Risk factors based vessel‐specific prediction for stages of coronary artery disease using Bayesian quantile regression machine learning method: Results from the PARADIGM registry

Author:

Park Hyung‐Bok12,Lee Jina13ORCID,Hong Yongtaek1,Byungchang So4,Kim Wonse45,Lee Byoung K.6,Lin Fay Y.7,Hadamitzky Martin8,Kim Yong‐Jin9,Conte Edoardo10,Andreini Daniele10,Pontone Gianluca10ORCID,Budoff Matthew J.11ORCID,Gottlieb Ilan12,Chun Eun Ju13,Cademartiri Filippo14ORCID,Maffei Erica14,Marques Hugo15,Gonçalves Pedro de A.1516ORCID,Leipsic Jonathon A.17,Shin Sanghoon18,Choi Jung H.19,Virmani Renu20,Samady Habib21,Chinnaiyan Kavitha22,Stone Peter H.23,Berman Daniel S.24,Narula Jagat25,Shaw Leslee J.7,Bax Jeroen J.26,Min James K.7,Kook Woong4,Chang Hyuk‐Jae127ORCID

Affiliation:

1. CONNECT‐AI Research Center, Yonsei University College of Medicine, Yonsei University Health System Seoul South Korea

2. Department of Cardiology Catholic Kwandong University International St. Mary's Hospital Incheon South Korea

3. Brain Korea 21 PLUS Project for Medical Science Yonsei University Seoul South Korea

4. Department of Mathematical Sciences Seoul National University Seoul South Korea

5. MetaEyes Seoul South Korea

6. Department of Cardiology Gangnam Severance Hospital, Yonsei University College of Medicine Seoul South Korea

7. Department of Radiology New York‐Presbyterian Hospital and Weill Cornell Medicine New York City New York USA

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

9. Division of Cardiology Seoul National University College of Medicine, Cardiovascular Center, Seoul National University Hospital Seoul South Korea

10. Centro Cardiologico Monzino, IRCCS Milan Italy

11. Department of Medicine Lundquist Institute at Harbor UCLA Medical Center Torrance California USA

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

13. Seoul National University Bundang Hospital Sungnam South Korea

14. Department of Radiology Fondazione Monasterio/CNR Pisa Italy

15. Unit of Cardiovascular Imaging Hospital da Luz, Catolica Medical School Lisbon Portugal

16. Nova Medical School Lisbon Portugal

17. Department of Medicine and Radiology University of British Columbia Vancouver British Columbia Canada

18. Department of Cardiology Ewha Womans University Seoul Hospital Seoul South Korea

19. Department of Cardiology Pusan University Hospital Busan South Korea

20. Department of Pathology CVPath Institute Gaithersburg Maryland USA

21. Department of Cardiology Georgia Heart Institute, Northeast Georgia Health System Georgia USA

22. Department of Cardiology William Beaumont Hospital Royal Oak Michigan USA

23. Department of Cardiovascular Medicine Brigham and Women's Hospital, Harvard Medical School Boston Massachusetts USA

24. Department of Imaging and Medicine Cedars Sinai Medical Center Los Angeles California USA

25. 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 City New York USA

26. Department of Cardiology Leiden University Medical Center Leiden The Netherlands

27. Department of Cardiology Severance Cardiovascular Hospital, Yonsei University College of Medicine, Yonsei University Health System Seoul South Korea

Abstract

AbstractBackground and HypothesisThe recently introduced Bayesian quantile regression (BQR) machine‐learning method enables comprehensive analyzing the relationship among complex clinical variables. We analyzed the relationship between multiple cardiovascular (CV) risk factors and different stages of coronary artery disease (CAD) using the BQR model in a vessel‐specific manner.MethodsFrom the data of 1,463 patients obtained from the PARADIGM (NCT02803411) registry, we analyzed the lumen diameter stenosis (DS) of the three vessels: left anterior descending (LAD), left circumflex (LCx), and right coronary artery (RCA). Two models for predicting DS and DS changes were developed. Baseline CV risk factors, symptoms, and laboratory test results were used as the inputs. The conditional 10%, 25%, 50%, 75%, and 90% quantile functions of the maximum DS and DS change of the three vessels were estimated using the BQR model.ResultsThe 90th percentiles of the DS of the three vessels and their maximum DS change were 41%–50% and 5.6%–7.3%, respectively. Typical anginal symptoms were associated with the highest quantile (90%) of DS in the LAD; diabetes with higher quantiles (75% and 90%) of DS in the LCx; dyslipidemia with the highest quantile (90%) of DS in the RCA; and shortness of breath showed some association with the LCx and RCA. Interestingly, High‐density lipoprotein cholesterol showed a dynamic association along DS change in the per‐patient analysis.ConclusionsThis study demonstrates the clinical utility of the BQR model for evaluating the comprehensive relationship between risk factors and baseline‐grade CAD and its progression.

Funder

National Research Foundation of Korea

Publisher

Wiley

Subject

Cardiology and Cardiovascular Medicine,General Medicine

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