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PVC Recognition for Wearable ECGs Using Modified Frequency Slice Wavelet Transform and Convolutional Neural Network

机译:基于改进的频率切片小波变换和卷积神经网络的可穿戴ECG的PVC识别

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Progress in wearable techniques makes the long-term daily electrocardiogram (ECG) monitoring possible. Premature ventricular contraction (PVC) is one of the most common cardiac arrhythmias. This study proposed a method by combining the modified frequency slice wavelet transform (MFSWT) and convolutional neural network (CNN). Training data are from the 2018 China physiological signal challenge (934 PVC and 906 non-PVC recordings). The first 10-s ECG waveforms in each recording were transformed into 2-D time-frequency images (frequency range of 0-50 Hz and size of 300 × 100) using MFSWT. A 25-layer CNN structure was constructed, which includes five convolution layers with kernel size of 3×3, five dropout layers, five ReLU layers, five maximum pooling layers with kernel size of 2 × 2, a flatten layer, two fully connected layers, as well as the input and output layers. Test data were recorded from 12-lead Smart ECG vests, including 775 PVC and 742 non-PVC recordings. Results showed that, the proposed method achieved a high accuracy of 97.89% for PVCon-PVC episodes classification, indicating that the combination of MFSWT and CNN provides new insight to accurately identify PVC from the wearable ECG recordings.
机译:可穿戴技术的进步使长期的每日心电图(ECG)监测成为可能。室性早搏(PVC)是最常见的心律不齐之一。这项研究提出了一种结合改进的频率切片小波变换(MFSWT)和卷积神经网络(CNN)的方法。训练数据来自2018年中国生理信号挑战赛(934张PVC和906张非PVC录音)。使用MFSWT将每个记录中的前10 s ECG波形转换为2D时频图像(频率范围为0-50 Hz,尺寸为300×100)。构造了一个25层的CNN结构,其中包括5个内核大小为3×3的卷积层,5个辍学层,5个ReLU层,5个内核大小为2×2的最大池化层,一个扁平层,两个完全连接的层,以及输入和输出层。测试数据来自12根Smart ECG背心,包括775条PVC和742条非PVC记录。结果表明,该方法对PVC /非PVC发作的分类准确率高达97.89%,这表明MFSWT和CNN的结合为从可穿戴ECG记录中准确识别PVC提供了新的见识。

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