Intelligent System Research Group, Faculty of Computer Science, Universitas Sriwijaya, Palembang, 30139, Indonesia.
BMC Med Inform Decis Mak. 2023 Jul 28;23(1):139. doi: 10.1186/s12911-023-02233-0.
Signal delineation of a standard 12-lead electrocardiogram (ECG) is a decisive step for retrieving complete information and extracting signal characteristics for each lead in cardiology clinical practice. However, it is arduous to manually assess the leads, as a variety of signal morphological variations in each lead have potential defects in recording, noise, or irregular heart rhythm/beat.
A computer-aided deep-learning algorithm is considered a state-of-the-art delineation model to classify ECG waveform and boundary in terms of the P-wave, QRS-complex, and T-wave and indicated the satisfactory result. This study implemented convolution layers as a part of convolutional neural networks for automated feature extraction and bidirectional long short-term memory as a classifier. For beat segmentation, we have experimented beat-based and patient-based approach.
The empirical results using both beat segmentation approaches, with a total of 14,588 beats were showed that our proposed model performed excellently well. All performance metrics above 95% and 93%, for beat-based and patient-based segmentation, respectively.
This is a significant step towards the clinical pertinency of automated 12-lead ECG delineation using deep learning.
标准 12 导联心电图(ECG)的信号描绘是从每个导联中检索完整信息和提取信号特征的决定性步骤。然而,手动评估导联非常困难,因为每个导联中的各种信号形态变化都可能存在记录、噪声或不规则心率/节拍的缺陷。
计算机辅助深度学习算法被认为是一种先进的描绘模型,可以根据 P 波、QRS 复合体和 T 波对 ECG 波形和边界进行分类,并取得了令人满意的结果。本研究将卷积层作为卷积神经网络的一部分,用于自动特征提取和双向长短期记忆作为分类器。对于节拍分段,我们尝试了基于节拍和基于患者的方法。
使用基于节拍和基于患者的两种分段方法的经验结果显示,我们提出的模型表现出色。基于节拍和基于患者的分段的所有性能指标均超过 95%和 93%。
这是朝着使用深度学习进行自动化 12 导联 ECG 描绘的临床相关性迈出的重要一步。