A pooling convolution model for multi-classification of ECG and PCG signals.

IF 1.7 4区 医学 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Juliang Wang, Junbin Zang, Qi An, Haoxin Wang, Zhidong Zhang
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引用次数: 0

Abstract

Electrocardiogram (ECG) and phonocardiogram (PCG) signals are physiological signals generated throughout the cardiac cycle. The application of deep learning techniques to recognize ECG and PCG signals can greatly enhance the efficiency of cardiovascular disease detection. Therefore, we propose a series of straightforward and effective pooling convolutional models for the multi-classification of ECG and PCG signals. Initially, these signals undergo preprocessing. Subsequently, we design various structural blocks, including a stacked block (MCM) comprising convolutional layer and max-pooling layers, along with its variations, as well as a residual block (REC). By adjusting the number of structural blocks, these models can handle ECG and PCG data with different sampling rates. In the final tests, the models utilizing the MCM structural block achieved accuracies of 98.70 and 92.58% on the ECG and PCG fusion datasets, respectively. These accuracies surpass those of all networks utilizing its variations. Moreover, compared to the models employing the REC structural block, the accuracies are improved by 0.02 and 4.30%, respectively. Furthermore, this research has been validated through tests conducted on multiple ECG and PCG datasets, along with comparisons to other published literature. To further validate the generalizability of the model, an additional experiment involving the classification of a synchronized ECG-PCG dataset was conducted. This dataset is divided into seven different levels of fatigue based on the amount of exercise performed by each healthy subject during the testing process. The results indicate that the model using the MCM block also achieved the highest accuracy.

用于心电图和 PCG 信号多重分类的集合卷积模型。
心电图(ECG)和心音图(PCG)信号是整个心动周期产生的生理信号。应用深度学习技术识别心电图和 PCG 信号可以大大提高心血管疾病检测的效率。因此,我们提出了一系列简单有效的池卷积模型,用于对心电图和 PCG 信号进行多分类。首先,对这些信号进行预处理。随后,我们设计了各种结构块,包括由卷积层和最大池化层组成的堆叠块(MCM)及其变体,以及残差块(REC)。通过调整结构块的数量,这些模型可以处理不同采样率的心电图和 PCG 数据。在最终测试中,利用 MCM 结构块的模型在心电图和 PCG 融合数据集上的准确率分别达到了 98.70% 和 92.58%。这些准确率超过了所有使用其变体的网络。此外,与采用 REC 结构块的模型相比,准确率分别提高了 0.02% 和 4.30%。此外,这项研究还通过在多个心电图和 PCG 数据集上进行的测试,以及与其他已发表文献的比较进行了验证。为了进一步验证模型的通用性,还进行了一项额外的实验,涉及同步心电图-PCG 数据集的分类。该数据集根据每个健康受试者在测试过程中的运动量分为七个不同的疲劳级别。结果表明,使用 MCM 块的模型也达到了最高的准确率。
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来源期刊
CiteScore
4.10
自引率
6.20%
发文量
179
审稿时长
4-8 weeks
期刊介绍: The primary aims of Computer Methods in Biomechanics and Biomedical Engineering are to provide a means of communicating the advances being made in the areas of biomechanics and biomedical engineering and to stimulate interest in the continually emerging computer based technologies which are being applied in these multidisciplinary subjects. Computer Methods in Biomechanics and Biomedical Engineering will also provide a focus for the importance of integrating the disciplines of engineering with medical technology and clinical expertise. Such integration will have a major impact on health care in the future.
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