Abstract

Background: Early speculation of cardiovascular disease can help determine the lifestyle change options of high-risk patients, thereby reducing difficulties. We propose a coronary heart disease data set analysis technique to predict people’s risk of danger based on people’s clinically determined history. The methods introduced may be integrated into multiple uses, such for developing decision support system, developing a risk management network, and help for experts and clinical staff.
 Methods: We employed the Framingham Heart study dataset, which is publicly available Kaggle, to train several machine learning classifiers such as logistic regression (LR), K-nearest neighbor (KNN), Naïve Bayes (NB), decision tree (DT), random forest (RF) and gradient boosting classifier (GBC) for disease prediction. The p-value method has been used for feature elimination, and the selected features have been incorporated for further prediction. Various thresholds are used with different classifiers to make predictions. In order to estimating the precision of the classifiers, ROC curve, confusion matrix and AUC value are considered for model verification. The performance of the six classifiers is used for comparison to predict chronic heart disease (CHD).
 Results: After applying the p-value backward elimination statistical method on the 10-year CHD data set, 6 significant features were selected from 14 features with p <0.5. In the performance of machine learning classifiers, GBC has the highest accuracy score, which is 87.61%.
 Conclusions: Statistical methods, such as the combination of p-value backward elimination method and machine learning classifiers, thereby improving the accuracy of the classifier and shortening the running time of the machine.

Highlights

  • Identifying the evidence of risk factors that increase the incidence of cardiovascular illness is one of the significant achievements in the study of disease transmission in the 20th century (Einarson et al 2018)

  • It was orchestrated by different request estimations, for example, K nearest neighbors, support vector machines, naive Bayes, random forests and multi-layer perception just as artificial enhancement by particle swarm optimization (PSO) and ant colony optimization (ACO) techniques Neural Networks

  • Select only based on those important features with a P value less than 0.5, such as Sex_male, age, cigsPerDay, totChol, sysBP and glucose

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Summary

Introduction

Identifying the evidence of risk factors that increase the incidence of cardiovascular illness is one of the significant achievements in the study of disease transmission in the 20th century (Einarson et al 2018). Feature selection based on fast correlation (FCBF) technology can guide redundant features, thereby improving the nature of coronary artery disease arrangements Around it was orchestrated by different request estimations, for example, K nearest neighbors, support vector machines, naive Bayes, random forests and multi-layer perception just as artificial enhancement by particle swarm optimization (PSO) and ant colony optimization (ACO) techniques Neural Networks. We propose a coronary heart disease data set analysis technique to predict people’s risk of danger based on people’s clinically determined history. Results: After applying the p-value backward elimination statistical method on the 10-year CHD data set, 6 significant features were selected from 14 features with p

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