Prediction of Arrhythmias and Acute Myocardial Infarctions using Machine Learning

IF 0.4 Q4 ENGINEERING, MULTIDISCIPLINARY
Darwin Patiño, Jorge Medina, Ricardo Silva, Alfonso Guijarro, José Rodríguez
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引用次数: 1

Abstract

Cardiovascular diseases such as Acute Myocardial Infarction is one of the 3 leading causes of death in the world according to WHO data, in the same way cardiac arrhythmias are very common diseases today, such as atrial fibrillation. The ECG electrocardiogram is the means of cardiac diagnosis that is used in a standardized way throughout the world. Machine learning models are very helpful in classification and prediction problems. Applied to the field of health, ANN, and CNN artificial and neural networks, added to tree-based models such as XGBoost, are of vital help in the prevention and control of heart disease. The present study aims to compare and evaluate learning based on ANN, CNN and XGBoost algorithms by using the Physionet MIT-BIH and PTB ECG databases, which provide ECGs classified with Arrhythmias and Acute Myocardial Infarctions respectively. The learning times and the percentage of Accuracy of the 3 algorithms in the 2 databases are compared separately, and finally the data are crossed to compare the validity and safety of the learning prediction.
使用机器学习预测心律失常和急性心肌梗死
根据世卫组织的数据,急性心肌梗死等心血管疾病是世界上三大主要死亡原因之一,同样,心律失常也是当今非常常见的疾病,如心房颤动。心电图是一种在世界范围内被标准化使用的心脏诊断手段。机器学习模型在分类和预测问题上非常有用。应用于健康领域,ANN和CNN人工和神经网络,加上基于树的模型,如XGBoost,对心脏病的预防和控制有重要帮助。本研究旨在通过使用Physionet MIT-BIH和PTB心电数据库,对基于ANN、CNN和XGBoost算法的学习进行比较和评估,这三个数据库分别提供心律失常和急性心肌梗死的ECG。分别比较3种算法在2个数据库中的学习次数和准确率百分比,最后将数据交叉比较学习预测的有效性和安全性。
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来源期刊
Ingenius-Revista de Ciencia y Tecnologia
Ingenius-Revista de Ciencia y Tecnologia ENGINEERING, MULTIDISCIPLINARY-
CiteScore
0.90
自引率
0.00%
发文量
11
审稿时长
12 weeks
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