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候选基因和与肉牛剩余采食量变化相关的单核苷酸多态性。

Candidate genes and single nucleotide polymorphisms associated with variation in residual feed intake in beef cattle.

机构信息

Livestock Gentec, Department of Agriculture, Food and Nutritional Science, 4.10 Agriculture Forestry Center, University of Alberta, Edmonton, AB T6G2P5, Canada.

出版信息

J Anim Sci. 2013 Aug;91(8):3502-13. doi: 10.2527/jas.2012-6170. Epub 2013 Jun 4.

Abstract

The candidate gene approach was used to identify genes associated with residual feed intake (RFI) in beef steers. The approach uses prior knowledge of gene functions to predict their biological role in the variation observed in a trait. It is suited to identify genes associated with complex traits where each gene has a relatively small effect. First, positional candidate genes were identified within the genomic positions of previously reported QTL associated with component traits related to RFI such as dry matter intake (DMI), growth, feed conversion ratio (FCR), average daily gain (ADG), and energy balance. Secondly, the positional candidate genes were prioritized into functional candidate genes according to their biological functions and their relationship with the biological processes associated with RFI including carbohydrate, fat and protein metabolism, thermoregulation, immunity and muscle activity. Single nucleotide polymorphisms (SNPs) located within the functional candidate genes were identified using mRNA sequences and prioritized into functional classes such as non-synonymous (nsSNP), synonymous (sSNP) or intronic SNP. A total of 117 nsSNP were considered as functional SNP and genotyped in steers at the University of Alberta ranch in Kinsella. Multiple marker association analysis in ASReml was performed using RFI data obtained from 531 beef steers. Twenty-five SNP were significantly associated with RFI (P < 0.05) accounting for 19.7% of the phenotypic variation. Using SIFT program to predict the effect of the SNP on the function of the corresponding protein, 3 of the 25 SNP were predicted to cause a significant effect on protein function (P < 0.05). One of the 3 SNP was located in the GHR gene and was also associated with a significant effect on the tertiary structure of the GHR protein (P < 0.05) as modeled using SWISSModel software. Least square means for each genotype were estimated and an over-dominance effect was observed for the SNP located in the GHR, CAST, ACAD11 and UGT3A1 genes. In addition, 2 other SNP showed a dominance effect and 3 genes had an additive effect. Gene network analysis performed in Ingenuity pathway analysis (IPA) software (Ingenuity Systems, www.ingenuity.com) indicated that the significant genes were involved in biological pathways such as lipid, protein and energy metabolism, electron transport and membrane signaling. The genes in this study, if validated in other beef cattle populations, may be useful for marker assisted selection for feed efficiency.

摘要

候选基因方法被用于鉴定与肉牛剩余采食量(RFI)相关的基因。该方法利用基因功能的先验知识来预测它们在性状观察到的变异中的生物学作用。它适用于鉴定与复杂性状相关的基因,其中每个基因的影响相对较小。首先,在与 RFI 相关的组成性状(如干物质采食量(DMI)、生长、饲料转化率(FCR)、平均日增重(ADG)和能量平衡)的先前报道的 QTL 的基因组位置内鉴定了定位候选基因。其次,根据它们的生物学功能及其与 RFI 相关的生物学过程(包括碳水化合物、脂肪和蛋白质代谢、体温调节、免疫和肌肉活动)的关系,将定位候选基因优先分为功能候选基因。使用 mRNA 序列鉴定功能候选基因内的单核苷酸多态性(SNP),并将其分为非同义(nsSNP)、同义(sSNP)或内含子 SNP 等功能类别。在阿尔伯塔大学金斯勒牧场的肉牛中,共鉴定了 117 个 nsSNP 作为功能 SNP 并进行了基因分型。在 ASReml 中使用来自 531 头肉牛的 RFI 数据进行了多重标记关联分析。25 个 SNP 与 RFI 显著相关(P < 0.05),占表型变异的 19.7%。使用 SIFT 程序预测 SNP 对相应蛋白质功能的影响,其中 3 个 SNP 预测对蛋白质功能有显著影响(P < 0.05)。这 3 个 SNP 中的 1 个位于 GHR 基因中,并且还与 GHR 蛋白质三级结构的显著影响相关(P < 0.05),这是使用 SWISSModel 软件建模的。估计了每个基因型的最小二乘均值,并且 SNP 位于 GHR、CAST、ACAD11 和 UGT3A1 基因中观察到超显性效应。此外,另外 2 个 SNP 表现出显性效应,3 个基因表现出加性效应。在 Ingenuity 途径分析(IPA)软件(Ingenuity Systems,www.ingenuity.com)中进行的基因网络分析表明,显著基因参与了脂质、蛋白质和能量代谢、电子传递和膜信号等生物学途径。如果在其他肉牛群体中验证这些基因,它们可能对饲料效率的标记辅助选择有用。

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