Center for Genomic and Personalized Medicine, Guangxi Medical University, Nanning, 530021, Guangxi, China.
Life Sciences Institute, Guangxi Medical University, Nanning, 530021, Guangxi, China.
BMC Genomics. 2019 Dec 16;20(1):983. doi: 10.1186/s12864-019-6363-0.
Phenomics provides new technologies and platforms as a systematic phenome-genome approach. However, few studies have reported on the systematic mining of shared genetics among clinical biochemical indices based on phenomics methods, especially in China. This study aimed to apply phenomics to systematically explore shared genetics among 29 biochemical indices based on the Fangchenggang Area Male Health and Examination Survey cohort.
A total of 1999 subjects with 29 biochemical indices and 709,211 single nucleotide polymorphisms (SNPs) were subjected to phenomics analysis. Three bioinformatics methods, namely, Pearson's test, Jaccard's index, and linkage disequilibrium score regression, were used. The results showed that 29 biochemical indices were from a network. IgA, IgG, IgE, IgM, HCY, AFP and B12 were in the central community of 29 biochemical indices. Key genes and loci associated with metabolism traits were further identified, and shared genetics analysis showed that 29 SNPs (P < 10) were associated with three or more traits. After integrating the SNPs related to two or more traits with the GWAS catalogue, 31 SNPs were found to be associated with several diseases (P < 10). Using ALDH2 as an example to preliminarily explore its biological function, we also confirmed that the rs671 (ALDH2) polymorphism affected multiple traits of osteogenesis and adipogenesis differentiation in 3 T3-L1 preadipocytes.
All these findings indicated a network of shared genetics and 29 biochemical indices, which will help fully understand the genetics participating in biochemical metabolism.
表型组学提供了新技术和平台,作为一种系统的表型-基因组方法。然而,很少有研究报道基于表型组学方法对临床生化指标之间的共享遗传进行系统挖掘,尤其是在中国。本研究旨在应用表型组学方法,基于防城港市男性健康与体检调查队列,系统探索 29 项生化指标之间的共享遗传。
共对 1999 名具有 29 项生化指标和 709211 个单核苷酸多态性(SNP)的个体进行了表型组学分析。采用 Pearson 检验、Jaccard 指数和连锁不平衡得分回归三种生物信息学方法。结果表明,29 项生化指标构成一个网络,IgA、IgG、IgE、IgM、HCY、AFP 和 B12 位于 29 项生化指标的中心社区。进一步鉴定与代谢特征相关的关键基因和基因座,共享遗传分析显示 29 个 SNP(P<10)与三个或更多特征相关。将与两个或更多特征相关的 SNP 与 GWAS 目录整合后,发现 31 个 SNP 与几种疾病相关(P<10)。以 ALDH2 为例,初步探讨其生物学功能,还证实 rs671(ALDH2)多态性影响 3T3-L1 前脂肪细胞成骨和脂肪生成分化的多个特征。
所有这些发现表明存在共享遗传和 29 项生化指标的网络,这将有助于全面了解参与生化代谢的遗传。