Litcius/Paper detail

The Efficacy of Machine-Learning-Supported Smart System for Heart Disease Prediction

Nurul Absar, Emon Kumar Das, Shamsun Nahar Shoma, Mayeen Uddin Khandaker, Mahadi Hasan Miraz, Mohammad Rashed Iqbal Faruque, Nissren Tamam, Abdelmoneim Sulieman, Refat Khan Pathan

2022Healthcare63 citationsDOIOpen Access PDF

Abstract

The disease may be an explicit status that negatively affects human health. Cardiopathy is one of the common deadly diseases that is attributed to unhealthy human habits compared to alternative diseases. With the help of machine learning (ML) algorithms, heart disease can be noticed in a short time as well as at a low cost. This study adopted four machine learning models, such as random forest (RF), decision tree (DT), AdaBoost (AB), and K-nearest neighbor (KNN), to detect heart disease. A generalized algorithm was constructed to analyze the strength of the relevant factors that contribute to heart disease prediction. The models were evaluated using the datasets Cleveland, Hungary, Switzerland, and Long Beach (CHSLB), and all were collected from Kaggle. Based on the CHSLB dataset, RF, DT, AB, and KNN models predicted an accuracy of 99.03%, 96.10%, 100%, and 100%, respectively. In the case of a single (Cleveland) dataset, only two models, namely RF and KNN, show good accuracy of 93.437% and 97.83%, respectively. Finally, the study used Streamlit, an internet-based cloud hosting platform, to develop a computer-aided smart system for disease prediction. It is expected that the proposed tool together with the ML algorithm will play a key role in diagnosing heart diseases in a very convenient manner. Above all, the study has made a substantial contribution to the computation of strength scores with significant predictors in the prognosis of heart disease.

Topics & Concepts

Random forestAdaBoostMachine learningDecision treeComputer scienceArtificial intelligenceHeart diseaseDiseasePredictive modellingk-nearest neighbors algorithmSupport vector machineMedicineInternal medicineArtificial Intelligence in HealthcareImbalanced Data Classification TechniquesECG Monitoring and Analysis