CardioInsights: Heart Disease Prediction Using Machine Learning Algorithms

Authors

  • Akanksha Bana Department of Computer Science & Engineering - Data Science, ABES Institute of Technology, Ghaziabad, U.P.,
  • Abhishek Tayal Department of Computer Science & Engineering - Data Science, ABES Institute of Technology, Ghaziabad, U.P.,
  • Jaya Jain Department of Computer Science & Engineering - Data Science, ABES Institute of Technology, Ghaziabad, U.P.,
  • Kshitiz Aggarwal Department of Computer Science & Engineering - Data Science, ABES Institute of Technology, Ghaziabad, U.P.,

Keywords:

Machine learning, Logistic Regression, Random Forest, Heart disease prediction, Medical data analytics

Abstract

In recent years, there has been a critical surge within the predominance of heart illness, and it is related with a increased mortality rate. Our point is to survey the accuracy of wellbeing markers in foreseeing heart illness when compared to the comprehensive set of pointers measured by healthcare experts and the dataset. This handle will include the application of five machine learning models: Coordinations Relapse, K Closest Neighbors, Back Vector Show, Choice tree, and Arbitrary Woodland. Especially Heart Diseases have become a major issue these days. WHO report that over [1]11 million deaths are caused each year worldwide due to heart related complications. Using this we can understand that the condition is very serious. There is an urgent need for some technological solutions which can help in educating people and early diagnosis of these disease. This requires a string infrastructure including a large enough work force, which is a slow process. Sudden increase in the number of patients depict the need for scalability in our medical system. While work force may be limited, we can look for algorithmic solutions for screening and diagnosis stages, due to their correlation with Our project "CardioInsights" is a system that uses predictive capability of machine learning models based on similar data points collected in past. We are going to use the previous medical report data to predict the risk of disease. Using our system patient can estimate chance of being suffer from heart disease. We are trying to provide the user-friendly platform to user that can be access remotely to screening facilities that will predict the risk of heart disease and that will eliminate the load on the medical system.

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SCAD College of Engineering and Technology and Institute of Electrical and Electronics Engineers, Proceedings of the International Conference on Trends in Electronics and Informatics (ICOEI 2019) : 23-25, April 2019.

Published

13-03-2024

How to Cite

Akanksha Bana, Abhishek Tayal, Jaya Jain, & Kshitiz Aggarwal. (2024). CardioInsights: Heart Disease Prediction Using Machine Learning Algorithms. Journal of Applied Optics, 253–262. Retrieved from https://appliedopticsjournal.net/index.php/JAO/article/view/104

Issue

Section

Conference Paper

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