Multi-Leads ECG Premature Ventricular Contraction Detection using Tensor Decomposition and Convolutional Neural Network

Tung Hoang, Nicolas Fahier, W. Fang
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引用次数: 8

Abstract

Premature Ventricular Contraction refers to irregular heartbeat and is one common symptom to several heart diseases. Currently, physiological databases are not only large in volume but also complex in dimensional aspect, so that intelligent systems that can process multi-dimensional data to detect Premature Ventricular Contraction (PVC) are highly needed. In this paper, we propose novel models of combinations of multi-leads ECG from the 12 lead ECG St. Petersburg Arrhythmias database to detect PVCs and optimize the required data pre-processing resources for Convolutional Neural Network(CNN) implemented on wearable devices. Although exhibiting fewer performances than previous works, the proposed method is able to perform automatic features extraction, reduce the CNN complexity and is scalable to be applied to 3-Lead to 16-Lead ECG systems. The combination scenarios include Wavelet fusion method and Tucker-decomposition before CNN is deployed as a classifier. The achieved accuracy to detect PVC for tensor-based feature extraction, the most optimized processing technique, is 90.84% with a sensitivity of 78.60% and a specificity of 99.86%.
基于张量分解和卷积神经网络的多导联心电早衰检测
室性早搏是指心律不齐,是几种心脏疾病的常见症状之一。目前,生理数据库不仅体积大,而且维度复杂,因此迫切需要能够处理多维数据的智能系统来检测室性早搏(PVC)。在本文中,我们提出了新的多导联心电图组合模型,从12导联心电图圣彼得堡心律失常数据库中检测室性早搏,并优化卷积神经网络(CNN)在可穿戴设备上实现所需的数据预处理资源。虽然性能不如以往,但该方法能够自动提取特征,降低CNN复杂度,可扩展应用于3导联到16导联的心电系统。在CNN作为分类器部署之前,组合场景包括小波融合方法和塔克分解。优化后的张量特征提取方法检测PVC的准确率为90.84%,灵敏度为78.60%,特异性为99.86%。
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