Using Polygenic Risk Scores for Prioritizing Individuals at Greatest Need of a Cardiovascular Disease Risk Assessment

Author:

Chung Ryan12ORCID,Xu Zhe12ORCID,Arnold Matthew12,Ip Samantha123ORCID,Harrison Hannah3ORCID,Barrett Jessica4ORCID,Pennells Lisa12ORCID,Kim Lois G.125ORCID,Di Angelantonio Emanuele12567ORCID,Paige Ellie89ORCID,Ritchie Scott C.12610ORCID,Inouye Michael12679,Usher‐Smith Juliet A.11ORCID,Wood Angela M.12567ORCID

Affiliation:

1. British Heart Foundation Cardiovascular Epidemiology Unit, Department of Public Health and Primary Care University of Cambridge United Kingdom

2. Heart and Lung Research Institute University of Cambridge United Kingdom

3. Centre for Cancer Genetic Epidemiology, Department of Public Health and Primary Care University of Cambridge United Kingdom

4. Medical Research Council Biostatistics Unit University of Cambridge United Kingdom

5. National Institute for Health and Care Research Blood and Transplant Research Unit in Donor Health and Behaviour University of Cambridge United Kingdom

6. British Heart Foundation Centre of Research Excellence University of Cambridge United Kingdom

7. Health Data Research UK Cambridge Wellcome Genome Campus and University of Cambridge United Kingdom

8. National Centre for Epidemiology and Population Health Australian National University Canberra Australia

9. The George Institute for Global Health UNSW Sydney Australia

10. Cambridge Baker Systems Genomics Initiative, Department of Public Health and Primary Care University of Cambridge United Kingdom

11. Primary Care Unit, Department of Public Health and Primary Care University of Cambridge United Kingdom

Abstract

Background The aim of this study was to provide quantitative evidence of the use of polygenic risk scores for systematically identifying individuals for invitation for full formal cardiovascular disease (CVD) risk assessment. Methods and Results A total of 108 685 participants aged 40 to 69 years, with measured biomarkers, linked primary care records, and genetic data in UK Biobank were used for model derivation and population health modeling. Prioritization tools using age, polygenic risk scores for coronary artery disease and stroke, and conventional risk factors for CVD available within longitudinal primary care records were derived using sex‐specific Cox models. We modeled the implications of initiating guideline‐recommended statin therapy after prioritizing individuals for invitation to a formal CVD risk assessment. If primary care records were used to prioritize individuals for formal risk assessment using age‐ and sex‐specific thresholds corresponding to 5% false‐negative rates, then the numbers of men and women needed to be screened to prevent 1 CVD event are 149 and 280, respectively. In contrast, adding polygenic risk scores to both prioritization and formal assessments, and selecting thresholds to capture the same number of events, resulted in a number needed to screen of 116 for men and 180 for women. Conclusions Using both polygenic risk scores and primary care records to prioritize individuals at highest risk of a CVD event for a formal CVD risk assessment can efficiently prioritize those who need interventions the most than using primary care records alone. This could lead to better allocation of resources by reducing the number of risk assessments in primary care while still preventing the same number of CVD events.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Cardiology and Cardiovascular Medicine

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