Heterogeneity in the Association Between the Presence of Coronary Artery Calcium and Cardiovascular Events: A Machine-Learning Approach in the MESA Study

Author:

Inoue Kosuke1ORCID,Seeman Teresa E.23,Horwich Tamara4ORCID,Budoff Matthew J.5ORCID,Watson Karol E.4ORCID

Affiliation:

1. Department of Social Epidemiology, Graduate School of Medicine, Kyoto University, Japan (K.I.), UCLA David Geffen School of Medicine

2. Department of Epidemiology, University of California Los Angeles (UCLA) Fielding School of Public Health (T.E.S.), UCLA David Geffen School of Medicine

3. Department of Medicine, Divisions of Geriatrics (T.E.S.), UCLA David Geffen School of Medicine

4. Cardiology (T.H., K.E.W.), UCLA David Geffen School of Medicine

5. Department of Medicine, Lundquist Institute at Harbor UCLA Medical Center, Torrance (M.J.B.).

Abstract

Background: Coronary artery calcium (CAC) has been widely recognized as an important predictor of cardiovascular disease (CVD). Given the finite resources, it is important to identify individuals who would receive the most benefit from detecting positive CAC by screening. However, the evidence is limited as to whether the burden of positive CAC on CVD differs by multidimensional individual characteristics. We sought to investigate the heterogeneity in the association between positive CAC and incident CVD. Methods: This cohort study included adults from MESA (Multi-Ethnic Study of Atherosclerosis) ages ≥45 years and free of cardiovascular disease. After propensity score matching in a 1:1 ratio, we applied a machine learning causal forest model to (1) evaluate the heterogeneity in the association between positive CAC and incident CVD, and (2) predict the increase in CVD risk at 10-years when CAC>0 (versus CAC=0) at the individual level. We then compared the estimated increase in CVD risk when CAC>0 to the absolute 10-year atherosclerotic CVD (ASCVD) risk calculated by the 2013 American College of Cardiology/American Heart Association pooled cohort equations. Results: Across 3328 adults in our propensity score–matched analysis, our causal forest model showed the heterogeneity in the association between CAC>0 and incident CVD. We found a dose–response relationship of the estimated increase in CVD risk when CAC>0 with higher 10-year ASCVD risk. Almost all individuals (2293 of 2428 [94.4%]) with borderline risk of ASCVD or higher showed ≥2.5% increase in CVD risk when CAC>0. Even among 900 adults with low ASCVD risk, 689 (69.2%) showed ≥2.5% increase in CVD risk when CAC>0; these individuals were more likely to be male, Hispanic, and have unfavorable CVD risk factors than others. Conclusions: The expected increases in CVD risk when CAC>0 were heterogeneous across individuals. Moreover, nearly 70% of people with low ASCVD risk showed a large increase in CVD risk when CAC>0, highlighting the need for CAC screening among such low-risk individuals. Future studies are needed to assess whether targeting individuals for CAC measurements based on not only the absolute ASCVD risk but also the expected increase in CVD risk when CAC>0 improves cardiovascular outcomes.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Physiology (medical),Cardiology and Cardiovascular Medicine

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