Machine Learning Framework to Identify Individuals at Risk of Rapid Progression of Coronary Atherosclerosis: From the PARADIGM Registry

Author:

Han Donghee1,Kolli Kranthi K.2,Al'Aref Subhi J.2,Baskaran Lohendran2,van Rosendael Alexander R.2,Gransar Heidi3,Andreini Daniele4,Budoff Matthew J.5,Cademartiri Filippo6,Chinnaiyan Kavitha7,Choi Jung Hyun8,Conte Edoardo4,Marques Hugo9,de Araújo Gonçalves Pedro9,Gottlieb Ilan10,Hadamitzky Martin11,Leipsic Jonathon A.12,Maffei Erica13,Pontone Gianluca4,Raff Gilbert L.7,Shin Sangshoon14,Kim Yong‐Jin15,Lee Byoung Kwon16,Chun Eun Ju17,Sung Ji Min1,Lee Sang‐Eun1,Virmani Renu18,Samady Habib19,Stone Peter20,Narula Jagat21,Berman Daniel S.22,Bax Jeroen J.23,Shaw Leslee J.2,Lin Fay Y.2,Min James K.2,Chang Hyuk‐Jae1

Affiliation:

1. Division of Cardiology Severance Cardiovascular Hospital Yonsei University College of Medicine Yonsei University Health System Seoul South Korea

2. Department of Radiology NewYork‐Presbyterian Hospital and Weill Cornell Medicine New York NY

3. Department of Imaging Cedars Sinai Medical Center Los Angeles CA

4. Centro Cardiologico Monzino IRCCS Milan Italy

5. Department of Medicine Los Angeles Biomedical Research Institute Torrance CA

6. Cardiovascular Imaging Center SDN IRCCS Naples Italy

7. Department of Cardiology William Beaumont Hospital Royal Oak MI

8. Pusan National University Hospital Busan South Korea

9. UNICA Unit of Cardiovascular Imaging Hospital da Luz Lisboa Portugal

10. Department of Radiology Casa de Saude São Jose Rio de Janeiro Brazil

11. Department of Radiology and Nuclear Medicine German Heart Center Munich Germany

12. Department of Medicine and Radiology University of British Columbia Vancouver BC Canada

13. Department of Radiology Area Vasta 1/ASUR Urbino Italy

14. Ewha Womans University Seoul Hospital Seoul South Korea

15. Seoul National University Hospital Seoul South Korea

16. Gangnam Severance Hospital Yonsei University College of Medicine Seoul Korea

17. Seoul National University Bundang Hospital Sungnam South Korea

18. Department of Pathology CVPath Institute Gaithersburg MD

19. Division of Cardiology Emory University School of Medicine Atlanta GA

20. Cardiovascular Division Brigham and Women's Hospital Harvard Medical School Boston MA

21. Icahn School of Medicine at Mount Sinai Mount Sinai Heart, Zena and Michael A. Wiener Cardiovascular Institute, and Marie‐Josée and Henry R. Kravis Center for Cardiovascular Health New York NY

22. Department of Imaging and Medicine Cedars Sinai Medical Center Los Angeles CA

23. Department of Cardiology Leiden University Medical Center Leiden the Netherlands

Abstract

Background Rapid coronary plaque progression (RPP) is associated with incident cardiovascular events. To date, no method exists for the identification of individuals at risk of RPP at a single point in time. This study integrated coronary computed tomography angiography–determined qualitative and quantitative plaque features within a machine learning (ML) framework to determine its performance for predicting RPP. Methods and Results Qualitative and quantitative coronary computed tomography angiography plaque characterization was performed in 1083 patients who underwent serial coronary computed tomography angiography from the PARADIGM (Progression of Atherosclerotic Plaque Determined by Computed Tomographic Angiography Imaging) registry. RPP was defined as an annual progression of percentage atheroma volume ≥1.0%. We employed the following ML models: model 1, clinical variables; model 2, model 1 plus qualitative plaque features; model 3, model 2 plus quantitative plaque features. ML models were compared with the atherosclerotic cardiovascular disease risk score, Duke coronary artery disease score, and a logistic regression statistical model. 224 patients (21%) were identified as RPP. Feature selection in ML identifies that quantitative computed tomography variables were higher‐ranking features, followed by qualitative computed tomography variables and clinical/laboratory variables. ML model 3 exhibited the highest discriminatory performance to identify individuals who would experience RPP when compared with atherosclerotic cardiovascular disease risk score, the other ML models, and the statistical model (area under the receiver operating characteristic curve in ML model 3, 0.83 [95% CI 0.78–0.89], versus atherosclerotic cardiovascular disease risk score, 0.60 [0.52–0.67]; Duke coronary artery disease score, 0.74 [0.68–0.79]; ML model 1, 0.62 [0.55–0.69]; ML model 2, 0.73 [0.67–0.80]; all P <0.001; statistical model, 0.81 [0.75–0.87], P =0.128). Conclusions Based on a ML framework, quantitative atherosclerosis characterization has been shown to be the most important feature when compared with clinical, laboratory, and qualitative measures in identifying patients at risk of RPP.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Cardiology and Cardiovascular Medicine

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