Department of Electronics and Computer Engineering, Ngee Ann Polytechnic, Singapore.
Int J Neural Syst. 2013 Aug;23(4):1350014. doi: 10.1142/S0129065713500147. Epub 2013 May 31.
Electrocardiogram (ECG) is the electrical activity of the heart indicated by P, Q-R-S and T wave. The minute changes in the amplitude and duration of ECG depicts a particular type of cardiac abnormality. It is very difficult to decipher the hidden information present in this nonlinear and nonstationary signal. An automatic diagnostic system that characterizes cardiac activities in ECG signals would provide more insight into these phenomena thereby revealing important clinical information. Various methods have been proposed to detect cardiac abnormalities in ECG recordings. Application of higher order spectra (HOS) features is a seemingly promising approach because it can capture the nonlinear and dynamic nature of the ECG signals. In this paper, we have automatically classified five types of beats using HOS features (higher order cumulants) using two different approaches. The five types of ECG beats are normal (N), right bundle branch block (RBBB), left bundle branch block (LBBB), atrial premature contraction (APC) and ventricular premature contraction (VPC). In the first approach, cumulant features of segmented ECG signal were used for classification; whereas in the second approach cumulants of discrete wavelet transform (DWT) coefficients were used as features for classifiers. In both approaches, the cumulant features were subjected to data reduction using principal component analysis (PCA) and classified using three layer feed-forward neural network (NN) and least square-support vector machine (LS-SVM) classifiers. In this study, we obtained the highest average accuracy of 94.52%, sensitivity of 98.61% and specificity of 98.41% using first approach with NN classifier. The developed system is ready clinically to run on large datasets.
心电图(ECG)是心脏的电活动,由 P、Q-R-S 和 T 波表示。ECG 振幅和持续时间的微小变化描绘了特定类型的心脏异常。解析这种非线性和非平稳信号中隐藏的信息非常困难。一种能够描述 ECG 信号中心脏活动的自动诊断系统将提供更多的深入了解这些现象的方法,从而揭示重要的临床信息。已经提出了各种方法来检测 ECG 记录中的心脏异常。应用高阶谱(HOS)特征是一种很有前途的方法,因为它可以捕捉 ECG 信号的非线性和动态特性。在本文中,我们使用 HOS 特征(高阶累积量)自动分类了五种类型的节拍,使用了两种不同的方法。这五种 ECG 节拍分别是正常(N)、右束支传导阻滞(RBBB)、左束支传导阻滞(LBBB)、房性早搏(APC)和室性早搏(VPC)。在第一种方法中,使用分段 ECG 信号的累积量特征进行分类;而在第二种方法中,使用离散小波变换(DWT)系数的累积量作为分类器的特征。在这两种方法中,累积量特征都经过主成分分析(PCA)进行数据降维,并使用三层前馈神经网络(NN)和最小二乘支持向量机(LS-SVM)分类器进行分类。在这项研究中,我们使用 NN 分类器的第一种方法获得了最高的平均准确率 94.52%、灵敏度 98.61%和特异性 98.41%。开发的系统已经准备好可以在大型数据集上进行临床应用。