Journal of World Future Medicine, Health and Nursing
Vol. 1 No. 2 (2023)

Prediction Model for Diagnosing Heart Disease Using Classification Algorithm

Pradini, Risqy Siwi (Unknown)
Anshori, Mochammad (Unknown)
Haris, M. Syauqi (Unknown)
Marilia, Busatto (Unknown)
Geraldo, Tostes (Unknown)



Article Info

Publish Date
16 Aug 2023

Abstract

Heart disease often causes death if not treated quickly and appropriately. Early diagnosis can prevent more serious complications and treat heart disease patients best. The existence of a disease prediction model can help health workers to diagnose diseases more quickly and accurately. The heart disease prediction model using a classification algorithm is a system built using machine learning techniques. The classification algorithm chosen is NN, Naive Bayes, Random Forest, and SVM because it is the best algorithm for predicting heart disease. This study makes a comparison of the four algorithms using a dataset of 918 instances with 11 features. The result is that the Random Forest algorithm produces the highest accuracy, with 86.8%, and has the best ability to distinguish classes based on the ROC curve.

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Journal Info

Abbrev

health

Publisher

Subject

Health Professions Medicine & Pharmacology Nursing Public Health Veterinary

Description

Journal of World Future Medicine, Health and Nursing is a leading international journal focused on the global exchange of knowledge in medicine, health, and nursing, as well as advancing research and practice across health disciplines. The journal provides a forum for articles reporting on original ...