A SUPERVISED LEARNING-BASED APPROACH FOR PREDICTING CARDIOMYOPATHY DISEASE IN HEART PATIENTS’ CARDIOVASCULAR HEALTH PREDICTION
Keywords:
Random Forest, ETC, Classification, CardiomyopathyAbstract
Cardiomyopathy is a chronic and often progressive heart condition characterized by abnormalities in the structure or function of the heart muscle. Early detection of cardiomyopathy is essential for effective management and treatment, as it can lead to life-threatening complications such as heart failure, arrhythmias, and sudden cardiac death. Conventional diagnostic methods primarily rely on clinical assessments, electrocardiograms (ECGs), and echocardiography, which may not always provide accurate predictions or early warnings. Moreover, these approaches tend to overlook the potential influence of genetic and lifestyle factors, which are increasingly recognized as critical contributors to cardiomyopathy risk. The conventional diagnostic system for cardiomyopathy suffers from several limitations. Clinical assessments, while valuable, often rely on subjective judgments and may not detect subtle changes in heart function until the disease has progressed significantly. ECGs and echocardiography can be more objective but may miss early-stage cardiomyopathy. Furthermore,these approaches typically do not consider genetic predispositions or lifestyle factors, which can significantly affect disease risk.
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