A machine learning approach for Premature Coronary Artery Disease Diagnosis according to Different Ethnicities in Iran
Mohamad Roshanzamir, Roohallah Alizadehsani, Ehsan Zarepur, Noushin, Mohammadifard, Fatemeh Nouri, Mahdi Roshanzamir, Alireza Khosravi, Fereidoon, Nouhi, Nizal Sarrafzadegan

TL;DR
This study investigates the role of ethnicity as a significant risk factor in premature coronary artery disease (PCAD) diagnosis in Iran, demonstrating that including ethnicity improves predictive model performance.
Contribution
The paper introduces a machine learning approach that highlights ethnicity as a key factor in PCAD prediction, which has been underexplored in previous research.
Findings
Ethnicity ranks as the third most important risk factor for PCAD.
Including ethnicity in models improves predictive accuracy.
Gender and age are the most significant predictors.
Abstract
Premature coronary artery disease (PCAD) refers to the early onset of the disease, usually before the age of 55 for men and 65 for women. Coronary Artery Disease (CAD) develops when coronary arteries, the major blood vessels supplying the heart with blood, oxygen, and nutrients, become clogged or diseased. This is often due to many risk factors, including lifestyle and cardiometabolic ones, but few studies were done on ethnicity as one of these risk factors, especially in PCAD. In this study, we tested the rank of ethnicity among the major risk factors of PCAD, including age, gender, body mass index (BMI), visceral obesity presented as waist circumference (WC), diabetes mellitus (DM), high blood pressure (HBP), high low-density lipoprotein cholesterol (LDL-C), and smoking in a large national sample of patients with PCAD from different ethnicities. All patients who met the age criteria…
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Taxonomy
TopicsArtificial Intelligence in Healthcare
