Multimodality Multi-Lead ECG Arrhythmia Classification using Self-Supervised Learning

Thi-Thu-Hong Phan, Duc Le, P. Brijesh, D. Adjeroh, Jingxian Wu, M. Jensen, Ngan T. H. Le
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Abstract

Electrocardiogram (ECG) signal is one of the most effective sources of information mainly employed for the diagnosis and prediction of cardiovascular diseases (CVDs) connected with the abnormalities in heart rhythm. Clearly, single modality ECG (i.e. time series) cannot convey its complete characteristics, thus, exploiting both time and time-frequency modalities in the form of time-series data and spectrogram is needed. Leveraging the cutting-edge self-supervised learning (SSL) technique on unlabeled data, we propose SSL-based multimodality ECG classification. Our proposed network follows SSL learning paradigm and consists of two modules corresponding to pre-stream task, and down-stream task, respectively. In the SSL-pre-stream task, we utilize self-knowledge distillation (KD) techniques with no labeled data, on various transformations and in both time and frequency domains. In the down-stream task, which is trained on labeled data, we propose a gate fusion mechanism to fuse information from multimodality. To evaluate the effectiveness of our approach, ten-fold cross validation on the 12-lead PhysioNet 2020 dataset has been conducted. https://github.com/UARK-AICV/ECG-SSL.
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基于自监督学习的多模态多导联心电图心律失常分类
心电图信号是最有效的信息来源之一,主要用于与心律异常相关的心血管疾病的诊断和预测。显然,单模态ECG(即时间序列)不能传达其完整的特征,因此需要以时间序列数据和频谱图的形式同时利用时间和时频模态。利用前沿的自监督学习(SSL)技术对未标记数据,我们提出了基于SSL的多模态心电分类。我们提出的网络遵循SSL学习范式,由两个模块组成,分别对应于流前任务和下游任务。在ssl预流任务中,我们在各种变换和时域和频域上使用无标记数据的自知识蒸馏(KD)技术。在标记数据训练的下游任务中,我们提出了一种门融合机制来融合来自多模态的信息。为了评估我们方法的有效性,我们在12个先导的PhysioNet 2020数据集上进行了十倍交叉验证。https://github.com/UARK-AICV/ECG-SSL。
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