疾病
全基因组关联研究
基因组学
主动脉夹层
人口
孟德尔随机化
医学
生物
单核苷酸多态性
内科学
基因组
遗传学
主动脉
遗传变异
基因
基因型
环境卫生
作者
Avanthi Raghavan,James P. Pirruccello,Patrick T. Ellinor,Mark E. Lindsay
标识
DOI:10.1161/atvbaha.123.318771
摘要
Aortic disease, including dissection, aneurysm, and rupture, carries significant morbidity and mortality and is a notable cause of sudden cardiac death. Much of our knowledge regarding the genetic basis of aortic disease has relied on the study of individuals with Mendelian aortopathies and, until recently, the genetic determinants of population-level variance in aortic phenotypes remained unclear. However, the application of machine learning methodologies to large imaging datasets has enabled researchers to rapidly define aortic traits and mine dozens of novel genetic associations for phenotypes such as aortic diameter and distensibility. In this review, we highlight the emerging potential of genomics for identifying causal genes and candidate drug targets for aortic disease. We describe how deep learning technologies have accelerated the pace of genetic discovery in this field. We then provide a blueprint for translating genetic associations to biological insights, reviewing techniques for locus and cell type prioritization, high-throughput functional screening, and disease modeling using cellular and animal models of aortic disease.
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