A Survey on Prediction of Heart Disease Using Data Mining Techniques
@inproceedings{Umadevi2017ASO, title={A Survey on Prediction of Heart Disease Using Data Mining Techniques}, author={Dr. B. Umadevi}, year={2017} }
The major disease which makes sudden demise for the people is the heart diseases in the medical field. It is imperative to predict the disease at a premature phase. The computer aided systems help the doctor as a tool for predicting and diagnosing heart disease. The medical field is dealing with huge amount of data regularly. Handling that large data by traditional way may affect the results. Advanced data mining techniques are used to find out facts in the database and for medical research…Â
6 Citations
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