Validation of Polygenic Scores for QT Interval in Clinical Populations.

Michael A Rosenberg, Steven A Lubitz, Honghuang Lin, Gulum Kosova, Victor M Castro, Paul Huang, Patrick T Ellinor, Roy H Perlis, Christopher Newton-Cheh
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引用次数: 15

Abstract

Background: Polygenic risk scores (PGS) enable rapid estimation of genome-wide susceptibility for traits, which may be useful in clinical settings, such as prediction of QT interval. In this study, we sought to validate PGS for QT interval in 2 real-world cohorts of European ancestry (EA) and African ancestry (AA).

Methods and results: Two thousand nine hundred and fifteen participants of EA and 366 of AA in the MGH CAMP study (Cardiology and Metabolic Patient) were genotyped on a genome-wide array and imputed to the 1000 Genomes reference panel. An additional 820 EA and 57 AA participants in the Partners Biobank were genotyped and used for validation. PGS were created for each individual using effect estimates from association tests with QT interval obtained from prior genome-wide association studies, with variants selected based from multiple significance thresholds in the original study. In regression models, clinical variables explained ≈9% to 10% of total variation in resting QTc in EA individuals and ≈12% to 18% in AA individuals. The PGS significantly increased variation explained at most significance thresholds (P<0.001), with a trend toward increased variation explained at more stringent P value cut points in the CAMP EA cohort (P<0.05). In AA individuals, PGS provided no improvement in variation explained at any significance threshold.

Conclusions: For individuals of European descent, PGS provided a significant increase in variation in QT interval explained compared with a model with only nongenetic factors at nearly every significance level. There was no apparent benefit gained by relaxing the significance threshold from conventional genome-wide significance (P<5×10-8).

Abstract Image

临床人群QT间期多基因评分的验证。
背景:多基因风险评分(PGS)能够快速估计性状的全基因组易感性,这可能在临床环境中有用,如QT间期的预测。在这项研究中,我们试图验证PGS在欧洲血统(EA)和非洲血统(AA)两个现实世界队列中的QT间期。方法和结果:在MGH CAMP研究(心脏病学和代谢患者)中,2915名EA参与者和366名AA参与者在全基因组阵列上进行基因分型,并输入到1000基因组参考面板。partner Biobank中另外820名EA和57名AA参与者进行了基因分型并用于验证。PGS是根据从先前全基因组关联研究中获得的QT间期关联试验的效应估计为每个个体创建的,并根据原始研究中的多个显著性阈值选择变异。在回归模型中,临床变量解释EA个体静息QTc总变异的≈9% ~ 10%,AA个体静息QTc总变异的≈12% ~ 18%。PGS显著增加了在大多数显著性阈值(CAMP EA队列的PP值截断点)上的变异(p结论:对于欧洲血统的个体,与仅具有非遗传因素的模型相比,PGS在几乎每个显著性水平上都显著增加了QT间期的变异。从传统的全基因组显著性放宽显著性阈值没有明显的益处(P-8)。
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来源期刊
Circulation: Cardiovascular Genetics
Circulation: Cardiovascular Genetics CARDIAC & CARDIOVASCULAR SYSTEMS-GENETICS & HEREDITY
自引率
0.00%
发文量
0
审稿时长
6-12 weeks
期刊介绍: Circulation: Genomic and Precision Medicine considers all types of original research articles, including studies conducted in human subjects, laboratory animals, in vitro, and in silico. Articles may include investigations of: clinical genetics as applied to the diagnosis and management of monogenic or oligogenic cardiovascular disorders; the molecular basis of complex cardiovascular disorders, including genome-wide association studies, exome and genome sequencing-based association studies, coding variant association studies, genetic linkage studies, epigenomics, transcriptomics, proteomics, metabolomics, and metagenomics; integration of electronic health record data or patient-generated data with any of the aforementioned approaches, including phenome-wide association studies, or with environmental or lifestyle factors; pharmacogenomics; regulation of gene expression; gene therapy and therapeutic genomic editing; systems biology approaches to the diagnosis and management of cardiovascular disorders; novel methods to perform any of the aforementioned studies; and novel applications of precision medicine. Above all, we seek studies with relevance to human cardiovascular biology and disease.
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