Cardiovascular Event Prediction by Machine Learning: The Multi-Ethnic Study of Atherosclerosis. Issue 9 (13th October 2017)
- Record Type:
- Journal Article
- Title:
- Cardiovascular Event Prediction by Machine Learning: The Multi-Ethnic Study of Atherosclerosis. Issue 9 (13th October 2017)
- Main Title:
- Cardiovascular Event Prediction by Machine Learning
- Authors:
- Ambale-Venkatesh, Bharath
Yang, Xiaoying
Wu, Colin O.
Liu, Kiang
Hundley, W. Gregory
McClelland, Robyn
Gomes, Antoinette S.
Folsom, Aaron R.
Shea, Steven
Guallar, Eliseo
Bluemke, David A.
Lima, João A.C. - Abstract:
- Abstract : Rationale: : Machine learning may be useful to characterize cardiovascular risk, predict outcomes, and identify biomarkers in population studies. Objective: : To test the ability of random survival forests, a machine learning technique, to predict 6 cardiovascular outcomes in comparison to standard cardiovascular risk scores. Methods and Results: : We included participants from the MESA (Multi-Ethnic Study of Atherosclerosis). Baseline measurements were used to predict cardiovascular outcomes over 12 years of follow-up. MESA was designed to study progression of subclinical disease to cardiovascular events where participants were initially free of cardiovascular disease. All 6814 participants from MESA, aged 45 to 84 years, from 4 ethnicities, and 6 centers across the United States were included. Seven-hundred thirty-five variables from imaging and noninvasive tests, questionnaires, and biomarker panels were obtained. We used the random survival forests technique to identify the top-20 predictors of each outcome. Imaging, electrocardiography, and serum biomarkers featured heavily on the top-20 lists as opposed to traditional cardiovascular risk factors. Age was the most important predictor for all-cause mortality. Fasting glucose levels and carotid ultrasonography measures were important predictors of stroke. Coronary Artery Calcium score was the most important predictor of coronary heart disease and all atherosclerotic cardiovascular disease combined outcomes.Abstract : Rationale: : Machine learning may be useful to characterize cardiovascular risk, predict outcomes, and identify biomarkers in population studies. Objective: : To test the ability of random survival forests, a machine learning technique, to predict 6 cardiovascular outcomes in comparison to standard cardiovascular risk scores. Methods and Results: : We included participants from the MESA (Multi-Ethnic Study of Atherosclerosis). Baseline measurements were used to predict cardiovascular outcomes over 12 years of follow-up. MESA was designed to study progression of subclinical disease to cardiovascular events where participants were initially free of cardiovascular disease. All 6814 participants from MESA, aged 45 to 84 years, from 4 ethnicities, and 6 centers across the United States were included. Seven-hundred thirty-five variables from imaging and noninvasive tests, questionnaires, and biomarker panels were obtained. We used the random survival forests technique to identify the top-20 predictors of each outcome. Imaging, electrocardiography, and serum biomarkers featured heavily on the top-20 lists as opposed to traditional cardiovascular risk factors. Age was the most important predictor for all-cause mortality. Fasting glucose levels and carotid ultrasonography measures were important predictors of stroke. Coronary Artery Calcium score was the most important predictor of coronary heart disease and all atherosclerotic cardiovascular disease combined outcomes. Left ventricular structure and function and cardiac troponin-T were among the top predictors for incident heart failure. Creatinine, age, and ankle-brachial index were among the top predictors of atrial fibrillation. TNF-α (tissue necrosis factor-α) and IL (interleukin)-2 soluble receptors and NT-proBNP (N-Terminal Pro-B-Type Natriuretic Peptide) levels were important across all outcomes. The random survival forests technique performed better than established risk scores with increased prediction accuracy (decreased Brier score by 10%–25%). Conclusions: : Machine learning in conjunction with deep phenotyping improves prediction accuracy in cardiovascular event prediction in an initially asymptomatic population. These methods may lead to greater insights on subclinical disease markers without apriori assumptions of causality. Clinical Trial Registration: : URL:http://www.clinicaltrials.gov . Unique identifier: NCT00005487. Abstract : Supplemental Digital Content is available in the text. … (more)
- Is Part Of:
- Circulation research. Volume 121:Issue 9(2017)
- Journal:
- Circulation research
- Issue:
- Volume 121:Issue 9(2017)
- Issue Display:
- Volume 121, Issue 9 (2017)
- Year:
- 2017
- Volume:
- 121
- Issue:
- 9
- Issue Sort Value:
- 2017-0121-0009-0000
- Page Start:
- Page End:
- Publication Date:
- 2017-10-13
- Subjects:
- atrial fibrillation -- cardiovascular disease -- coronary heart disease -- heart failure -- machine learning -- mortality -- stroke
Cardiovascular system -- Periodicals
Blood -- Circulation -- Periodicals
Blood Circulation
Cardiovascular System
Vascular Diseases
Sang -- Circulation -- Périodiques
Appareil cardiovasculaire -- Périodiques
612.1 - Journal URLs:
- http://circres.ahajournals.org/ ↗
http://www.circresaha.org ↗
http://journals.lww.com ↗ - DOI:
- 10.1161/CIRCRESAHA.117.311312 ↗
- Languages:
- English
- ISSNs:
- 0009-7330
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - 3265.300000
British Library DSC - BLDSS-3PM
British Library STI - ELD Digital store - Ingest File:
- 8300.xml