ECG Beat Classification using a Sliding Window and Correlation of the Three-bit Linear Prediction Error Signal

A. Al-Shrouf
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引用次数: 2

Abstract

Sudden cardiac arrest (SCA) is responsible for half of all deaths due to heart disease. Most SCAs could be avoided by obtaining an early diagnosis from ECG recordings. The long-term monitoring systems record a large number of beats and require automatic detection and classification of the premature ventricular contraction (PVC) beats. Several ECG beat classification algorithms based on different methodologies have been developed and implemented. This paper presents a novel algorithm for automatic recognition of a premature ventricular contraction (PVC) beat based on a three-bit linear prediction error signal (LPES). The algorithm is composed of three main stages: signal denoising and QRS detection; nonlinear transformation of the linear prediction error signal e(n); and a sliding window. The proposed algorithm was tested using ECG signals from two recognized arrhythmia databases, MIT-BIH and AHA. The selected signals contained normal beats as well as abnormal beats. Sensitivity and specificity parameters were used to measure the accuracy of the proposed classifier. The sensitivity achieved using the proposed algorithm was 96.3% and the specificity was 99.0%. In addition to its accuracy, the main advantages of using the proposed algorithm are its simplicity and robustness.
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基于滑动窗口和3位线性预测误差信号相关性的心电心跳分类
心脏骤停(SCA)造成的死亡占所有心脏病死亡人数的一半。通过心电图记录的早期诊断,大多数sca可以避免。长期监测系统记录了大量的心跳,需要对室性早搏进行自动检测和分类。基于不同方法的心电拍频分类算法已经被开发和实现。提出了一种基于3位线性预测误差信号(LPES)的室性早搏自动识别算法。该算法主要分为三个阶段:信号去噪和QRS检测;线性预测误差信号e(n)的非线性变换;还有一个滑动窗。使用来自MIT-BIH和AHA两个公认的心律失常数据库的心电信号对该算法进行了测试。所选信号中既有正常的心跳,也有异常的心跳。灵敏度和特异性参数用来衡量所提出的分类器的准确性。该算法的灵敏度为96.3%,特异性为99.0%。除了其准确性外,使用该算法的主要优点是其简单性和鲁棒性。
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