves the Accuracy of Breeding Value Prediction in Huacaya Alpaca

SIMPLE SUMMARY: Alpaca breeding takes place in the most entrenched areas of the Andes, where the conditions to implement genetic improvement programs are very difficult. Likewise, taking phenotypic records is limited in its ability to predict genetic merit accurately. For this reason, genomic inform...

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Autores principales: Mancisidor, Betsy, Cruz, Alan, Gutiérrez, Gustavo, Burgos, Alonso, Morón, Jonathan Alejandro, Wurzinger, Maria, Gutiérrez, Juan Pablo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8614529/
https://www.ncbi.nlm.nih.gov/pubmed/34827784
http://dx.doi.org/10.3390/ani11113052
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author Mancisidor, Betsy
Cruz, Alan
Gutiérrez, Gustavo
Burgos, Alonso
Morón, Jonathan Alejandro
Wurzinger, Maria
Gutiérrez, Juan Pablo
author_facet Mancisidor, Betsy
Cruz, Alan
Gutiérrez, Gustavo
Burgos, Alonso
Morón, Jonathan Alejandro
Wurzinger, Maria
Gutiérrez, Juan Pablo
author_sort Mancisidor, Betsy
collection PubMed
description SIMPLE SUMMARY: Alpaca breeding takes place in the most entrenched areas of the Andes, where the conditions to implement genetic improvement programs are very difficult. Likewise, taking phenotypic records is limited in its ability to predict genetic merit accurately. For this reason, genomic information is shown as an alternative that helps to predict the genetic values of fiber traits more precisely. This study showed how genomic information increased precision by 2.623% for the fiber diameter, 6.442% for the standard deviation of the fiber diameter, and 1.471% for the percentage of medullation compared to traditional methods for predicting genetic merit, suggesting that adding genomic data in prediction models could be beneficial for alpaca breeding programs in the future. ABSTRACT: Improving textile characteristics is the main objective of alpaca breeding. A recently developed SNP chip for alpacas could potentially be used to implement genomic selection and accelerate genetic progress. Therefore, this study aimed to compare the increase in prediction accuracy of three important fiber traits: fiber diameter (FD), standard deviation of fiber diameter (SD), and percentage of medullation (PM) in Huacaya alpacas. The data contains a total pedigree of 12,431 animals, 24,169 records for FD and SD, and 8386 records for PM and 60,624 SNP markers for each of the 431 genotyped animals of the Pacomarca Genetic Center. Prediction accuracy of breeding values was compared between a classical BLUP and a single-step Genomic BLUP (ssGBLUP). Deregressed phenotypes were predicted. The accuracies of the genetic and genomic values were calculated using the correlation between the predicted breeding values and the deregressed values of 100 randomly selected animals from the genotyped ones. Fifty replicates were carried out. Accuracies with ssGBLUP improved by 2.623%, 6.442%, and 1.471% on average for FD, SD, and PM, respectively, compared to the BLUP method. The increase in accuracy was relevant, suggesting that adding genomic data could benefit alpaca breeding programs.
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spelling pubmed-86145292021-11-26 ssGBLUP Method Improves the Accuracy of Breeding Value Prediction in Huacaya Alpaca Mancisidor, Betsy Cruz, Alan Gutiérrez, Gustavo Burgos, Alonso Morón, Jonathan Alejandro Wurzinger, Maria Gutiérrez, Juan Pablo Animals (Basel) Article SIMPLE SUMMARY: Alpaca breeding takes place in the most entrenched areas of the Andes, where the conditions to implement genetic improvement programs are very difficult. Likewise, taking phenotypic records is limited in its ability to predict genetic merit accurately. For this reason, genomic information is shown as an alternative that helps to predict the genetic values of fiber traits more precisely. This study showed how genomic information increased precision by 2.623% for the fiber diameter, 6.442% for the standard deviation of the fiber diameter, and 1.471% for the percentage of medullation compared to traditional methods for predicting genetic merit, suggesting that adding genomic data in prediction models could be beneficial for alpaca breeding programs in the future. ABSTRACT: Improving textile characteristics is the main objective of alpaca breeding. A recently developed SNP chip for alpacas could potentially be used to implement genomic selection and accelerate genetic progress. Therefore, this study aimed to compare the increase in prediction accuracy of three important fiber traits: fiber diameter (FD), standard deviation of fiber diameter (SD), and percentage of medullation (PM) in Huacaya alpacas. The data contains a total pedigree of 12,431 animals, 24,169 records for FD and SD, and 8386 records for PM and 60,624 SNP markers for each of the 431 genotyped animals of the Pacomarca Genetic Center. Prediction accuracy of breeding values was compared between a classical BLUP and a single-step Genomic BLUP (ssGBLUP). Deregressed phenotypes were predicted. The accuracies of the genetic and genomic values were calculated using the correlation between the predicted breeding values and the deregressed values of 100 randomly selected animals from the genotyped ones. Fifty replicates were carried out. Accuracies with ssGBLUP improved by 2.623%, 6.442%, and 1.471% on average for FD, SD, and PM, respectively, compared to the BLUP method. The increase in accuracy was relevant, suggesting that adding genomic data could benefit alpaca breeding programs. MDPI 2021-10-26 /pmc/articles/PMC8614529/ /pubmed/34827784 http://dx.doi.org/10.3390/ani11113052 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Mancisidor, Betsy
Cruz, Alan
Gutiérrez, Gustavo
Burgos, Alonso
Morón, Jonathan Alejandro
Wurzinger, Maria
Gutiérrez, Juan Pablo
ssGBLUP Method Improves the Accuracy of Breeding Value Prediction in Huacaya Alpaca
title ssGBLUP Method Improves the Accuracy of Breeding Value Prediction in Huacaya Alpaca
title_full ssGBLUP Method Improves the Accuracy of Breeding Value Prediction in Huacaya Alpaca
title_fullStr ssGBLUP Method Improves the Accuracy of Breeding Value Prediction in Huacaya Alpaca
title_full_unstemmed ssGBLUP Method Improves the Accuracy of Breeding Value Prediction in Huacaya Alpaca
title_short ssGBLUP Method Improves the Accuracy of Breeding Value Prediction in Huacaya Alpaca
title_sort ssgblup method improves the accuracy of breeding value prediction in huacaya alpaca
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8614529/
https://www.ncbi.nlm.nih.gov/pubmed/34827784
http://dx.doi.org/10.3390/ani11113052
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