Chignon Arnaud, Lettre Guillaume
Montreal Heart Institute, Montreal, Quebec, Canada; Faculté de Médecine, Université de Montréal, Montreal, Quebec, Canada.
Montreal Heart Institute, Montreal, Quebec, Canada; Faculté de Médecine, Université de Montréal, Montreal, Quebec, Canada.
Atherosclerosis. 2025 Feb;401:118621. doi: 10.1016/j.atherosclerosis.2024.118621. Epub 2025 Feb 3.
Coronary artery disease (CAD) is due to atherosclerosis, a pathophysiological process that involves several cell-types and results in the accumulation of lipid-rich plaque that disrupt the normal blood flow through the coronary arteries to the heart. Genome-wide association studies have identified 1000s of genetic variants robustly associated with CAD or its traditional risk factors (e.g. blood pressure, blood lipids, type 2 diabetes, smoking). However, gaining biological insights from these genetic discoveries remain challenging because of linkage disequilibrium and the difficulty to interpret the functions of non-coding regulatory elements in the human genome. In this review, we present different statistical methods (e.g. Mendelian randomization) and molecular datasets (e.g. expression or protein quantitative trait loci) that have helped connect CAD-associated variants with genes, biological pathways, and cell-types or tissues. We emphasize that these various strategies make predictions, which need to be validated in orthologous systems. We discuss specific examples where the integration of omics data with GWAS results has prioritized causal CAD variants and genes. Finally, we review how targeted and genome-wide genome editing experiments using the CRISPR/Cas9 toolbox have been used to characterize new CAD genes in human cells. Researchers now have the statistical and bioinformatic methods, the molecular datasets, and the experimental tools to dissect comprehensively the loci that contribute to CAD risk in humans.
冠状动脉疾病(CAD)是由动脉粥样硬化引起的,这是一个涉及多种细胞类型的病理生理过程,会导致富含脂质的斑块积聚,从而扰乱通过冠状动脉向心脏的正常血流。全基因组关联研究已经确定了数千种与CAD或其传统风险因素(如血压、血脂、2型糖尿病、吸烟)密切相关的基因变异。然而,由于连锁不平衡以及难以解释人类基因组中非编码调控元件的功能,从这些基因发现中获得生物学见解仍然具有挑战性。在这篇综述中,我们介绍了不同的统计方法(如孟德尔随机化)和分子数据集(如表达或蛋白质数量性状位点),这些方法和数据集有助于将与CAD相关的变异与基因、生物途径以及细胞类型或组织联系起来。我们强调,这些不同的策略都只是做出预测,需要在直系同源系统中进行验证。我们讨论了组学数据与全基因组关联研究结果整合后确定因果性CAD变异和基因的具体例子。最后,我们回顾了如何使用CRISPR/Cas9工具盒进行靶向和全基因组编辑实验,以在人类细胞中鉴定新的CAD基因。研究人员现在拥有统计和生物信息学方法、分子数据集以及实验工具,可以全面剖析导致人类CAD风险的基因座。