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Arrhythmias detection and classification base on single beat ECG analysis

机译:基于单搏心电图分析的心律失常检测和分类

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摘要

The effective manual detection ECG arrhythmia is very important, but it is tedious and time consume. Due to the ECG signal, monitoring may have to be carried out over several hours because the volume of the ECG data is enormous. This difficulty turns out a very high possibility of the analyst missing (or misreading) vital information. Therefore, computer-based analysis and detection of diseases can be very helpful in cardiologist's diagnoses. This paper proposes an algorithm to detect and classify the ECG arrhythmia, which is combined of the novel ECG beat length selection, Discrete Cosine Transform as the feature extraction, and Fisher's Linear Discriminant Analysis as the classifier system. The experimentation results demonstrate that the proposed algorithm classifies five arrhythmia types: normal, left bundle branch block, right bundle branch block, premature ventricular contraction, and atrial premature contraction beat. With the achievement results of 99.11% in terms of Total classification accuracy, 97.01% in terms of sensitivity, and 99.44% in terms of specificity. These obtained results are better than the other existing methods.
机译:有效的手动检测心电图心律失常非常重要,但它既繁琐又耗时。由于ECG信号,由于ECG数据量巨大,可能必须进行几个小时的监视。这种困难导致分析人员极有可能丢失(或误读)重要信息。因此,基于计算机的疾病分析和检测对于心脏病专家的诊断非常有帮助。本文提出了一种检测和分类心电图心律失常的算法,该算法结合了新颖的心电图心跳长度选择,特征提取的离散余弦变换和分类器系统的费舍尔线性判别分析。实验结果表明,该算法将心律失常分为五种类型:正常,左束支传导阻滞,右束支传导阻滞,室性早搏和房性早搏。总分类准确率达到99.11%,灵敏度达到97.01%,特异性达到99.44%。这些获得的结果优于其他现有方法。

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