Development of Analytical Approach for an Automated Analysis of Continuous Long-Term Single Lead ECG for Diagnosis of Paroxysmal Atrioventricular Block.

Computing in cardiology Pub Date : 2014-09-07
Muammar M Kabir, Larisa G Tereshchenko
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Abstract

Reliable detection of significant ECG features such as the P-wave, QRS-complex and T-wave are of major clinical importance. In this paper we introduce a new algorithm based on synchrosqueezing wavelet transform for detection of P-waves in long-term ECG recordings. Synchrosqueezing is a powerful time-frequency analysis tool that provides precise frequency representation of a multicomponent signal through mode decomposition. First, we analyzed four wavelet filters with different filter parameters, to identify the best specification for quantification of QRS and P-wave. Second, the algorithm was tested on ECG recording comprising of events with paroxysmal atrioventricular block and validated through visual scanning. Using morlet wavelet with a peak frequency of 5Hz and separation of 0.1Hz, our proposed algorithm was able to detect 95.5% of P-waves. From this study, it appears that synchrosqueezing wavelet transform may provide a powerful robust technique for automated ECG analysis.

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用于诊断阵发性房室传导阻滞的连续长期单导联心电图自动分析方法的发展。
可靠地检测p波、qrs复合体和t波等重要心电图特征具有重要的临床意义。本文提出了一种基于同步压缩小波变换的长期心电记录p波检测新算法。同步压缩是一种功能强大的时频分析工具,它通过模态分解提供多分量信号的精确频率表示。首先,我们分析了四种不同滤波参数的小波滤波器,以确定量化QRS和p波的最佳规格。其次,在包含阵发性房室传导阻滞事件的心电记录上对该算法进行了测试,并通过视觉扫描进行了验证。采用峰值频率为5Hz、分离频率为0.1Hz的morlet小波,检测p波的准确率为95.5%。本研究表明,同步压缩小波变换为自动心电分析提供了一种强大的鲁棒性技术。
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