Heart attack, also known as myocardial infarction, is a critical cardiovascular event that requires prompt medical attention. In recent years, data mining techniques have emerged as valuable tools in healthcare research, particularly in predicting and preventing heart attacks. This research focuses on exploring the application of data mining algorithms to analyze diverse health data and develop predictive models for identifying individuals at high risk of experiencing a heart attack.
Gathering and preprocessing various health-related data, including patient demographics, medical history, lifestyle habits, and physiological parameters like blood pressure, cholesterol levels, and glucose levels. These datasets are then subjected to data mining techniques, such as decision trees, support vector machines, logistic regression, and ensemble methods, to discover meaningful patterns and relationships that can aid in predicting heart attack risk.
One of the primary objectives of this research is to identify key risk factors associated with heart attacks. By analyzing a large pool of historical patient data, data mining algorithms can uncover hidden correlations between specific attributes and the occurrence of heart attacks. This knowledge can assist healthcare professionals in designing targeted preventive interventions and personalized treatment plans for high-risk individuals.
Investigates the development of risk prediction models that can provide early warnings to individuals at risk of a heart attack. These models take into account multiple risk factors and generate risk scores, which help in stratifying the population based on their likelihood of experiencing a heart attack within a certain timeframe. By deploying such predictive models, healthcare providers can prioritize resources and interventions for those who are at the highest risk, thus potentially reducing the overall burden of heart disease.