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A Review of Methods for Myocardial Infarction Detection Using of Electrocardiographic Features

机译:心电图特征的心肌梗死检测方法综述

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Various kinds of methods have been developed to detect the myocardial infarction (MI) which becomes one of the biggest causes of death. In this case, early detection of MI is necessary to be done. This article provided the completion of detection techniques for the MI. The detection of MI can be done by using 12 signals of the EKG by submitting entropy energy and morphological features. The initial stages may consist of data preprocessing to eliminate noise and down-sampling, pulse segmentation, data augmentation, and QRS detection. This stage was done to find the electrocardiographic features that can give feature of the incidence of MI. This feature was used for the input methods such as Support Vector Machine and convolutional neural networks (CNN). This study indicated that the detection done using SVM can show performance testing until 99.81%.
机译:已经开发了各种方法来检测成为成为最大死因之一的心肌梗死(MI)。 在这种情况下,需要完成MI的早期检测。 本文提供了MI的检测技术完成。 通过提交熵能和形态特征,可以通过使用EKG的12个信号来完成MI的检测。 初始阶段可以包括数据预处理以消除噪声和下采样,脉冲分割,数据增强和QRS检测。 这一阶段是为找到可以给出MI发病率特征的心电图特征。 此功能用于输入方法,如支持向量机和卷积神经网络(CNN)。 本研究表明,使用SVM的检测可以显示出现的性能测试,直到99.81%。

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