A Survey on Heart Disease& Diabetes Prediction using Machine Learning

Authors

  • Kamal S.Chandwani Bhabha Engineering & Research Institute, Bhopal, M.P.
  • Monika Raghuwanshi Bhabha Engineering & Research Institute,Bhopal,M.P.

Keywords:

Machine Learning, Prediction, Classification Technique, Decision

Abstract

In recent times, Heart Disease prediction is one of the most complicated tasks in medical field. In the modern era, approximately one person dies per minute due to heart disease. Heart is one of the most important part of the body. It helps to purify and circulate blood to all parts of the body. Most number of deaths in the world are due to Heart Diseases. Some symptoms like chest pain, faster heartbeat, discomfort in breathing are recorded. This data is analysed on regular basis. In this review, an overview of the heart disease and its current procedures is firstly introduced. Furthermore, an in-depth analysis of the most relevant machine learning techniques available on the literature for heart disease prediction is briefly elaborated. The discussed machinelearning algorithms are Decision Tree, SVM, ANN, Naive Bayes, Random Forest, KNN. The algorithms are compared on the basis of features.

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Published

2021-12-30

How to Cite

Kamal S.Chandwani, & Monika Raghuwanshi. (2021). A Survey on Heart Disease& Diabetes Prediction using Machine Learning. Innovative Research Thoughts, 7(4), 5–8. Retrieved from https://irt.shodhsagar.com/index.php/j/article/view/1056