Prediction of Coronary Heart Disease using Machine Learning: An Experimental Analysis

@inproceedings{Gonsalves2019PredictionOC,
  title={Prediction of Coronary Heart Disease using Machine Learning: An Experimental Analysis},
  author={Amanda Gonsalves and Fadi Thabtah and Rami Mustafa A. Mohammad and Gurpreet Singh},
  booktitle={ICDLT 2019},
  year={2019}
}
The field of medical analysis is often referred to be a valuable source of rich information. Coronary Heart Disease (CHD) is one of the major causes of death all around the world therefore early detection of CHD can help reduce these rates. The challenge lies in the complexity of the data and correlations when it comes to prediction using conventional techniques. The aim of this research is to use the historical medical data to predict CHD using Machine Learning (ML) technology. The scope of… CONTINUE READING

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