A Hybrid Machine Learning Model (NB-SVM) for Cardiovascular Disease Prediction

One of the leading causes of death is heart disease. The prediction of cardiovascular disease remains as a significant challenge in the clinical data analysis domain. Although predicting cardiac disease with a high degree of accuracy is highly challenging, it is possible with Machine Learning (ML) approaches. The implementation of an effective ML system can minimize the need for additional medical testing, minimize human intervention, and predict cardiovascular diseases with high accuracy. This type of assessment can reduce the disease’s severity and mortality rate. Only a few studies show how machine learning techniques might forecast cardiac disease. This study presents a method for improving cardiovascular disease prediction accuracy using Machine Learning (ML) technologies. Various feature combinations and many known classification techniques are used to develop various cardio vascular disease prediction models. The proposed hybrid Machine Learning (ML) prediction model for heart disease leverages a higher degree of performance and accuracy.

[1]  Ashiqur Rahman,et al.  Comparison of Different Machine Learning Algorithms for the Prediction of Coronary Artery Disease , 2020, Journal of Data Analysis and Information Processing.

[2]  Suja Cherukullapurath Mana,et al.  Data analytics to find out the effect of firework emissions on quality of air: A case study , 2019, SECOND INTERNATIONAL CONFERENCE ON MATERIAL SCIENCE, SMART STRUCTURES AND APPLICATIONS: ICMSS-2019.

[3]  Traffic Violation Detection using Principal Component Analysis and Viola Jones Algorithms , 2019, International journal of recent technology and engineering.

[4]  Kasturi Dewi Varathan,et al.  Identification of significant features and data mining techniques in predicting heart disease , 2019, Telematics Informatics.

[5]  Karim Mohammed Rezaul,et al.  Heart Disease Prediction based on External Factors: A Machine Learning Approach , 2019, International Journal of Advanced Computer Science and Applications.

[6]  S. M. M. Hasan,et al.  Comparative Analysis of Classification Approaches for Heart Disease Prediction , 2018, 2018 International Conference on Computer, Communication, Chemical, Material and Electronic Engineering (IC4ME2).

[7]  Ponrathi Athilingam,et al.  A Mobile Health Intervention to Improve Self-Care in Patients With Heart Failure: Pilot Randomized Control Trial , 2017, JMIR cardio.

[8]  Jwan K. Alwan,et al.  The utilisation of machine learning approaches for medical data classification and personal care system mangementfor sickle cell disease , 2017, 2017 Annual Conference on New Trends in Information & Communications Technology Applications (NTICT).

[9]  Mohammad Shorif Uddin,et al.  Analysis of data mining techniques for heart disease prediction , 2016, 2016 3rd International Conference on Electrical Engineering and Information Communication Technology (ICEEICT).

[10]  P. Dhavachelvan,et al.  Recursive Ant Colony Optimization Routing in Wireless Mesh Network , 2016 .

[11]  Deeanna Kelley,et al.  Heart Disease: Causes, Prevention, and Current Research , 2014 .

[12]  Bulusu Lakshmana Deekshatulu,et al.  Prediction of risk score for heart disease using associative classification and hybrid feature subset selection , 2012, 2012 12th International Conference on Intelligent Systems Design and Applications (ISDA).

[13]  Rob Stocker,et al.  Applying k-Nearest Neighbour in Diagnosing Heart Disease Patients , 2012 .

[14]  Abdulkadir Sengür,et al.  Effective diagnosis of heart disease through neural networks ensembles , 2009, Expert Syst. Appl..

[15]  G. Pillai,et al.  SVM Based Decision Support System for Heart Disease Classification with Integer-Coded Genetic Algorithm to Select Critical Features , 2009 .

[16]  L. Parthiban,et al.  Intelligent Heart Disease Prediction System Using CANFIS and Genetic Algorithm , 2007 .