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An Approach for prediction of Heart Diseases using Data Mining Techniques

Javed Akhtar, D.L. Gupta

Abstract


ABSTRACT

The healthcare enterprise collects big quantities of Healthcare statistics; however, sadly no
longer all of the facts are mined that is required for discovering hidden styles and effective
decision making. In this paper, we advise efficient genetic algorithm with the again
propagation approach technique for heart disorder prediction. This paper has analyzed
prediction systems for coronary heart diseases the use of records mining strategies. The
gadget makes use of scientific phrases inclusive of gender, blood pressure, ladle cholesterol
like 13 attributes to expect the probability of sufferers getting a coronary heart disease.


Keywords: ANN, CNN, data mining, deep learning, disease prediction and diagnosis, heart
disease, KDD, neural system, machine learning


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References

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DOI: https://doi.org/10.37628/ijmdic.v6i1.1322

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