Extended genomic analysis reveals numerous genetic factors involved in coronary artery disease etiology, establishing new therapeutic targets and enabling personalized risk assessment.
Deciphering the genetic architecture of CAD through genomic analysis may establish new therapeutic targets and enable personalized risk stratification using polygenic risk scores.
In the modern era, coronary artery disease (CAD) has become the most common form of heart disease and, due to the severity of its clinical manifestations and its acute complications, is a major cause of morbidity and mortality worldwide. The phenotypic variability of CAD is correlated with the complex etiology, multifactorial (caused by the interaction of genetic and environmental factors) but also monogenic. The purpose of this review is to present the genetic factors involved in the etiology of CAD and their relationship to the pathogenic mechanisms of the disease. Method: we analyzed data from the literature, starting with candidate gene-based association studies, then continuing with extensive association studies such as Genome-Wide Association Studies (GWAS) and Whole Exome Sequencing (WES). The results of these studies revealed that the number of genetic factors involved in CAD etiology is impressive. The identification of new genetic factors through GWASs offers new perspectives on understanding the complex pathophysiological mechanisms that determine CAD. In conclusion, deciphering the genetic architecture of CAD by extended genomic analysis (GWAS/WES) will establish new therapeutic targets and lead to the development of new treatments. The identification of individuals at high risk for CAD using polygenic risk scores (PRS) will allow early prophylactic measures and personalized therapy to improve their prognosis.
Butnariu et al. (Thu,) conducted a review in Coronary artery disease (CAD). Genetic factors was evaluated. Extended genomic analysis reveals numerous genetic factors involved in coronary artery disease etiology, establishing new therapeutic targets and enabling personalized risk assessment.