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基于随机回归模型的全基因组关联研究揭示了中国西门塔尔牛纵向数据相关的候选基因。

Genome-Wide Association Study Based on Random Regression Model Reveals Candidate Genes Associated with Longitudinal Data in Chinese Simmental Beef Cattle.

作者信息

Du Lili, Duan Xinghai, An Bingxing, Chang Tianpeng, Liang Mang, Xu Lingyang, Zhang Lupei, Li Junya, E Guangxin, Gao Huijiang

机构信息

Institute of Animal Science, Chinese Academy of Agricultural Sciences, Beijing 100193, China.

College of Animal Science and Technology, Southwest University, Chongqing 400715, China.

出版信息

Animals (Basel). 2021 Aug 27;11(9):2524. doi: 10.3390/ani11092524.

Abstract

Body weight (BW) is an important longitudinal trait that directly described the growth gain of bovine in production. However, previous genome-wide association study (GWAS) mainly focused on the single-record traits, with less attention paid to longitudinal traits. Compared with traditional GWAS models, the association studies based on the random regression model (GWAS-RRM) have better performance in the control of the false positive rate through considering time-stage effects. In this study, the BW trait data were collected from 808 Chinese Simmental beef cattle aged 0, 6, 12, and 18 months, then we performed a GWAS-RRM to fit the time-varied SNP effect. The results showed a total of 37 significant SNPs were associated with BW. Gene functional annotation and enrichment analysis indicated , , , and were promising candidate genes for BW. Moreover, these genes were significantly enriched in the signaling transduction pathway and lipid metabolism. These findings will provide prior molecular information for bovine gene-based selection, as well as facilitate the extensive application of GWAS-RRM in domestic animals.

摘要

体重(BW)是一个重要的纵向性状,直接描述了肉牛在生产中的生长增重情况。然而,以往的全基因组关联研究(GWAS)主要集中在单记录性状上,对纵向性状的关注较少。与传统的GWAS模型相比,基于随机回归模型的关联研究(GWAS-RRM)通过考虑时间阶段效应,在控制假阳性率方面具有更好的性能。在本研究中,收集了808头0、6、12和18月龄中国西门塔尔肉牛的体重性状数据,然后进行GWAS-RRM以拟合随时间变化的SNP效应。结果表明,共有37个显著的SNP与体重相关。基因功能注释和富集分析表明, 、 、 和 是体重的有前景的候选基因。此外,这些基因在信号转导途径和脂质代谢中显著富集。这些发现将为基于基因的肉牛选择提供先验分子信息,并促进GWAS-RRM在家畜中的广泛应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7d48/8470172/959b2607330b/animals-11-02524-g001.jpg

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