Cardiothoracic and Vascular Health, Level 12, Kolling Institute of Medical Research, Northern Sydney Local Health District, Royal North Shore Hospital, Sydney, NSW 2065, Australia.
Sydney Medical School, Faculty of Medicine and Health, University of Sydney, Camperdown, NSW 2050, Australia.
Eur J Prev Cardiol. 2022 Mar 30;29(4):580-587. doi: 10.1093/eurjpc/zwaa030.
Coronary artery disease (CAD) remains the leading cause of death worldwide. The role of hypertension, cholesterol, diabetes mellitus, and smoking in driving disease has been well recognized at a population level and has been the target of primary prevention strategies for over 50 years with substantial impact. However, in many cases, these factors alone do not provide enough precision at the individual level to allow physicians and patients to take appropriate preventive measures and many patients continue to suffer acute coronary syndromes in the absence of these risk factors. Recent advances in user-friendly chip designs, high speed throughput, and economic efficiency of genome-wide association studies complemented by advances in statistical analytical approaches have facilitated the rapid development of polygenic risk scores (PRSs). The latest PRSs combine data regarding hundreds of thousands of single-nucleotide polymorphisms to predict chronic diseases including CAD. Novel CAD PRSs are strong predictors of risk and may have application, in a complementary manner with existing risk prediction algorithms. However, there remain substantial controversies, and ultimately, we need to move forward from observational studies to prospectively and rigorously assess the potential impact if widespread implementation is to be aspired to. Consideration needs to be made of ethnicity, sex, as well as age, and risk estimate based on existing non-genomic algorithms. We provide an overview and commentary on the important advances in deriving and validating PRSs, as well as pragmatic considerations that will be required for implementation of the new knowledge into clinical practice.
冠状动脉疾病(CAD)仍然是全球范围内的主要死因。高血压、胆固醇、糖尿病和吸烟在人群水平上对疾病的驱动作用已得到充分认识,并且 50 多年来一直是初级预防策略的目标,产生了重大影响。然而,在许多情况下,这些因素本身在个体水平上提供的精度不足以让医生和患者采取适当的预防措施,许多患者在没有这些危险因素的情况下仍会出现急性冠状动脉综合征。用户友好型芯片设计、高通量和全基因组关联研究的经济效率的最新进展,加上统计分析方法的进步,促进了多基因风险评分(PRSs)的快速发展。最新的 PRSs 结合了关于数十万单核苷酸多态性的数据,以预测包括 CAD 在内的慢性疾病。新型 CAD PRSs 是风险的强有力预测因子,可能与现有的风险预测算法以互补的方式应用。然而,仍存在许多争议,最终,如果要广泛实施,我们需要从观察性研究向前推进,严格评估潜在影响。需要考虑种族、性别以及年龄,并且要根据现有的非基因组算法来估计风险。我们提供了一个概述和评论,阐述了推导和验证 PRSs 的重要进展,以及将新知识应用于临床实践所需的实际考虑因素。