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Related Concept Videos

Coronary Artery Disease IV: Preventive Measures01:26

Coronary Artery Disease IV: Preventive Measures

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Effective preventive measures for coronary artery disease (CAD) focus on controlling modifiable risk factors, including cholesterol abnormalities and lifestyle changes.Cholesterol ManagementFirst, the Mediterranean diet and the American Heart Association advocate for maintaining low-density lipoprotein (LDL) cholesterol levels below 100 mg/dL, with a more stringent recommendation of below 70 mg/dL for individuals at high risk. LDL cholesterol, often termed "bad cholesterol," can lead to the...
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Coronary Artery Disease I: Introduction01:30

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Coronary Artery Disease (CAD): An Overview with Scientific InsightsCoronary Artery Disease (CAD), often referred to as C-A-D, is a prevalent blood vessel disorder classified under the broader category of atherosclerosis. Atherosclerosis is a pathological process characterized by the hardening and narrowing of arteries due to the accumulation of atherosclerotic plaques. These plaques are composed of cholesterol, fatty substances, inflammatory cells, calcium, and fibrin, reducing blood flow to...
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Imaging Studies for Cardiovascular System VI: Calcium -Scoring CT01:25

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Calcium-Scoring CT ScanA calcium-scoring CT scan, also known as coronary artery calcium (CAC) scan, detects calcium deposits in the coronary arteries. This test assesses the risk of coronary artery disease (CAD), which can lead to cardiovascular events such as angina, heart failure, and sudden cardiac arrest.A calcium-scoring CT scan is generally recommended for individuals at intermediate risk of CAD without symptoms. It includes:Men aged 40-75 and women aged 50-75: Especially those with a...
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Coronary Artery Disease II: Pathophysiology01:26

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Coronary Artery Disease (CAD) originates from a series of events that impair the function of coronary arteries, the blood vessels responsible for delivering oxygen-rich blood to the heart muscle. The pathophysiology of CAD is closely linked to atherosclerosis, a chronic inflammatory and lipid-driven condition affecting the vascular endothelium.1. Endothelial DamageThe process begins with damage to the vascular endothelium, which serves as a protective barrier between the blood and the vessel...
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Coronary Artery Disease III: Clinical Manifestations01:30

Coronary Artery Disease III: Clinical Manifestations

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Coronary Artery Disease (CAD) is a primary health risk worldwide, leading to significant morbidity and mortality. The condition arises from the buildup of atherosclerotic plaques within the coronary arteries, resulting in diminished blood supply to the heart muscle.The clinical manifestations of CAD vary widely, from asymptomatic stages to severe, life-threatening conditions. Understanding these manifestations is crucial for early diagnosis and effective management.Angina Pectoris: The Warning...
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Coronary Artery Disease V: Interprofessional Care01:27

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Interprofessional care for coronary artery disease includes pharmacological therapy and revascularization procedures.Pharmacological therapy for Coronary Artery Disease (CAD) aims to manage symptoms, prevent complications, and improve patient outcomes through various classes of medications:Antiplatelet Agents:Aspirin and Clopidogrel: These medications inhibit platelet aggregation, preventing blood clots, which is crucial for avoiding heart attacks and strokes. Doctors often prescribe these...
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Updated: Aug 25, 2025

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Effectively Predicting the Presence of Coronary Heart Disease Using Machine Learning Classifiers.

Ch Anwar Ul Hassan1, Jawaid Iqbal2, Rizwana Irfan3

  • 1Department of Creative Technologies, Air University Islamabad, Islamabad 44000, Pakistan.

Sensors (Basel, Switzerland)
|October 14, 2022
PubMed
Summary
This summary is machine-generated.

Machine learning models accurately predict heart disease risk. Random Forest achieved 96% accuracy, improving clinical decision-making for coronary heart disease prevention.

Keywords:
disease predictionheart disease datasetmachine learningsupervised learning

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Area of Science:

  • Cardiology
  • Medical Informatics
  • Machine Learning in Healthcare

Background:

  • Coronary heart disease (CHD) is a leading global cause of mortality.
  • Accurate prediction of CHD remains a significant challenge in clinical data analysis.
  • Machine learning (ML) offers potential for diagnostic assistance and data-driven prediction in healthcare.

Purpose of the Study:

  • To evaluate the effectiveness of eleven ML classifiers for heart disease prediction.
  • To identify key features that enhance the predictability of CHD.
  • To develop and assess ML models for improved CHD risk assessment.

Main Methods:

  • Utilized eleven distinct ML classifiers for heart disease prediction.
  • Employed various feature combinations to optimize prediction models.
  • Applied well-known classification algorithms to clinical datasets.

Main Results:

  • Achieved 95% accuracy using gradient boosted trees and multilayer perceptron models.
  • Random Forest classifier demonstrated superior performance with 96% accuracy.
  • Identified key features that significantly improved CHD prediction accuracy.

Conclusions:

  • ML techniques, particularly Random Forest, are highly effective for CHD prediction.
  • Feature selection and optimized ML models can substantially enhance diagnostic accuracy.
  • ML-based prediction models show promise for clinical decision support in cardiology.