Mehta S S, Lingayat N S
Department of Electrical Engineering, J. N. Vyas University, MBM Engineering College, Jodhpur 342001, Rajasthan, India.
Comput Methods Programs Biomed. 2009 Jan;93(1):46-60. doi: 10.1016/j.cmpb.2008.07.014. Epub 2008 Oct 2.
Electrocardiogram (ECG) is characterized by a recurrent wave sequence of P, QRS and T-wave associated with each beat. The performance of the computer-aided ECG analysis systems depends heavily upon the accurate and reliable detection of these component waves. This paper presents an efficient method for the detection of P- and T-waves in 12-lead ECG using support vector machine (SVM). Digital filtering techniques are used to remove power line interference and base line wander. SVM is used as a classifier for the detection of P- and T-waves. The algorithm is validated using original simultaneously recorded 12-lead ECG recordings from the standard CSE ECG database. Significant detection rate of 95.43% is achieved for P-wave detection and 96.89% for T-wave detection. The method successfully detects all kind of morphologies of P- and T-waves. The on-sets and off-sets of the detected P- and T-waves are found to be within the tolerance limits given in CSE library.
心电图(ECG)的特征是每个心动周期都有P波、QRS波群和T波的重复波形序列。计算机辅助心电图分析系统的性能在很大程度上取决于这些组成波的准确可靠检测。本文提出了一种使用支持向量机(SVM)检测12导联心电图中P波和T波的有效方法。采用数字滤波技术去除电力线干扰和基线漂移。支持向量机用作检测P波和T波的分类器。该算法使用标准CSE心电图数据库中同时记录的原始12导联心电图记录进行验证。P波检测的显著检测率为95.43%,T波检测的显著检测率为96.89%。该方法成功检测出各种形态的P波和T波。检测到的P波和T波的起始点和终点在CSE库给出的容限范围内。