Alqudah Ali Mohammad, Albadarneh Alaa, Abu-Qasmieh Isam, Alquran Hiam
Department of Biomedical Systems and Informatics Engineering, Yarmouk University, Irbid, Jordan.
Australas Phys Eng Sci Med. 2019 Mar;42(1):149-157. doi: 10.1007/s13246-019-00722-z. Epub 2019 Jan 14.
Electrocardiogram (ECG) beat classification is a significant application in computer-aided analysis and diagnosis technologies. This paper proposed a method to detect, extract informative features, and classify ECG beats utilizing real ECG signals available in the standard MIT-BIH Arrhythmia database, with 10,502 beats had been extracted from it. The present study classifies the ECG beat into six classes, normal beat (N), Left bundle branch block beat, Right bundle branch block beat, Premature ventricular contraction, atrial premature beat, and aberrated atrial premature, using Gaussian mixture and wavelets features, and by applying principal component analysis for feature set reduction. The classification process is implemented utilizing two classifier techniques, the probabilistic neural network (PNN) algorithm and Random Forest (RF) algorithm. The achieved accuracy is 99.99%, and 99.97% for PNN and RF respectively. The precision is 99.99%, and 99.98% for PNN and RF respectively. The sensitivity is 99.99%, and 99.81% for PNN and RF respectively, while the specificity is 99.97%, 99.96% for PNN and RF respectively. It has been shown that the combination of Gaussian mixtures coefficients and the wavelets features have provided a valuable information about the heart performance and can be used significantly in arrhythmia classification.
心电图(ECG)搏动分类是计算机辅助分析与诊断技术中的一项重要应用。本文提出了一种利用标准MIT-BIH心律失常数据库中可用的真实ECG信号来检测、提取信息特征并对ECG搏动进行分类的方法,已从中提取了10502个搏动。本研究将ECG搏动分为六类:正常搏动(N)、左束支传导阻滞搏动、右束支传导阻滞搏动、室性早搏、房性早搏和房性早搏伴室内差异性传导,采用高斯混合模型和小波特征,并应用主成分分析来减少特征集。分类过程利用两种分类器技术实现,即概率神经网络(PNN)算法和随机森林(RF)算法。PNN和RF的准确率分别达到99.99%和99.97%。PNN和RF的精确率分别为99.99%和99.98%。PNN和RF的敏感度分别为99.99%和99.81%,而特异度分别为99.97%和99.96%。结果表明,高斯混合系数和小波特征的组合提供了有关心脏性能的有价值信息,可在心律失常分类中发挥重要作用。