Frontiers in Veterinary Science (Mar 2022)

Accuracy of Genomic Selection for Important Economic Traits of Cashmere and Meat Goats Assessed by Simulation Study

  • Xiaochun Yan,
  • Tao Zhang,
  • Tao Zhang,
  • Lichun Liu,
  • Yongsheng Yu,
  • Guang Yang,
  • Yaqian Han,
  • Gao Gong,
  • Fenghong Wang,
  • Lei Zhang,
  • Hongfu Liu,
  • Wenze Li,
  • Xiaomin Yan,
  • Haoyu Mao,
  • Yaming Li,
  • Chen Du,
  • Jinquan Li,
  • Jinquan Li,
  • Jinquan Li,
  • Yanjun Zhang,
  • Ruijun Wang,
  • Qi Lv,
  • Zhixin Wang,
  • Jiaxin Zhang,
  • Zhihong Liu,
  • Zhiying Wang,
  • Rui Su

DOI
https://doi.org/10.3389/fvets.2022.770539
Journal volume & issue
Vol. 9

Abstract

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Genomic selection in plants and animals has become a standard tool for breeding because of the advantages of high accuracy and short generation intervals. Implementation of this technology is hindered by the high cost of genotyping and other factors. The aim of this study was to determine an optional marker density panel and reference population size for using genomic selection of goats, with speculation on the number of QTLs that affect the important economic traits of goats. In addition, the effect of buck population size in the reference population on the accuracy of genomic estimated breeding value (GEBV) was discussed. Based on the previous genetic evaluation results of Inner Mongolia White Cashmere Goats, live body weight (LBW, h2 = 0.11) and fiber diameter (FD, h2 = 0.34) were chosen to perform genomic selection in this study. Reasonable genome parameters and generation transmission processes were set, and phenotypic and genotype data of the two traits were simulated. Then, different sizes of the reference population and validation population were selected from progeny. The GEBVs were obtained by six methods, including GBLUP (Genomic Best Linear Unbiased Prediction), ssGBLUP (Single Step Genomic Best Linear Unbiased Prediction), BayesA, BayesB, Bayesian ridge regression, and Bayesian LASSO. The correlation coefficient between the predicted and realized phenotypes from simulation was calculated and used as a measure of the accuracy of GEBV in each trait. The results showed that the medium marker density Panel (45 K) could be used for genomic selection in goats, which can ensure the accuracy of the GEBV. The reference population size of 1,500 can achieve greater genetic progress in genomic selection for fiber diameter and live body weight in goats by comparing with the population size below this level. The accuracy of the GEBV for live body weight and fiber diameter was better when the number of QTLs was 100 and 50, respectively. Additionally, the accuracy of GEBV was discovered to be good when the buck population size was up to 200. Meanwhile, the accuracy of the GEBV for medium heritability traits (FDs) was found to be higher than the accuracy of the GEBV for low heritability traits (LBWs). These findings will provide theoretical guidance for genomic selection in goats by using real data.

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