Foods (Oct 2023)

Genetic Association Analysis of Copy Number Variations for Meat Quality in Beef Cattle

  • Jiayuan Wu,
  • Tianyi Wu,
  • Xueyuan Xie,
  • Qunhao Niu,
  • Zhida Zhao,
  • Bo Zhu,
  • Yan Chen,
  • Lupei Zhang,
  • Xue Gao,
  • Xiaoyan Niu,
  • Huijiang Gao,
  • Junya Li,
  • Lingyang Xu

DOI
https://doi.org/10.3390/foods12213986
Journal volume & issue
Vol. 12, no. 21
p. 3986

Abstract

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Meat quality is an economically important trait for global food production. Copy number variations (CNVs) have been previously implicated in elucidating the genetic basis of complex traits. In this article, we detected a total of 112,198 CNVs and 10,102 CNV regions (CNVRs) based on the Bovine HD SNP array. Next, we performed a CNV-based genome-wide association analysis (GWAS) of six meat quality traits and identified 12 significant CNV segments corresponding to eight candidate genes, including PCDH15, CSMD3, etc. Using region-based association analysis, we further identified six CNV segments relevant to meat quality in beef cattle. Among these, TRIM77 and TRIM64 within CNVR4 on BTA29 were detected as candidate genes for backfat thickness (BFT). Notably, we identified a 34 kb duplication for meat color (MC) which was supported by read-depth signals, and this duplication was embedded within the keratin gene family including KRT4, KRT78, and KRT79. Our findings will help to dissect the genetic architecture of meat quality traits from the aspects of CNVs, and subsequently improve the selection process in breeding programs.

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