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Utilizing a suite of machine learning algorithms, this project accurately predicts coronary heart disease by analyzing patient data, with Random Forest outperforming as the most effective classifier.

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kaushikrohit004/Coronary-Heart-Disease-Prediction

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Coronary-Heart-Disease-Prediction

It is concerned with the analysis of the Coronary heart disease prediction with patient datasets including Machine Learning Algorithms. The prediction was made using various algorithms like Logistic Regression, Naive Bayes, Support Vector Machine (Linear), K-Nearest Neighbours, Decision Tree, Random Forest, and XGBoost. AMong then Random Forest Perform best.

The problem addressed here is classification, with input parameters such as sex, slope, ca, etc. and the target as a binary variable. Outcome: Based on the provided dataset it will predict coronary heart disease is present or not.

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Utilizing a suite of machine learning algorithms, this project accurately predicts coronary heart disease by analyzing patient data, with Random Forest outperforming as the most effective classifier.

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