Algorithm of Automatic Differentiation of Myocardial Infarction from Cardiomyopathy based on Electrocardiogram

R. Nasimov, B. Muminov, Sanjar Mirzahalilov, N. Nasimova
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引用次数: 2

Abstract

This article is devoted to the development of a neural network learning algorithm that automatically detects cardiomyopathy based on an electrocardiogram (ECG). It also supports the automatic differentiation of myocardial infarction from cardiomyopathy and the symptoms of a healthy person through the proposed method. As a result, the rate of automatic differentiation of myocardial infarction and healthy person from cardiomyopathy reached 95.7%. Detection and diagnosis of such diseases can now be detected by various means, for example, ECG, laboratory, X-ray, MRI. In this paper, only the ECG-based method was considered.
基于心电图的心肌梗死与心肌病自动鉴别算法
本文致力于开发一种基于心电图(ECG)自动检测心肌病的神经网络学习算法。它也支持自动区分心肌梗死从心肌病和健康人的症状通过提出的方法。结果心肌梗死与健康人与心肌病的自动鉴别率达95.7%。这些疾病的检测和诊断现在可以通过各种手段进行检测,例如心电图、实验室、x射线、核磁共振成像。本文只考虑基于脑电图的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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