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Efficient Detection of Ventricular Late Potentials on ECG Signals Based on Wavelet Denoising and SVM Classification

机译:基于小波去噪和SVM分类的高效检测心室晚期电位

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摘要

The analysis of cardiac signals is still regarded as attractive by both the academic community and industry because it helps physicians in detecting abnormalities and improving the diagnosis and therapy of diseases. Electrocardiographic signal processing for detecting irregularities related to the occurrence of low-amplitude waveforms inside the cardiac signal has a considerable workload as cardiac signals are heavily contaminated by noise and other artifacts. This paper presents an effective approach for the detection of ventricular late potential occurrences which are considered as markers of sudden cardiac death risk. Three stages characterize the implemented method which performs a beat-to-beat processing of high-resolution electrocardiograms (HR-ECG). Fifteen lead HR-ECG signals are filtered and denoised for the improvement of signal-to-noise ratio. Five features were then extracted and used as inputs of a classifier based on a machine learning approach. For the performance evaluation of the proposed method, a HR-ECG database consisting of real ventricular late potential (VLP)-negative and semi-simulated VLP-positive patterns was used. Experimental results show that the implemented system reaches satisfactory performance in terms of sensitivity, specificity accuracy, and positive predictivity; in fact, the respective values equal to 98.33%, 98.36%, 98.35%, and 98.52% were achieved.
机译:对心脏信号的分析仍被学术界和行业视为有吸引力,因为它有助于医生检测异常并改善疾病的诊断和治疗。用于检测与心脏信号内部的低幅度波形的发生相关的不规则性的心电图信号处理具有相当大的工作量,因为心脏信号受到噪声和其他伪像的严重污染。本文介绍了检测心室晚期潜在事件的有效方法,被认为是突然心脏死亡风险的标志。三个阶段表征实现的方法,该方法执行高分辨率心电图(HR-ECG)的节拍搏动处理。将十五个引线HR-ECG信号过滤并剥去以提高信噪比。然后基于机器学习方法提取五个特征并用作分类器的输入。对于所提出的方法的性能评估,使用由真实心室晚期电位(VLP)的HR-ECG数据库 - 负和半模拟VLP阳性图案。实验结果表明,在灵敏度,特异性准确性和阳性预测性方面,实施的系统达到了令人满意的性能;实际上,达到了相应的值等于98.33%,98.36%,98.35%和98.52%。

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