Paper
22 March 1996 Morphology analysis of EKG R waves using wavelets with adaptive parameters derived from fuzzy logic
Max Aaron Caldwell, William W. Barrington, Richard R. Miles
Author Affiliations +
Abstract
Understanding of the EKG components P, QRS (R wave), and T is essential in recognizing cardiac disorders and arrhythmias. An estimation method is presented that models the R wave component of the EKG by adaptively computing wavelet parameters using fuzzy logic. The parameters are adaptively adjusted to minimize the difference between the original EKG waveform and the wavelet. The R wave estimate is derived from minimizing the combination of mean squared error (MSE), amplitude difference, spread difference, and shift difference. We show that the MSE in both non-noise and additive noise environment is less using an adaptive wavelet than a static wavelet. Research to date has focused on the R wave component of the EKG signal. Extensions of this method to model P and T waves are discussed.
© (1996) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Max Aaron Caldwell, William W. Barrington, and Richard R. Miles "Morphology analysis of EKG R waves using wavelets with adaptive parameters derived from fuzzy logic", Proc. SPIE 2762, Wavelet Applications III, (22 March 1996); https://doi.org/10.1117/12.236042
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Cited by 1 scholarly publication.
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KEYWORDS
Wavelets

Fuzzy logic

Electrocardiography

Fuzzy systems

Lead

Cardiology

Error analysis

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