Ventricular Ectopic Beat Classification Using KNN Multi-Feature Classifier

A. Srinivasulu, N. Sriraam
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引用次数: 2

Abstract

The detection of ventricular ectopic beats (VEB) in Electrocardiogram (ECG) plays a vital role in the diagnosis of cardiovascular diseases like ventricular tachycardia and ventricular fibrillation, which causes sudden death. This paper discusses the beat interval based features for the automated detection of ventricular ectopic beats. Five-time domain features, pre RR interval, post RR interval, QRS width, QR slope and RS slope are considered and a KNN classifier is employed to classify normal and ventricular ectopic beats. The proposed study make use of ECG signals derived from MIT-BIH arrhythmia database. The quantitative results are compared with qualitative assessment recorded already in the database. The overall classification accuracy achieved is 98.67% and the accuracy for normal & ventricular ectopic beats is 98.81% & 95.12% respectively with the Sensitivity of 95.12%, Specificity of 99.11% and Positive Predictivity of 92.85%.
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基于KNN多特征分类器的室性异搏分类
心电图中室性异位搏(VEB)的检测对于室性心动过速、心室颤动等心血管疾病的诊断具有重要意义。本文讨论了基于心跳间隔特征的室性异搏自动检测方法。考虑五时域特征、RR前间隔、RR后间隔、QRS宽度、QR斜率和RS斜率,并采用KNN分类器对正常和室性异位搏进行分类。本研究使用来自MIT-BIH心律失常数据库的心电信号。将定量结果与数据库中已记录的定性评估结果进行比较。总体分类准确率为98.67%,对正常和室性异位搏的准确率分别为98.81%和95.12%,敏感性为95.12%,特异性为99.11%,阳性预测率为92.85%。
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