Using wavelet coefficients for the classification of the electrocardiogram
Citation:
deChazal, P., Reilly, R.B., Using wavelet coefficients for the classification of the electrocardiogram, proceedings of the World Congress on Medical Physics and Biomedical Engineering: Chicago, 2000, pp64-67Download Item:
Abstract:
This study investigates the automatic
classification of the Frank lead electrocardiogram (ECG)
into different pathophysiological disease categories.
Coefficients from the discrete wavelet transform are used
to represent the ECG diagnostic information and a
comparison of the performance of classifiers processing
feature sets generated using different mother wavelets is
made. Fifteen feature sets are calculated from three
Daubechies wavelets, with the decomposition level varied
between 3 and 7. The classification performance of each
feature set was optimised using automatic feature selection
and by combining classifications of multi-beat ECG
information. Throughout the study a database-of 500 ECG
records with examples from seven disease categories was
used. The classification of each record is known with 100%
confidence and is based on ECG independent information.
Using multiple runs of 10-fold cross-validation to obtain all
results, it was shown that the overall classification
performance of the different feature sets was 71.6-74.2%.
In addition, the wavelet order and level had little influence
on the overall performance. Analysis of the automatically
chosen features reveal that time-frequency bands in the
vicinity of the QRS onset and the T-wave are consistently
selected.
Author's Homepage:
http://people.tcd.ie/reillyriDescription:
PUBLISHED
Author: REILLY, RICHARD
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World Congress on Medical Physics and Biomedical EngineeringPublisher:
IEEEType of material:
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