G3: Genes, Genomes, Genetics (Jun 2017)

Genome-Enabled Prediction of Breeding Values for Feedlot Average Daily Weight Gain in Nelore Cattle

  • Adriana L. Somavilla,
  • Luciana C. A. Regitano,
  • Guilherme J. M. Rosa,
  • Fabiana B. Mokry,
  • Mauricio A. Mudadu,
  • Polyana C. Tizioto,
  • Priscila S. N. Oliveira,
  • Marcela M. Souza,
  • Luiz L. Coutinho,
  • Danísio P. Munari

DOI
https://doi.org/10.1534/g3.117.041442
Journal volume & issue
Vol. 7, no. 6
pp. 1855 – 1859

Abstract

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Nelore is the most economically important cattle breed in Brazil, and the use of genetically improved animals has contributed to increased beef production efficiency. The Brazilian beef feedlot industry has grown considerably in the last decade, so the selection of animals with higher growth rates on feedlot has become quite important. Genomic selection (GS) could be used to reduce generation intervals and improve the rate of genetic gains. The aim of this study was to evaluate the prediction of genomic-estimated breeding values (GEBV) for average daily weight gain (ADG) in 718 feedlot-finished Nelore steers. Analyses of three Bayesian model specifications [Bayesian GBLUP (BGBLUP), BayesA, and BayesCπ] were performed with four genotype panels [Illumina BovineHD BeadChip, TagSNPs, and GeneSeek High- and Low-density indicus (HDi and LDi, respectively)]. Estimates of Pearson correlations, regression coefficients, and mean squared errors were used to assess accuracy and bias of predictions. Overall, the BayesCπ model resulted in less biased predictions. Accuracies ranged from 0.18 to 0.27, which are reasonable values given the heritability estimates (from 0.40 to 0.44) and sample size (568 animals in the training population). Furthermore, results from Bos taurus indicus panels were as informative as those from Illumina BovineHD, indicating that they could be used to implement GS at lower costs.

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