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基于去噪和傅里叶变换的卷积神经网络在心电信号分类中的频谱图。

A Denoising and Fourier Transformation-Based Spectrograms in ECG Classification Using Convolutional Neural Network.

机构信息

Institute of Computer Science, Faculty of Electronics and Information Technology, Warsaw University of Technology, 00-665 Warsaw, Poland.

出版信息

Sensors (Basel). 2022 Dec 7;22(24):9576. doi: 10.3390/s22249576.

Abstract

The non-invasive electrocardiogram (ECG) signals are useful in heart condition assessment and are found helpful in diagnosing cardiac diseases. However, traditional ways, i.e., a medical consultation required effort, knowledge, and time to interpret the ECG signals due to the large amount of data and complexity. Neural networks have been shown to be efficient recently in interpreting the biomedical signals including ECG and EEG. The novelty of the proposed work is using spectrograms instead of raw signals. Spectrograms could be easily reduced by eliminating frequencies with no ECG information. Moreover, spectrogram calculation is time-efficient through short-time Fourier transformation (STFT) which allowed to present reduced data with well-distinguishable form to convolutional neural network (CNN). The data reduction was performed through frequency filtration by taking a specific cutoff value. These steps makes architecture of the CNN model simple which showed high accuracy. The proposed approach reduced memory usage and computational power through not using complex CNN models. A large publicly available PTB-XL dataset was utilized, and two datasets were prepared, i.e., spectrograms and raw signals for binary classification. The highest accuracy of 99.06% was achieved by the proposed approach, which reflects spectrograms are better than the raw signals for ECG classification. Further, up- and down-sampling of the signals were also performed at various sampling rates and accuracies were attained.

摘要

非侵入式心电图 (ECG) 信号可用于心脏状况评估,有助于诊断心脏病。然而,传统方法需要医疗咨询来解读 ECG 信号,因为这些信号数据量大且复杂,需要专业知识和时间。神经网络在解释包括心电图和脑电图在内的生物医学信号方面最近显示出高效性。本研究的新颖之处在于使用频谱图而不是原始信号。频谱图可以通过消除没有 ECG 信息的频率来轻松减少。此外,通过短时傅里叶变换 (STFT) 进行频谱图计算可以提高效率,从而允许将具有良好可分辨形式的减少的数据呈现给卷积神经网络 (CNN)。通过取特定截止值进行频率滤波来实现数据减少。这些步骤使得 CNN 模型的架构简单,从而显示出高精度。该方法通过不使用复杂的 CNN 模型来减少内存使用和计算能力。利用了一个大型公开可用的 PTB-XL 数据集,并准备了两个数据集,即用于二进制分类的频谱图和原始信号。所提出的方法实现了 99.06%的最高精度,这表明频谱图比原始信号更适合 ECG 分类。此外,还对信号进行了上采样和下采样,并在各种采样率下获得了精度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3a56/9780813/416739c77e2c/sensors-22-09576-g001.jpg

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