Affiliation:
1. Rajiv Gandhi College of Engineering Research and Technology, Chandrapur.
Abstract
Heart disease remains a leading cause of mortality worldwide, necessitating effective detection and management strategies. In this project, we leverage machine learning algorithms to develop a robust heart disease detection system. The dataset used comprises various clinical attributes such as age, gender, chest pain type, and biochemical markers. Through exploratory data analysis and visualization, we gain insights into the dataset's characteristics and correlations between features. Subsequently, we implement several machine learning algorithms, including Logistic Regression, Decision Tree Classifier, K-Nearest Neighbors (KNN), and Support Vector Classifier (SVC), to predict the presence of heart disease based on patient attributes. Model performance is evaluated using metrics such as accuracy score, enabling comparison and selection of the most effective algorithm for heart disease detection. Our findings underscore the potential of machine learning in augmenting traditional diagnostic approaches and paving the way for early intervention and improved patient outcomes in cardiovascular health
Reference8 articles.
1. [1] Harshit Jindal et al (2021). Machine learning algorithms for heart disease prediction.
2. [2] Purushottam, Kanak Saxena, Richa Sharma. Efficient Heart Disease Prediction System, Procedia Computer Science, Volume 85, 2016, Pages 962-969, ISSN 1877-0509,
3. [3] Sunuwar, Ashish Adhikari et al. Heart Disease Prediction System. International Journal of Software & Hardware Research in Engineering 2021. 10.26821/IJSHRE.9.1.2021.9128
4. [4] SoniJyoti. “Predictive datamining of medical diagnosis”
5. [5] S. Palaniappan and R. Awang, "Intelligent heart disease prediction system using data mining techniques," 2008 IEEE/ACS International Conference on Computer Systems and Applications, 2008, pp. 108-115, DOI: 10.1109/AICCSA.2008.4493524.