Comparative Analysis of Machine Learning Methods for Prediction of Heart Diseases

Abstract The problem of combating cardiovascular diseases is becoming increasingly important due to the high level of disability and mortality from heart disease. In this paper, a study of methods for predicting heart disease using electrocardiography and machine learning algorithms was conducted. In total, during the study, 75 000 numerical experiments with various machine learning algorithms and their parameters were conducted. Based on the comparative analysis, the models and methods of machine learning were selected that gave the best results. The following methods were applied: logistic regression, k-nearest neighbors algorithm, decision tree, support-vector machine, Bayesian classifier, random forest, and deep neural networks. The selected models were generalized to identify their parameters and effective application.

Авторы
Savkin M.O. 1 , Lyu D. 1 , Zidun M. 1 , Stepanyan I.V. , Alimbayev Ch.A.
Издательство
Allerton Press, Inc.
Номер выпуска
8
Страницы
789-799
Статус
Опубликовано
Том
51
Год
2022
Организации
  • 1 Росcийский университет дружбы народов
Ключевые слова
machine learning; correlation analysis; digital signal processing; deep neural networks; heart attack prediction; ECG
Дата создания
21.04.2023
Дата изменения
21.04.2023
Постоянная ссылка
https://repository.rudn.ru/ru/records/article/record/93474/
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