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Application of Cross Wavelet Transform for
ECG Pattern Analysis and Classification
Abstract
In this paper, we use cross wavelet transform (XWT) for the analysis and classification of
electrocardiogram (ECG) signals. The cross-correlation between two time-domain signals gives
a measure of similarity between two waveforms. The application of the continuous wavelet
transform to two time series and the cross examination of the two decompositions reveal
localized similarities in time and frequency. Application of the XWT to a pair of data yields
wavelet cross spectrum (WCS) and wavelet coherence (WCOH). The proposed algorithm
analyzes ECG data utilizing XWT and explores the resulting spectral differences. A
pathologically varying pattern from the normal pattern in the QT zone of the inferior leads shows
the presence of inferior myocardial infarction. A normal beat ensemble is selected as the absolute
normal ECG pattern template, and the coherence between various other normal and abnormal
subjects is computed. The WCS and WCOH of various ECG patterns show distinguishing
characteristics over two specific regions R1 and R2, where R1 is the QRS complex area and R2
is the T-wave region. The Physikalisch-Technische Bundesanstalt diagnostic ECG database is
used for evaluation of the methods. A heuristically determined mathematical formula extracts the
parameter(s) from the WCS and WCOH. Empirical tests establish that the parameter(s) are
relevant for classification of normal and abnormal cardiac patterns. The overall accuracy,
sensitivity, and specificity after combining the three leads are obtained as 97.6%, 97.3%, and
98.8%, respectively.
Further Details Contact: A Vinay 9030333433, 08772261612
Email: [email protected] | www.takeoffprojects.com
Existing method:
The application of the continuous wavelet transform to two time series and the cross examination
of the two decompositions reveal localized similarities in time and frequency. Application of the
XWT to a pair of data yields wavelet cross spectrum (WCS) and wavelet coherence (WCOH).
Proposed method:
The proposed algorithm analyzes ECG data utilizing XWT and explores the resulting spectral
differences. A pathologically varying pattern from the normal pattern in the QT zone of the
inferior leads shows the presence of inferior myocardial infarction.
Merits:
1. Output image more enhancement.
Demerits:
1. Time process is very high.
Further Details Contact: A Vinay 9030333433, 08772261612
Email: [email protected] | www.takeoffprojects.com
Results:
Further Details Contact: A Vinay 9030333433, 08772261612
Email: [email protected] | www.takeoffprojects.com