论文标题
铅无关的自我监督学习,用于心电图的本地和全局表示
Lead-agnostic Self-supervised Learning for Local and Global Representations of Electrocardiogram
论文作者
论文摘要
近年来,自我监督的学习方法已显示出未标记数据的预训练的显着改善,并证明对心电图信号有所帮助。但是,心电图的大多数先前的预训练方法都集中在仅捕获全局上下文表示。这阻碍了模型学习心电图的富有成果的表示,这会导致下游任务的性能差。此外,除非模型在相同的一组导线上预先训练,否则他们无法用任意的心电图引线对模型进行微调。在这项工作中,我们提出了一种心电图预训练方法,该方法可以学习本地和全球上下文表示,以更好地对下游任务进行概括和性能。此外,我们将随机铅掩蔽作为一种ECG特异性增强方法,使我们提出的模型可靠地列入一组任意的铅。对两个下游任务,心律不齐分类和患者识别的实验结果表明,我们所提出的方法的表现优于其他最新方法。
In recent years, self-supervised learning methods have shown significant improvement for pre-training with unlabeled data and have proven helpful for electrocardiogram signals. However, most previous pre-training methods for electrocardiogram focused on capturing only global contextual representations. This inhibits the models from learning fruitful representation of electrocardiogram, which results in poor performance on downstream tasks. Additionally, they cannot fine-tune the model with an arbitrary set of electrocardiogram leads unless the models were pre-trained on the same set of leads. In this work, we propose an ECG pre-training method that learns both local and global contextual representations for better generalizability and performance on downstream tasks. In addition, we propose random lead masking as an ECG-specific augmentation method to make our proposed model robust to an arbitrary set of leads. Experimental results on two downstream tasks, cardiac arrhythmia classification and patient identification, show that our proposed approach outperforms other state-of-the-art methods.