Department of Epidemiology and Biostatistics, College of Public Health, Zhengzhou University, Zhengzhou, Henan, China.
Department of Endocrinology and Metabolism, the Third Affiliated Hospital of Southern Medical University, Guangzhou, Guangdong, China.
Int J Cardiol. 2019 May 15;283:144-150. doi: 10.1016/j.ijcard.2018.10.102. Epub 2018 Oct 31.
Although genome-wide association studies (GWAS) have been extensively applied in identifying SNP associated with metabolic diseases, the SNPs identified by this prevailing univariate approach only explain a small percentage of the genetic variance of traits. The extensive previous studies have repeatedly shown type2 diabetes (T2D), obesity and coronary artery disease (CAD) have common genetic mechanisms and the overlapping pathophysiological pathways.
The genetic pleiotropy-informed metaCCA method was applied on summary statistics data from three independent meta-GWAS summary statistics to identify shared variants and pleiotropic effect between T2D, obesity and CAD. Furthermore, to refine all genes, we performed gene-based association analyses for these three diseases respectively using VEGAS2. Gene enrichment analysis was applied to explore the potential functional significance of the identified genes.
After metaCCA analysis, 833 SNPs reached the Bonferroni corrected threshold (p < 7.99 × 10) in the univariate SNP-multivariate phenotype analysis, and 327 genes with a significance threshold (p < 3.73 × 10) were identified as potentially pleiotropic genes in the multivariate SNP-multivariate phenotype analysis. By screening the results of gene-based p-values, we identified 22 putative pleiotropic genes which achieved significance threshold in metaCCA analyses and were also associated with at least one disease in the VEGAS2 analyses.
The metaCCA method identified novel variants associated with T2D, obesity and CAD by effectively incorporating information from different GWAS datasets. Our analyses may provide insights for some common therapeutic approaches of metabolic diseases based on the pleiotropic genes and common mechanisms identified.
尽管全基因组关联研究(GWAS)已广泛应用于识别与代谢性疾病相关的 SNP,但这种流行的单变量方法所鉴定的 SNP 仅能解释性状遗传变异的一小部分。先前的广泛研究反复表明,2 型糖尿病(T2D)、肥胖症和冠心病(CAD)具有共同的遗传机制和重叠的病理生理途径。
应用遗传多效性信息的联合协方差分析(metaCCA)方法对来自三个独立的 meta-GWAS 汇总统计数据的汇总统计数据进行分析,以鉴定 T2D、肥胖症和 CAD 之间的共享变异和多效性效应。此外,为了细化所有基因,我们分别对这三种疾病进行了基于基因的关联分析,使用 VEGAS2。对鉴定出的基因进行基因富集分析,以探讨其潜在的功能意义。
经过 metaCCA 分析,在单变量 SNP-多变量表型分析中,833 个 SNP 达到了 Bonferroni 校正阈值(p<7.99×10),在多变量 SNP-多变量表型分析中,327 个具有显著阈值(p<3.73×10)的基因被鉴定为潜在的多效性基因。通过筛选基因的基于基因的 p 值的结果,我们在 metaCCA 分析中鉴定出了 22 个可能的多效性基因,这些基因达到了显著阈值,并且在 VEGAS2 分析中也与至少一种疾病相关。
metaCCA 方法通过有效整合来自不同 GWAS 数据集的信息,鉴定出与 T2D、肥胖症和 CAD 相关的新型变异体。我们的分析可能为代谢性疾病的一些共同治疗方法提供了一些见解,这些方法基于鉴定出的多效性基因和共同机制。