de Lannoy, Gaël
[UCL]
De Decker, Arnaud
[UCL]
Verleysen, Michel
[UCL]
One of the most important tasks in automatic annotation of the ECG is the detection of the R spike. The wavelet transform is a widely used tool for R spike detection. The time-frequency decomposition is indeed a powerful tool to analyze non-stationary signals. Still, current methods use consecutive wavelet scales in an a priori restricted range and may therefore lack adaptivity. This paper introduces a supervised learning algorithm which learns the optimal scales for each dataset using the annotations provided by physicians on a small training set. For each record, this method allows a specific set of non consecutive scales to be selected, based on the record characteristics. The selected scales are then used on the original long-term ECG signal recording and a hard thresholding rule is applied on the derivative of the wavelet coefficients to label the R spikes. This algorithm has been tested on the MIT-BIH arrhythmia database and obtains an average sensitivity rate of 99.7% and average positive predictivity rate of 99.7%.
Bibliographic reference |
de Lannoy, Gaël ; De Decker, Arnaud ; Verleysen, Michel. A supervised learning approach based on the continuous wavelet transform for R spike detection in ECG.First International Conference on Bio-inspired Systems and Signal Processing (BIOSIGNALS 2008) (Madeira (Portugal), du 28/01/2008 au 31/01/2008). In: Proceedings of the First International Conference on Bio-inspired Systems and Signal Processing (BIOSIGNALS 2008), Control and communication2008, p.140-145 |
Permanent URL |
http://hdl.handle.net/2078.1/67711 |