MSGene: a multistate model using genetic risk and the electronic health record applied to lifetime risk of coronary artery disease.
Sarah M UrbutMing Wai YeungShaan KhurshidSo Mi Jemma ChoArt SchuermansJakob GermanKodi TaraszkaKaavya ParuchuriAkl C FahedPatrick T EllinorLudovic TrinquartGiovanni ParmigianiAlexander GusevPradeep NatarajanPublished in: Nature communications (2024)
Coronary artery disease (CAD) is the leading cause of death among adults worldwide. Accurate risk stratification can support optimal lifetime prevention. Current methods lack the ability to incorporate new information throughout the life course or to combine innate genetic risk factors with acquired lifetime risk. We designed a general multistate model (MSGene) to estimate age-specific transitions across 10 cardiometabolic states, dependent on clinical covariates and a CAD polygenic risk score. This model is designed to handle longitudinal data over the lifetime to address this unmet need and support clinical decision-making. We analyze longitudinal data from 480,638 UK Biobank participants and compared predicted lifetime risk with the 30-year Framingham risk score. MSGene improves discrimination (C-index 0.71 vs 0.66), age of high-risk detection (C-index 0.73 vs 0.52), and overall prediction (RMSE 1.1% vs 10.9%), in held-out data. We also use MSGene to refine estimates of lifetime absolute risk reduction from statin initiation. Our findings underscore our multistate model's potential public health value for accurate lifetime CAD risk estimation using clinical factors and increasingly available genetics toward earlier more effective prevention.
Keyphrases
- coronary artery disease
- electronic health record
- public health
- risk factors
- decision making
- immune response
- healthcare
- cardiovascular disease
- cardiovascular events
- percutaneous coronary intervention
- big data
- genome wide
- coronary artery bypass grafting
- type diabetes
- high resolution
- cross sectional
- acute coronary syndrome
- social media
- machine learning