CVCEApr 15, 2015

Comparisons of wavelet functions in QRS signal to noise ratio enhancement and detection accuracy

arXiv:1504.03834v22 citations
Originality Synthesis-oriented
AI Analysis

This work addresses noise reduction in ECG analysis for medical diagnostics, but it is incremental as it compares existing wavelet functions without introducing new methods.

The paper compared three wavelet functions for noise removal in QRS detection from ECG signals, finding that the Mexican hat wavelet at specific scales provided the best signal-to-noise ratio enhancement and detection accuracy.

We compare the capability of wavelet functions used for noise removal in preprocessing step of a QRS detection algorithm in the electrocardiogram (ECG) signal. The QRS signal to noise ratio enhancement and the detection accuracy of each wavelet function are evaluated using three measures: (1) the ratio of the maximum beat amplitude to the minimum beat amplitude (RMM), (2) the mean of absolute of time error (MATE), and (3) the figure of merit (FOM). Three wavelet functions from previous well-known publications are explored, i.e., Bior1.3, Db10, and Mexican hat wavelet functions. Results evaluated with the ECG signal from MIT-BIH arrhythmia database show that the Mexican hat wavelet function is better than the others. While the scale 8 of Mexican hat wavelet function can provide the best enhancement in QRS signal to noise ratio, the scale 4 of Mexican hat wavelet function can provide the best detection accuracy. These results may be combined and may enable the use of a single fixed threshold for all ECG records leading to the reduction in computational complexity of the QRS detection algorithm.

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