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Electrocardiogram based arrhythmia classification using wavelet transform with deep learning model

Shadhon Chandra Mohonta, Mohammod Abdul Motin, Dinesh Kumar

2022Sensing and Bio-Sensing Research63 citationsDOIOpen Access PDF

Abstract

High-risk patients of cardiovascular disease can be provided with computerized electrocardiogram (ECG) devices to detect Arrhythmia. These require long segments of quality ECG which however can lead to missing the episode. To overcome this, we have proposed a deep-learning approach, where the scalogram obtained by continuous wavelet transform (CWT) is classified by the network based on the signature corresponding to arrhythmia. The CWT of the recordings is obtained and used to train the 2D convolutional neural network (CNN) for automatic arrhythmia detection. The proposed model is trained and tested to identify five types of heartbeats such as normal, left bundle branch block, right bundle branch block, atrial premature, and premature ventricular contraction. The model shows an average sensitivity, specificity, and accuracy to be 98.87%, 99.85%, and 99.65%, respectively. The result shows that the proposed model can detect arrhythmia effectively from short segments of ECG and has the potential for being used for personalised and digital healthcare.

Topics & Concepts

Right bundle branch blockDeep learningArtificial intelligenceConvolutional neural networkCardiac arrhythmiaPattern recognition (psychology)Computer scienceContinuous wavelet transformBlock (permutation group theory)Left bundle branch blockWavelet transformElectrocardiographyWaveletCardiologyMedicineDiscrete wavelet transformMathematicsAtrial fibrillationHeart failureGeometryECG Monitoring and AnalysisEEG and Brain-Computer InterfacesNon-Invasive Vital Sign Monitoring
Electrocardiogram based arrhythmia classification using wavelet transform with deep learning model | Litcius