The CNN-DVIT model achieved an F1 score of 82.9% in the CPSC-2018 dataset, outperforming the latest transformer-based ECG classification algorithms for automatic arrhythmia detection.
12-lead ECG recordings with varied lengths from the CPSC-2018 dataset
CNN-DVIT model (combination of CNNs with depthwise separable convolution and a vision transformer structure with deformable attention)
Latest transformer-based ECG classification algorithms
F1 score for multi-label arrhythmia classification
The proposed CNN-DVIT model demonstrates high accuracy in automatic arrhythmia classification from 12-lead ECGs, potentially aiding clinical diagnosis.
The electrocardiogram (ECG) is a highly effective non-invasive tool for monitoring heart activity and diagnosing cardiovascular diseases (CVDs). Automatic detection of arrhythmia based on ECG plays a critical role in the early prevention and diagnosis of CVDs. In recent years, numerous studies have focused on using deep learning methods to address arrhythmia classification problems. However, the transformer-based neural network in current research still has a limited performance in detecting arrhythmias for the multi-lead ECG. In this study, we propose an end-to-end multi-label arrhythmia classification model for the 12-lead ECG with varied-length recordings. Our model, called CNN-DVIT, is based on a combination of convolutional neural networks (CNNs) with depthwise separable convolution, and a vision transformer structure with deformable attention. Specifically, we introduce the spatial pyramid pooling layer to accept varied-length ECG signals. Experimental results show that our model achieved an F1 score of 82.9% in CPSC-2018. Notably, our CNN-DVIT outperforms the latest transformer-based ECG classification algorithms. Furthermore, ablation experiments reveal that the deformable multi-head attention and depthwise separable convolution are both efficient in extracting features from multi-lead ECG signals for diagnosis. The CNN-DVIT achieved good performance for the automatic arrhythmia detection of ECG signals. This indicates that our research can assist doctors in clinical ECG analysis, providing important support for the diagnosis of arrhythmia and contributing to the development of computer-aided diagnosis technology.
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Yanfang Dong
University of Science and Technology of China
Miao Zhang
Hebei Finance University
Lishen Qiu
University of Science and Technology of China
Micromachines
University of Science and Technology of China
Soochow University
Suzhou Institute of Biomedical Engineering and Technology
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Dong et al. (Tue,) conducted a other in Arrhythmia. CNN-DVIT model vs. Latest transformer-based ECG classification algorithms was evaluated on F1 score. The CNN-DVIT model achieved an F1 score of 82.9% in the CPSC-2018 dataset, outperforming the latest transformer-based ECG classification algorithms for automatic arrhythmia detection.
synapsesocial.com/papers/6a1588435347fbb1739fece4 — DOI: https://doi.org/10.3390/mi14061155