Abstract
Cardiovascular diseases, including heart attacks, remain a leading cause of mortality globally. Early prediction and intervention play a critical role in preventing and managing such conditions. This project presents a comprehensive approach to heart attack prediction through the integration of machine learning techniques and a user-friendly graphical user interface (GUI) implemented in Python. The system leverages a dataset of relevant health parameters, including age, blood pressure, cholesterol levels, and other key factors. A machine learning model, trained on historical data, is employed to analyze and predict the likelihood of a heart attack based on these input features. The model's accuracy and efficiency are crucial to its effectiveness, and various algorithms are explored to identify the optimal solution. To enhance accessibility and usability, a GUI is developed using Python's Tkinter library. The GUI enables users to input their health parameters easily and receive an instant prediction regarding their potential risk of a heart attack. The visual representation of the prediction, along with additional informative features, aims to empower individuals to take proactive measures towards a healthier lifestyle. The project not only contributes to the field of cardiovascular health prediction but also serves as an educational tool for users to better understand the factors influencing their cardiovascular well-being. The integration of machine learning into a userfriendly GUI provides a practical and efficient solution for both healthcare professionals and individuals concerned about their heart health.
Published Version
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