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Machine Learning Adds to Clinical and CAC Assessments in Predicting 10-Year CHD and CVD Deaths

Abstract

Objectives: The aim of this study was to evaluate whether machine learning (ML) of noncontrast computed tomographic (CT) and clinical variables improves the prediction of atherosclerotic cardiovascular disease (ASCVD) and coronary heart disease (CHD) deaths compared with coronary artery calcium (CAC) Agatston scoring and clinical data.

Background: The CAC score provides a measure of the global burden of coronary atherosclerosis, and its long-term prognostic utility has been consistently shown to have incremental value over clinical risk assessment. However, current approaches fail to integrate all available CT and clinical variables for comprehensive risk assessment.

Methods: The study included data from 66,636 asymptomatic subjects (mean age 54 ± 11 years, 67% men) without established ASCVD undergoing CAC scanning and followed for cardiovascular disease (CVD) and CHD deaths at 10 years. Clinical risk assessment incorporated the ASCVD risk score. For ML, an ensemble boosting approach was used to fit a predictive classifier for outcomes, followed by automated feature selection using information gain ratio. The model-building process incorporated all available clinical and CT data, including the CAC score; the number, volume, and density of CAC plaques; and extracoronary scores; comprising a total of 77 variables. The overall proposed model (ML all) was evaluated using a 10-fold cross-validation framework on the population data and area under the curve (AUC) as metrics. The prediction performance was also compared with 2 traditional scores (ASCVD risk and CAC score) and 2 additional models that were trained using all the clinical data (ML clinical) and CT variables (ML CT).

Results: The AUC by ML all (0.845) for predicting CVD death was superior compared with those obtained by ASCVD risk alone (0.821), CAC score alone (0.781), and ML CT alone (0.804) (p < 0.001 for all). Similarly, for predicting CHD death, AUC by ML all (0.860) was superior to the other analyses (0.835 for ASCVD risk, 0.816 for CAC, and 0.827 for ML CT; p < 0.001).

Conclusions: The comprehensive ML model was superior to ASCVD risk, CAC score, and an ML model fitted using CT variables alone in the prediction of both CVD and CHD death.

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References
1.
Arsanjani R, Xu Y, Dey D, Vahistha V, Shalev A, Nakanishi R . Improved accuracy of myocardial perfusion SPECT for detection of coronary artery disease by machine learning in a large population. J Nucl Cardiol. 2013; 20(4):553-62. PMC: 3732038. DOI: 10.1007/s12350-013-9706-2. View

2.
Blaha M, Budoff M, Tota-Maharaj R, Dardari Z, Wong N, Kronmal R . Improving the CAC Score by Addition of Regional Measures of Calcium Distribution: Multi-Ethnic Study of Atherosclerosis. JACC Cardiovasc Imaging. 2016; 9(12):1407-1416. PMC: 5055410. DOI: 10.1016/j.jcmg.2016.03.001. View

3.
Berman D, Arnson Y, Rozanski A . Assessment of Coronary Calcium Density on Noncontrast Computed Tomography. JACC Cardiovasc Imaging. 2017; 10(8):855-857. DOI: 10.1016/j.jcmg.2017.05.009. View

4.
Blaha M, Whelton S, Al Rifai M, Dardari Z, Shaw L, Al-Mallah M . Rationale and design of the coronary artery calcium consortium: A multicenter cohort study. J Cardiovasc Comput Tomogr. 2016; 11(1):54-61. PMC: 5292281. DOI: 10.1016/j.jcct.2016.11.004. View

5.
Agatston A, Janowitz W, HILDNER F, Zusmer N, VIAMONTE Jr M, Detrano R . Quantification of coronary artery calcium using ultrafast computed tomography. J Am Coll Cardiol. 1990; 15(4):827-32. DOI: 10.1016/0735-1097(90)90282-t. View