基于PQRST间隔的正常与异常心电信号分类

Noman Naseer, Hammad Nazeer
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引用次数: 15

摘要

在本文中,我们提出了一个系统,该系统能够自动区分正常和异常的心跳从心电图(ECG)获得的信号。通过对心电信号的PQRST区间进行研究,获取特征进行分类。以p波、QRS复波和t波的不同时间间隔作为特征。将这些特征输入到线性判别分析中,对正常和异常心跳进行分类。分类准确率平均在80%以上。结果表明,开发一种能够自动检测所有潜在心脏相关疾病的机器的可行性,这些疾病可以通过人工心电信号识别出来。
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Classification of normal and abnormal ECG signals based on their PQRST intervals
In this paper, we propose a system that is capable of automatically differentiating between normal and abnormal heartbeats of patients using signals acquired from electrocardiography (ECG). The components of the ECG signals, that are PQRST intervals, were studied to acquire features for classification. Different time intervals of p-wave, QRS complex and t-wave were used as features. These features were fed to a linear discriminant analysis to classify the normal and abnormal heartbeats. The classification accuracy was above 80% on average. The results demonstrate the feasibility of development of a machine that is able to automatically detect all potential heart related diseases that can be identified from ECG signals manually.
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