Department of Animal Sciences, State University of Ponta Grossa, Ponta Grossa, Brazil.
Department of Animal Sciences, Federal University of Bahia, Ondina, Brazil.
J Anim Breed Genet. 2021 May;138(3):360-378. doi: 10.1111/jbg.12525. Epub 2020 Nov 24.
Genome-wide association study (GWAS) is a powerful tool to identify candidate genes and genomic regions underlying key biological mechanisms associated with economically important traits. In this context, the aim of this study was to identify genomic regions and metabolic pathways associated with backfat thickness (BFT) and rump fat thickness (RFT) in Nellore cattle, raised in pasture-based systems. Ultrasound-based measurements of BFT and RFT (adjusted to 18 months of age) were collected in 11,750 animals, with 39,903 animals in the pedigree file. Additionally, 1,440 animals were genotyped using the GGP-indicus 35K SNP chip, containing 33,623 SNPs after the quality control. The single-step GWAS analyses were performed using the BLUPF90 family programs. Candidate genes were identified through the Ensembl database incorporated in the BioMart tool, while PANTHER and REVIGO were used to identify the key metabolic pathways and gene networks. A total of 18 genomic regions located on 10 different chromosomes and harbouring 23 candidate genes were identified for BFT. For RFT, 22 genomic regions were found on 14 chromosomes, with a total of 29 candidate genes identified. The results of the pathway analyses showed important genes for BFT, including TBL1XR1, AHCYL2, SLC4A7, AADAT, VPS53, IDH2 and ETS1, which are involved in lipid metabolism, synthesis of cellular amino acids, transport of solutes, transport between Golgi Complex membranes, cell differentiation and cellular development. The main genes identified for RFT were GSK3β, LRP1B, EXT1, GRB2, SORCS1 and SLMAP, which are involved in metabolic pathways such as glycogen synthesis, lipid transport and homeostasis, polysaccharide and carbohydrate metabolism. Polymorphisms located in these candidate genes can be incorporated in commercial genotyping platforms to improve the accuracy of imputation and genomic evaluations for carcass fatness. In addition to uncovering biological mechanisms associated with carcass quality, the key gene pathways identified can also be incorporated in biology-driven genomic prediction methods.
全基因组关联研究(GWAS)是一种强大的工具,可用于鉴定与经济重要性状相关的关键生物学机制的候选基因和基因组区域。在这种情况下,本研究的目的是鉴定与 pasture-based 系统中饲养的 Nellore 牛的背膘厚(BFT)和臀部脂肪厚(RFT)相关的基因组区域和代谢途径。在 11750 头动物中测量了 BFT 和 RFT 的超声值(调整至 18 月龄),在系谱文件中有 39903 头动物。此外,使用 GGP-indicus 35K SNP 芯片对 1440 头动物进行了基因型检测,经过质量控制后,共获得 33623 个 SNP。单步 GWAS 分析使用 BLUPF90 家族程序进行。候选基因通过纳入 BioMart 工具的 Ensembl 数据库进行鉴定,而 PANTHER 和 REVIGO 用于鉴定关键代谢途径和基因网络。共鉴定出 18 个位于 10 条不同染色体上的基因组区域,包含 23 个候选基因,这些区域与 BFT 有关。对于 RFT,在 14 条染色体上发现了 22 个基因组区域,共鉴定出 29 个候选基因。途径分析的结果表明,BFT 有重要的基因,包括 TBL1XR1、AHCYL2、SLC4A7、AADAT、VPS53、IDH2 和 ETS1,它们参与脂质代谢、细胞氨基酸合成、溶质转运、高尔基复合体膜之间的转运、细胞分化和细胞发育。鉴定出的与 RFT 相关的主要基因是 GSK3β、LRP1B、EXT1、GRB2、SORCS1 和 SLMAP,它们参与糖元合成、脂质转运和稳态、多糖和碳水化合物代谢等代谢途径。位于这些候选基因中的多态性可以被纳入商业基因分型平台,以提高对体脂率的估计和基因组评估的准确性。除了揭示与胴体质量相关的生物学机制外,所鉴定的关键基因途径也可以被纳入生物学驱动的基因组预测方法中。