Abstract

In recent decades, heart disease threatens people's health seriously because of its prevalence and high risk of death. Therefore, predicting heart disease through some simple physical indicators obtained from the regular physical examination at an early stage has become a valuable subject. Clinically, it is essential to be sensitive to these indicators related to heart disease to make predictions and provide a reliable basis for further diagnosis. However, the large amount of data makes manual analysis and prediction taxing and arduous. Our research aims to predict heart disease both accurately and quickly through various indicators of the body. In this paper, a novel heart disease prediction model is given. We propose a heart disease prediction algorithm that combines the embedded feature selection method and deep neural networks. This embedded feature selection method is based on the LinearSVC algorithm, using the L1 norm as a penalty item to choose a subset of features significantly associated with heart disease. These features are fed into the deep neural network we built. The weight of the network is initialized with the He initializer to prevent gradient varnishing or explosion so that the predictor can have a better performance. Our model is tested on the heart disease dataset obtained from Kaggle. Some indicators including accuracy, recall, precision, and F1-score are calculated to evaluate the predictor, and the results show that our model achieves 98.56%, 99.35%, 97.84%, and 0.983, respectively, and the average AUC score of the model reaches 0.983, confirming that the method we proposed is efficient and reliable for predicting heart disease.

Highlights

  • Heart disease is a common fatal disease and is currently the number one killer of the global population

  • Artificial intelligence is widely used in prediction to solve this problem, among which machine learning (ML) and deep learning (DL) are the majority. ese prediction models analyze a large amount of medical data to determine whether Journal of Healthcare Engineering a patient has the disease and obtain more accurate prediction results than manual diagnosis

  • Kumar et al [7] evaluated and analyzed three methods: Naıve Bayes (NB), Support Vector Machine (SVM), and Decision tree (DT), and the results showed that methods achieved 81.58%, 61.26%, and 90.79% accuracy. e effect of comparing DT is better than others

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Summary

Introduction

Heart disease is a common fatal disease and is currently the number one killer of the global population. According to the World Health Organization report [1], cardiovascular disease kills 17.9 million people every year, accounting for about 32% of the world’s deaths. E report stated that heart disease and stroke are the leading causes of cardiovascular diseases, accounting for approximately 85% of deaths. Like a circulatory system disease, cardiovascular disease is caused by many factors, such as high blood pressure, smoking, diabetes, and lack of exercise. Heart disease has the characteristics of early detection, early treatment, and early recovery. Erefore, early detection of this illness is the key to treatment. Traditional manual analysis of huge heart disease-related data has the disadvantages of misdiagnosis and is time-consuming. Ese prediction models analyze a large amount of medical data to determine whether Artificial intelligence is widely used in prediction to solve this problem, among which machine learning (ML) and deep learning (DL) are the majority. ese prediction models analyze a large amount of medical data to determine whether

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