M. Selionova, L. V. Evstaf’eva, E. N. Konovalova, E. Belaya
{"title":"Marker-assisted and Genomic Selection of Beef Cattle","authors":"M. Selionova, L. V. Evstaf’eva, E. N. Konovalova, E. Belaya","doi":"10.26897/2949-4710-2023-2-37-48","DOIUrl":null,"url":null,"abstract":"This article provides an overview of modern genetic technologies for improving production traits and predicting breeding value in beef cattle. In particular, in marker-assisted selection the most promising is the selectionby desirable genotypes in the genes of myostatin (MSTN), calpain (CAPN), calpastatin (CAST), growth hormone (GH), leptin (LEP), thyroglobulin (TG), fatty acid binding protein (FABP), retinoic acid C-receptor (RORC), diacyl-glycerol acyltransferase (DGATI), sterol-Co desaturase (SCD). A modern and much more advanced approach is the Single Step Genomic Best Linear Unbiased Predictions (ssGBLUP) method, which calculates a Genomic Estimated Breeding Value (GEBV) using DNA chip genotyping, phenotype and pedigree data. Genome-wide association studies (GWAS), based on the use of genetic markers distributed throughout the genome and in non-equilibrium linkage with at least one of the quantitative traits, are currently recognised as more informative for finding new genes for beef cattle productivity. New genes associated with live weight at different stages of ontogenesis, average daily live weight gain, residual feed intake, carcass weight and flesh content have been identified. Most of the identified genes control cell division, lipid and carbohydrate metabolism. The accumulated data on full-genome association studies and exome sequencing led to new methods of genetic analysis – gene ontology and gene networks. The use of gene networks provided the first detailed understanding of the genetic basis for the formation of complex phenotypic traits based on the complex interaction of regulatory networks of «major» and «peripheral» genes controlling the development of a particular trait.","PeriodicalId":506831,"journal":{"name":"Timiryazev Biological Journal","volume":"12 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2023-08-10","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Timiryazev Biological Journal","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.26897/2949-4710-2023-2-37-48","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
This article provides an overview of modern genetic technologies for improving production traits and predicting breeding value in beef cattle. In particular, in marker-assisted selection the most promising is the selectionby desirable genotypes in the genes of myostatin (MSTN), calpain (CAPN), calpastatin (CAST), growth hormone (GH), leptin (LEP), thyroglobulin (TG), fatty acid binding protein (FABP), retinoic acid C-receptor (RORC), diacyl-glycerol acyltransferase (DGATI), sterol-Co desaturase (SCD). A modern and much more advanced approach is the Single Step Genomic Best Linear Unbiased Predictions (ssGBLUP) method, which calculates a Genomic Estimated Breeding Value (GEBV) using DNA chip genotyping, phenotype and pedigree data. Genome-wide association studies (GWAS), based on the use of genetic markers distributed throughout the genome and in non-equilibrium linkage with at least one of the quantitative traits, are currently recognised as more informative for finding new genes for beef cattle productivity. New genes associated with live weight at different stages of ontogenesis, average daily live weight gain, residual feed intake, carcass weight and flesh content have been identified. Most of the identified genes control cell division, lipid and carbohydrate metabolism. The accumulated data on full-genome association studies and exome sequencing led to new methods of genetic analysis – gene ontology and gene networks. The use of gene networks provided the first detailed understanding of the genetic basis for the formation of complex phenotypic traits based on the complex interaction of regulatory networks of «major» and «peripheral» genes controlling the development of a particular trait.
本文概述了用于改善肉牛生产性状和预测育种价值的现代遗传技术。特别是,在标记辅助选择中,最有前途的是通过选择肌动蛋白(MSTN)、犊蛋白酶(CAPN)、犊胃蛋白酶(CAST)、生长激素(GH)、瘦素(LEP)、甲状腺球蛋白(TG)、脂肪球蛋白(TG)等基因的理想基因型、生长激素(GH)、瘦素(LEP)、甲状腺球蛋白(TG)、脂肪酸结合蛋白(FABP)、视黄酸 C 受体(RORC)、二酰甘油酰基转移酶(DGATI)、固醇-Co 去饱和酶(SCD)。单步基因组最佳线性无偏预测法(ssGBLUP)是一种先进得多的现代方法,它利用 DNA 芯片基因分型、表型和血统数据计算基因组估计育种值(GEBV)。全基因组关联研究(GWAS)基于分布在整个基因组的遗传标记,并与至少一个数量性状存在非平衡关联,目前被认为对寻找肉牛生产率的新基因更有参考价值。已发现的新基因与不同发育阶段的活重、平均日活增重、剩余饲料摄入量、胴体重量和肉质含量有关。大部分已发现的基因控制着细胞分裂、脂质和碳水化合物代谢。全基因组关联研究和外显子组测序积累的数据催生了新的遗传分析方法--基因本体和基因网络。基因网络的使用使人们首次详细了解了复杂表型性状形成的遗传基础,其基础是控制特定性状发展的 "主要 "和 "外围 "基因调控网络的复杂相互作用。