School of Computer Science, Xi'an Polytechnic University, Xi'an 710021, China.
Glasgow College, University of Electronic Science and Technology of China, Chengdu 611731, China.
Math Biosci Eng. 2024 Feb 26;21(3):4286-4308. doi: 10.3934/mbe.2024189.
The electrocardiogram (ECG) is a widely used diagnostic tool for cardiovascular diseases. However, ECG recording is often subject to various noises, which can limit its clinical evaluation. To address this issue, we propose a novel Transformer-based convolutional neural network framework with adaptively parametric ReLU (APtrans-CNN) for ECG signal denoising. The proposed APtrans-CNN architecture combines the strengths of transformers in global feature learning and CNNs in local feature learning to address the inadequacy of learning with long sequence time-series features. By fully exploiting the global features of ECG signals, our framework can effectively extract critical information that is necessary for signal denoising. We also introduce an adaptively parametric ReLU that can assign a value to the negative information contained in the ECG signal, thereby overcoming the limitation of ReLU to retain negative information. Additionally, we introduce a dynamic feature aggregation module that enables automatic learning and retention of valuable features while discarding useless noise information. Results obtained from two datasets demonstrate that our proposed APtrans-CNN can accurately extract pure ECG signals from noisy datasets and is adaptable to various applications. Specifically, when the input consists of ECG signals with a signal-to-noise ratio (SNR) of -4 dB, APtrans-CNN successfully increases the SNR to more than 6 dB, resulting in the diagnostic model's accuracy exceeding 96%.
心电图(ECG)是一种广泛用于心血管疾病诊断的工具。然而,心电图记录常常受到各种噪声的影响,这可能限制其临床评估。为了解决这个问题,我们提出了一种新的基于 Transformer 的卷积神经网络框架,具有自适应参数 ReLU(APtrans-CNN),用于心电图信号去噪。所提出的 APtrans-CNN 架构结合了 Transformer 在全局特征学习和 CNN 在局部特征学习方面的优势,以解决学习长序列时间序列特征的不足。通过充分利用心电图信号的全局特征,我们的框架可以有效地提取对信号去噪至关重要的信息。我们还引入了自适应参数 ReLU,可以为心电图信号中包含的负信息分配一个值,从而克服了 ReLU 保留负信息的局限性。此外,我们引入了一个动态特征聚合模块,能够自动学习和保留有价值的特征,同时丢弃无用的噪声信息。从两个数据集获得的结果表明,我们提出的 APtrans-CNN 可以从噪声数据集中准确地提取纯净的心电图信号,并适应各种应用。具体来说,当输入由信噪比(SNR)为-4dB 的心电图信号组成时,APtrans-CNN 成功地将 SNR 提高到超过 6dB,从而使诊断模型的准确率超过 96%。