scholarly journals Heart Disease Risk Predictor

Cardiovascular disease is one of the focused areas is medical area because its origins sickness and death amongst the population of the entire world. Data mining techniques play an important role to convert the large amount of raw data into meaningful information which will help in prediction and decision of Cardiovascular disease. The prediction models were technologically advanced using diverse amalgamation structures and sorting techniques such as k-NN, Naive Bayes, LR, SVM, Neural Network, Decision Tree. It is very necessary for the recital of the prediction models to choose the exact amalgamation of momentous features. The main Aim of the propose System is to develop an develop an Intelligent System using data mining modeling technique. The proposed system retrieves the data set and compare the data set with the predefined trained data set. The existing decision support system cannot predict the complex question for diagnosing the heart disease but the proposed system predicts the complex queries which will help and assist the healthcare practitioners to take appropriate decisions. This proposed system aims to provide a web platform to predict the occurrences of disease on the basis of various symptoms. The user can select various symptoms and can find the diseases with their probabilistic figures.

Circulation ◽  
2008 ◽  
Vol 118 (2) ◽  
Author(s):  
Morris Schambelan ◽  
Peter W.F. Wilson ◽  
Kevin E. Yarasheski ◽  
W. Todd Cade ◽  
Victor G. Dávila-Román ◽  
...  

This chapter discusses key cardiovascular conditions that effect people who live with HIV. HIV can lead to direct effect on the heart and the drug treatments may modify risk factors for heart disease. The chapter reviews the epidemiology of heart diseases in people who live with HIV . Specific disease processes are discussed, including cardiomyopathy, pericardial effusion, myocarditis, and endocarditis. Effect of HIV treatment on cardiovascular risk is discussed. Cardiovascular disease in people who live with HIV is reviewed with a focus on lifestyle changes, and effect of drugs on the heart and risk factors for heart disease. Risk profiling of cardiovascular disease is outlined with some discussion of treatment.


2019 ◽  
Vol 8 (2) ◽  
pp. 4629-4636

Nearly 17.5 million deaths occur due to cardiovascular diseases throughout the world. If we could create such a mechanism or system that could tell people about their heart condition based on their medical history and warn them of any risk than it could be of huge help. In our work, we will use machine learning algorithms to forecast the heart disease risk factor for a person depending upon some attributes in their medical history. The data mining technique Naive Bayes, Decision tree, Support Vector Machine, and Logistic Regression is analyzed on the Heart disease database. The accuracy of different algorithms is measured and then the algorithms are compared.


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