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Survey on Heart Disease Prediction System Based on Data Mining Techniques


  • Department of Information and Technology, School of Computing Sciences, Vels University, Chennai, India


Objectives: To be familiar with the kinds of coronary illness, and information mining procedures to fight them.

Methods/Statistical analysis: To handle this, data mining concepts and techniques used were discussed to discover hidden patterns from medical domain.

Findings: The purpose of predictions in data mining is to discover trends in patient data through patterns generation to improve the health strategy. The algorithms presented here are with a specific end goal to anticipate the coronary illness which includes some constraint.


Data Mining, CVD Diseases, Disease Prediction.

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