Phenotypic consequences of lipoprotein(a) in diverse populations
Univ Of North Carolina Chapel Hill, Chapel Hill NC
Investigators
Abstract
ABSTRACT Lipoprotein(a) [Lp(a)], a highly atherogenic, prothrombotic, and proinflammatory lipoprotein, is a causal, independent, and highly heritable {h2=70-90%) cardiovascular disease (CVD) risk factor that is elevated in 1.5 billion people globally. Despite significant stakes and emerging therapies that can reduce Lp(a) by >80%, few overlooks opportunities to anticipate adverse effects of therapeutic Lp(a) lowering, illuminate mechanisms of action, and identify novel treatment indications. A second major research gap is the Eurocentric evidence base of Lp(a), which has persisted despite Lp(a) being recognized as one of the most variable CVD risk factors across populations. This research gap constrains the generalizability, relevance, and reach of evidence that informs Lp(a) clinical, regulatory, and public health decision making. A common factor underlying both research gaps is the absence of validated Lp(a) measures in diverse studies with dense phenotypic data. We propose to address this obstacle by assembling the largest and most ancestrally diverse {African, East Asian, European, Hispanic/Latino, Polynesian, and South Asian populations) consortium with validated Lp(a) measures and genotypic data. To further strengthen diversity, we will measure Lp(a) in African, Polynesian, and South American cohorts using validated assays. Next, to facilitate causal inference in studies without measured Lp(a) but with dense phenotypic data, we will leverage our diverse consortium and statistical genetics advances to construct highly accurate Lp(a) polygenic risk scores (PRS) in all populations. These PRS will then be projected into diverse biobanks with dense genotypic and phenotypic data, but no Lp(a) measures. Finally, we propose a suite of causal inference studies that substitute Lp(a) PRS for measured Lp(a) and examine broad phenotypes. These studies enable well-powered (n=993,708), comprehensive, and generalizable causal inference investigations that are robust to confounding and reverse causation and examine broad phenotype classes. By identifying and characterizing both the anticipated and unanticipated effects of Lp(a) in diverse populations, the proposed study will provide an essential foundation for future efforts that aim to maximize the benefits and minimize the risks of therapeutic Lp(a) lowering for everyone.
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