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Genetic diversity and divergence among Korean cattle breeds assessed using a BovineHD single-nucleotide polymorphism chip

  • Kim, Seungchang (Animal Genetic Resources Center, National Institute of Animal Science, RDA) ;
  • Cheong, Hyun Sub (Department of Genetic Epidemiology, SNP Genetics, Inc.) ;
  • Shin, Hyoung Doo (Department of Genetic Epidemiology, SNP Genetics, Inc.) ;
  • Lee, Sung-Soo (Animal Genetic Resources Center, National Institute of Animal Science, RDA) ;
  • Roh, Hee-Jong (Animal Genetic Resources Center, National Institute of Animal Science, RDA) ;
  • Jeon, Da-Yeon (Animal Genetic Resources Center, National Institute of Animal Science, RDA) ;
  • Cho, Chang-Yeon (Animal Genetic Resources Center, National Institute of Animal Science, RDA)
  • 투고 : 2017.05.31
  • 심사 : 2018.06.22
  • 발행 : 2018.11.01

초록

Objective: In Korea, there are three main cattle breeds, which are distinguished by coat color: Brown Hanwoo (BH), Brindle Hanwoo (BRH), and Jeju Black (JB). In this study, we sought to compare the genetic diversity and divergence among there Korean cattle breeds using a BovineHD chip genotyping array. Methods: Sample data were collected from 168 cattle in three populations of BH (48 cattle), BRH (96 cattle), and JB (24 cattle). The single-nucleotide polymorphism (SNP) genotyping was performed using the Illumina BovineHD SNP 777K Bead chip. Results: Heterozygosity, used as a measure of within-breed genetic diversity, was higher in BH (0.293) and BRH (0.296) than in JB (0.266). Linkage disequilibrium decay was more rapid in BH and BRH than in JB, reaching an average $r^2$ value of 0.2 before 26 kb in BH and BRH, whereas the corresponding value was reached before 32 kb in JB. Intra-population, interpopulation, and Fst analyses were used to identify candidate signatures of positive selection in the genome of a domestic Korean cattle population and 48, 11, and 11 loci were detected in the genomic region of the BRH breed, respectively. A Neighbor-Joining phylogenetic tree showed two main groups: a group comprising BH and BRH on one side and a group containing JB on the other. The runs of homozygosity analysis between Korean breeds indicated that the BRH and JB breeds have high inbreeding within breeds compared with BH. An analysis of differentiation based on a high-density SNP chip showed differences between Korean cattle breeds and the closeness of breeds corresponding to the geographic regions where they are evolving. Conclusion: Our results indicate that although the Korean cattle breeds have common features, they also show reliable breed diversity.

키워드

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