School of Information Engineering. Zhengzhou University, Zhengzhou 450001, China.
Department of Automation, School of Electrical Engineering, Zhengzhou University, Zhengzhou 450001, China.
J Healthc Eng. 2021 Apr 24;2021:6684954. doi: 10.1155/2021/6684954. eCollection 2021.
Acquiring electrocardiographic (ECG) signals and performing arrhythmia classification in mobile device scenarios have the advantages of short response time, almost no network bandwidth consumption, and human resource savings. In recent years, deep neural networks have become a popular method to efficiently and accurately simulate nonlinear patterns of ECG data in a data-driven manner but require more resources. Therefore, it is crucial to design deep learning (DL) algorithms that are more suitable for resource-constrained mobile devices. In this paper, KecNet, a lightweight neural network construction scheme based on domain knowledge, is proposed to model ECG data by effectively leveraging signal analysis and medical knowledge. To evaluate the performance of KecNet, we use the Association for the Advancement of Medical Instrumentation (AAMI) protocol and the MIT-BIH arrhythmia database to classify five arrhythmia categories. The result shows that the ACC, SEN, and PRE achieve 99.31%, 99.45%, and 98.78%, respectively. In addition, it also possesses high robustness to noisy environments, low memory usage, and physical interpretability advantages. Benefiting from these advantages, KecNet can be applied in practice, especially wearable and lightweight mobile devices for arrhythmia classification.
在移动设备场景中获取心电图 (ECG) 信号并进行心律失常分类具有响应时间短、几乎不消耗网络带宽和节省人力资源的优势。近年来,深度学习 (DL) 神经网络已成为一种通过数据驱动方式高效准确模拟 ECG 数据非线性模式的流行方法,但需要更多资源。因此,设计更适合资源受限的移动设备的深度学习 (DL) 算法至关重要。在本文中,提出了一种基于领域知识的轻量级神经网络构建方案 KecNet,通过有效利用信号分析和医学知识来对 ECG 数据进行建模。为了评估 KecNet 的性能,我们使用 Association for the Advancement of Medical Instrumentation (AAMI) 协议和 MIT-BIH 心律失常数据库对五种心律失常类别进行分类。结果表明,ACC、SEN 和 PRE 的准确率分别达到 99.31%、99.45%和 98.78%。此外,它还具有对噪声环境的高鲁棒性、低内存使用和物理可解释性优势。得益于这些优势,KecNet 可以应用于实践中,特别是用于心律失常分类的可穿戴和轻量级移动设备。