Electrocardiogram (ECG) monitoring is one of the most powerful technique of cardiovascular disease (CVD) early identification, and the introduction of intelligent wearable ECG devices has enabled daily monitoring. However, due to the need for professional expertise in the ECGs interpretation, general public access has once again been restricted, prompting the need for the development of advanced diagnostic algorithms. Classic rule-based algorithms are now completely outperformed by deep learning based methods. But the advancement of smart diagnostic algorithms is hampered by issues like small dataset, inconsistent data labeling, inefficient use of local and global ECG information, memory and inference time consuming deployment of multiple models, and lack of information transfer between tasks. We propose a multi-resolution model that can sustain high-resolution low-level semantic information throughout, with the help of the development of low-resolution high-level semantic information, by capitalizing on both local morphological information and global rhythm information. From the perspective of effective data leverage and inter-task knowledge transfer, we develop a parameter isolation based ECG continual learning (ECG-CL) approach. We evaluated our model's performance on four open-access datasets by designing segmentation-to-classification for cross-domain incremental learning, minority-to-majority class for category incremental learning, and small-to-large sample for task incremental learning. Our approach is shown to successfully extract informative morphological and rhythmic features from ECG segmentation, leading to higher quality classification results. From the perspective of intelligent wearable applications, the possibility of a comprehensive ECG interpretation algorithm based on single-lead ECGs is also confirmed.
翻译:心电图(ECG)监测是心血管疾病(CVD)早期识别最强有力的技术之一,引入智能可穿戴ECG设备使得可进行日常监测成为可能。然而,由于ECG解读需要专业的专业知识,一般公众的访问再次受到限制,促使开发先进的诊断算法。经典基于规则的算法已经被深度学习算法完全超越。但是智能诊断算法的进步受到问题的限制,如小数据集,不一致的数据标注,本地和全局ECG信息的低效利用,多个模型的内存和推断时间消耗以及任务之间的信息传输。我们提出了一种多分辨率模型,可以通过利用局部形态信息和全局节律信息,帮助低分辨率高级语义信息的发展,持续保持高分辨率的低级语义信息。从有效利用数据和跨任务知识转移的角度出发,我们开发了基于参数隔离的ECG持续学习(ECG-CL)方法。通过设计跨域增量学习的分割-分类、少数类-多数类的类别增量学习和小样本-大样本的任务增量学习,我们评估了我们模型在四个开放数据集上的性能。我们的方法成功地从ECG分割中提取有信息量的形态和节律特征,从而导致更高质量的分类结果。从智能可穿戴应用的角度出发,还证实了基于单导联ECG的全面解读算法的可能性。