Classification and Feature Extraction of Biological Signals Using Machine Learning Techniques

Marina Ciocîrlan, A. Udrea
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引用次数: 1

Abstract

Recently, the interest in electrocardiogram (ECG) signal analysis has grown, as it has been seen as a saddle point in diagnosing cardiovascular disease. The ECG is a standard noninvasive method for diagnostic and routine monitoring of the heart. Neural networks were used for automatic disease identification. In this context, the main subject of this article is the classification of ECG signals for the identification of heart functioning problems. Secondarily, we analyze how different acquisition frequencies of the ECG signals lead to variation in neural networks performance. To this end, two data sets containing ECG signals were used: PTB and PTB-XL. Four neural networks architectures were compared in terms of performance: the first and the second are based on convolutional neural networks and the third and fourth are derived from the first two, by adding a new branch containing nonlinear features extracted from the ECG signals. On the PTB database, the best results were obtained with a convolutional neural network with feature injection, with an accuracy of 89.012% for 100 Hz acquired signals. The best results for PTB- XL were obtained with the same network with an accuracy of 85.111% and 100 Hz.
基于机器学习技术的生物信号分类与特征提取
最近,对心电图(ECG)信号分析的兴趣日益增长,因为它已被视为诊断心血管疾病的鞍点。心电图是一种标准的无创心脏诊断和常规监测方法。神经网络用于疾病的自动识别。在此背景下,本文的主要主题是心电信号的分类,以识别心脏功能问题。其次,我们分析了不同的心电信号采集频率对神经网络性能的影响。为此,我们使用了两个包含心电信号的数据集:PTB和PTB- xl。在性能方面比较了四种神经网络结构:第一种和第二种是基于卷积神经网络的,第三种和第四种是在前两种神经网络的基础上,通过添加一个新的分支,包含从心电信号中提取的非线性特征。在PTB数据库上,使用带有特征注入的卷积神经网络获得了最好的结果,对于100 Hz采集的信号,准确率达到89.012%。在相同的网络条件下,PTB- XL的精度为85.111%,精度为100 Hz。
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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