Machine Learning Approach for Cardiovascular Risk and Coronary Artery Calcification Score

Author:

Aditya C. R.1,Sattaru Naveen Chakravarthy2,Gopal Kumaraguruparan3,Rahul R.4,Chandra Shekara G.4,Nasif Omaima5,Alharbi Sulaiman Ali6,Raghavan S. S.7,Jayadhas S. Arockia8ORCID

Affiliation:

1. Department of Computer Science and Engineering, Vidyavardhaka College of Engineering, Mysuru, Karnataka 570002, India

2. Aurora Degree & PG College, Affiliated to Osmania University, Hyderabad, Telangana 500020, India

3. Department of Physiotherapy, College of Health Sciences, Gulf Medical University, Ajman 4184, UAE

4. Department of Mathematics, BMS College of Engineering, Bengaluru, Karnataka 560019, India

5. Department of Physiology, College of Medicine and King Khalid University Hospital, King Saud University, Medical City, PO Box 2925, Riyadh 11461, Saudi Arabia

6. Department of Botany and Microbiology, College of Science, King Saud University, PO Box 2455, Riyadh 11451, Saudi Arabia

7. Department of Microbiology, University of Texas Health and Science Center at Tyler, Tyler 75703, TX, USA

8. Department of EECE, St. Joseph University, Dar es Salaam, Tanzania

Abstract

Coronary artery calcification (CAC) could assist in the discovery of new risk elements for coronary artery disorder. CAC evaluation, on the other hand, is difficult due to the wide range of CAC in the populations. As a reason, evaluating and analysing data among research have become complicated. In the Research of Inherited Risk Factors for Coronary Atherosclerosis, we used CAC information to test the effects of different analytical methodologies on the correlation with recognized cardiovascular risk elements in asymptomatic patients. Cardiac computed tomography (CT) is also seeing an increase in examinations, and machine learning (ML) could assist with the growing amount of extracted data. Furthermore, there are other sectors in cardiac CT where machine learning could be crucial, including coronary calcium scoring, perfusion, and CT angiography. The establishment of risk evaluation algorithms based on information from CAC utilizing machine learning could assist in the categorization of patients undergoing cardiovascular into distinct risk groups and effectively adapt their treatments to their unique situations. Our findings imply that for forecasting CVD occurrences in asymptomatic people, age-sex segmentation by CAC percentile rank is as effective as absolute CAC scoring. Longitudinal population-based investigations are currently underway and would offer further definitive findings. While machine learning is a strong technology with a lot of possibilities, its implementations in the domain of cardiac CAC are generally in the early stages of development and are not currently commonly accessible in medical practise because of the requirement for substantial verification. Enhanced machine learning will, however, have a significant effect on cardiovascular and coronary artery calcification in the upcoming years.

Funder

King Saud University

Publisher

Hindawi Limited

Subject

General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Medicine

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