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Prediction of Cardiovascular Diseases based on Machine Learning
Author(s) -
Weicheng Sun,
Ping Zhang,
Zilin Wang,
Dongxu Li
Publication year - 2021
Publication title -
asp transactions on internet of things
Language(s) - English
Resource type - Journals
ISSN - 2788-8401
DOI - 10.52810/tiot.2021.100035
Subject(s) - support vector machine , machine learning , disease , computer science , artificial intelligence , dependency (uml) , random forest , logistic regression , population , data mining , medicine , pathology , environmental health
With the rapid development of artificial intelligence, it is very important to find the pattern of the data from the observed data and the functional dependency relationship between the data. By finding the existing functional dependencies, we can classify and predict them. At present, cardiovascular disease has become a major disease harmful to human health. As a disease with high mortality, the prediction problem of cardiovascular disease is becoming more and more urgent. However, some computer methods are mainly used for disease detection rather than prediction. If the computer method can be used to predict cardiovascular disease in advance and treat it as early as possible, then the consequences of the disease can be reduced to a certain extent. Diseases can be predicted by mechanical methods. Support vector machine (SVM) has strict mathematical theory support, and can deal with nonlinear classification after using kernel techniques. Therefore, support vector machine can be used to predict cardiovascular disease. On the other hand, we also use logical regression and random forest to predict cardiovascular disease. This paper mainly uses the method of machine learning to predict whether the population is sick or not. First of all, we preprocess the obtained data to improve the quality of the data, and then use svm and logical regression to predict, so as to provide reference for the prevention and treatment of cardiovascular diseases.

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