Interpatient ECG Arrhythmia Detection by Residual Attention CNN

基于残差注意力卷积神经网络的病人间心电图心律失常检测

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Abstract

The precise identification of arrhythmia is critical in electrocardiogram (ECG) research. Many automatic classification methods have been suggested so far. However, efficient and accurate classification is still a challenge due to the limited feature extraction and model generalization ability. We integrate attention mechanism and residual skip connection into the U-Net (RA-UNET); besides, a skip connection between the RA-UNET and a residual block is executed as a residual attention convolutional neural network (RA-CNN) for accurate classification. The model was evaluated using the MIT-BIH arrhythmia database and achieved an accuracy of 98.5% and F (1) scores for the classes S and V of 82.8% and 91.7%, respectively, which is far superior to other approaches.

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