A MACHINE-LEARNING APPROACH TO DETECT HEART DISEASE

Authors

  •  Turaeva Makhliyo Shokir kizi Author

Keywords:

Diagnosis, internal analysis, Dentistry, effective treatment, treatment plan, Dental diseases

Abstract

 Moreover, heart disease has kept on being the leading cause of death worldwide, hence the importance of coming up with different strategies for early detection and diagnosis. Machine learning algorithms have been found to be very efficient in diagnosing various cardiac diseases, through approaches such as Support Vector Machines (SVM), Random Forest, Neural Networks, and Logistic Regression. The materials of this research consist of a dataset that has various health markers, such as age, blood pressure, cholesterol level, and other clinical factors that are relevant to this issue. The Random Forest classifier was the only one with an incredible accuracy of 97.5% to outsmart the rest of the algorithms used. It also managed to record a 0.998 Area Under the Curve (AUC) score and F1, Precision, and Recall scores of 97.5% .

Author Biography

  •  Turaeva Makhliyo Shokir kizi

    assistant teacher

    “Tashkent University of Information Technologies”, Tashkent, Uzbekistan.

     

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Published

2025-05-11

Issue

Section

Technical Sciences

How to Cite

A MACHINE-LEARNING APPROACH TO DETECT HEART DISEASE. (2025). INTERNATIONAL SCIENTIFIC-ELECTRONIC JOURNAL “PIONEERING STUDIES AND THEORIES”, 1(5), 41-47. https://www.pstjournal.uz/index.php/pst/article/view/47

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