Genomics of Complex Disease Unit, Sant Pau Biomedical Research Institute. IIB-Sant Pau, Barcelona, Spain.
Cardiovascular Health Research Unit, Department of Medicine, University of Washington, Seattle, Washington, USA.
J Thromb Haemost. 2022 Jun;20(6):1331-1349. doi: 10.1111/jth.15698. Epub 2022 Mar 29.
Multi-phenotype analysis of genetically correlated phenotypes can increase the statistical power to detect loci associated with multiple traits, leading to the discovery of novel loci. This is the first study to date to comprehensively analyze the shared genetic effects within different hemostatic traits, and between these and their associated disease outcomes.
To discover novel genetic associations by combining summary data of correlated hemostatic traits and disease events.
Summary statistics from genome wide-association studies (GWAS) from seven hemostatic traits (factor VII [FVII], factor VIII [FVIII], von Willebrand factor [VWF] factor XI [FXI], fibrinogen, tissue plasminogen activator [tPA], plasminogen activator inhibitor 1 [PAI-1]) and three major cardiovascular (CV) events (venous thromboembolism [VTE], coronary artery disease [CAD], ischemic stroke [IS]), were combined in 27 multi-trait combinations using metaUSAT. Genetic correlations between phenotypes were calculated using Linkage Disequilibrium Score Regression (LDSC). Newly associated loci were investigated for colocalization. We considered a significance threshold of 1.85 × 10 obtained after applying Bonferroni correction for the number of multi-trait combinations performed (n = 27).
Across the 27 multi-trait analyses, we found 4 novel pleiotropic loci (XXYLT1, KNG1, SUGP1/MAU2, TBL2/MLXIPL) that were not significant in the original individual datasets, were not described in previous GWAS for the individual traits, and that presented a common associated variant between the studied phenotypes.
The discovery of four novel loci contributes to the understanding of the relationship between hemostasis and CV events and elucidate common genetic factors between these traits.
对遗传相关表型进行多表型分析可以提高检测与多种表型相关的基因座的统计能力,从而发现新的基因座。这是迄今为止第一项全面分析不同止血表型内以及这些表型与相关疾病结局之间共享遗传效应的研究。
通过合并相关止血表型和疾病事件的汇总数据来发现新的遗传关联。
使用 metaUSAT 将来自七个止血特征(因子 VII [FVII]、因子 VIII [FVIII]、血管性血友病因子 [VWF]、因子 XI [FXI]、纤维蛋白原、组织型纤溶酶原激活物 [tPA]、纤溶酶原激活物抑制剂 1 [PAI-1])和三个主要心血管(CV)事件(静脉血栓栓塞 [VTE]、冠心病 [CAD]、缺血性中风 [IS])的全基因组关联研究(GWAS)的汇总统计数据,在 27 种多表型组合中进行了组合。使用连锁不平衡得分回归(LDSC)计算表型之间的遗传相关性。对新关联的基因座进行共定位研究。我们考虑了在对所进行的多表型组合数量(n = 27)进行 Bonferroni 校正后获得的 1.85×10 的显著阈值。
在 27 项多表型分析中,我们发现了 4 个新的多效性基因座(XXYLT1、KNG1、SUGP1/MAU2、TBL2/MLXIPL),这些基因座在原始个体数据集不显著,在个体特征的先前 GWAS 中没有描述,并且在研究的表型之间存在共同的关联变异。
四个新基因座的发现有助于理解止血与 CV 事件之间的关系,并阐明这些特征之间的共同遗传因素。