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基于 DL-CCANet 和 TL-CCANet 的多导联心电图分类新方法。

A Novel Approach for Multi-Lead ECG Classification Using DL-CCANet and TL-CCANet.

机构信息

College of Communication Engineering, Jilin University, Changchun 130012, China.

School of Electronic and Information Engineering (SEIE), Zhuhai College of Jilin University, Zhuhai 519041, China.

出版信息

Sensors (Basel). 2019 Jul 21;19(14):3214. doi: 10.3390/s19143214.

Abstract

Cardiovascular disease (CVD) has become one of the most serious diseases that threaten human health. Over the past decades, over 150 million humans have died of CVDs. Hence, timely prediction of CVDs is especially important. Currently, deep learning algorithm-based CVD diagnosis methods are extensively employed, however, most such algorithms can only utilize one-lead ECGs. Hence, the potential information in other-lead ECGs was not utilized. To address this issue, we have developed novel methods for diagnosing arrhythmia. In this work, DL-CCANet and TL-CCANet are proposed to extract abstract discriminating features from dual-lead and three-lead ECGs, respectively. Then, the linear support vector machine specializing in high-dimensional features is used as the classifier model. On the MIT-BIH database, a 95.2% overall accuracy is obtained by detecting 15 types of heartbeats using DL-CCANet. On the INCART database, overall accuracies of 94.01% (II and V1 leads), 93.90% (V1 and V5 leads) and 94.07% (II and V5 leads) are achieved by detecting seven types of heartbeat using DL-CCANet, while TL-CCANet yields a higher overall accuracy of 95.52% using the above three leads. In addition, all of the above experiments are implemented using noisy ECG data. The proposed methods have potential to be applied in the clinic and mobile devices.

摘要

心血管疾病(CVD)已成为威胁人类健康的最严重疾病之一。在过去的几十年中,有超过 1.5 亿人死于 CVD。因此,及时预测 CVD 尤为重要。目前,基于深度学习算法的 CVD 诊断方法被广泛应用,但大多数此类算法只能利用单导联心电图。因此,其他导联心电图中的潜在信息未被利用。为了解决这个问题,我们开发了用于诊断心律失常的新方法。在这项工作中,提出了 DL-CCANet 和 TL-CCANet,分别从双导联和三导联心电图中提取抽象的区分特征。然后,使用专门用于高维特征的线性支持向量机作为分类器模型。在 MIT-BIH 数据库上,使用 DL-CCANet 检测 15 种心跳时,整体准确率达到 95.2%。在 INCART 数据库上,使用 DL-CCANet 检测七种心跳时,II 导联和 V1 导联的整体准确率为 94.01%,V1 导联和 V5 导联的整体准确率为 93.90%,II 导联和 V5 导联的整体准确率为 94.07%,而使用上述三个导联时,TL-CCANet 的整体准确率更高,为 95.52%。此外,所有上述实验均在存在噪声的心电图数据上进行。所提出的方法具有在临床和移动设备中应用的潜力。

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