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Automatic classification of electrocardiogram signals based on transfer learning and continuous wavelet transform
Institution:1. Heilongjiang Province Key Laboratory of Laser Spectroscopy Technology and Application, Harbin University of Science and Technology, Harbin 150080, China;2. Institute of Intelligent Manufacturing Technology, Shenzhen Polytechnic, Shenzhen 518055, China.;1. Electrical Engineering Department, Universidade Federal de Juiz de Fora, Juiz de Fora, MG, Brazil;2. Electrical Engineering Department, Universidade Estadual de Campinas, Campinas, SP, Brazil;3. Medical School, Universidade Federal de Juiz de Fora, Juiz de Fora, MG, Brazil;4. Illinois Institute of Technology, Chicago, IL, United States;5. Computing Department, Universidade Federal de Ouro Preto, Ouro Preto, MG, Brazil
Abstract:Classification and subsequent diagnosis of cardiac arrhythmias is an important research topic in clinical practice. Confirmation of the type of arrhythmia at an early stage is critical for reducing the risk and occurrence of cardiovascular events. Nevertheless, diagnoses must be confirmed by a combination of specialist experience and electrocardiogram (ECG) examination, which can lead to delays in diagnosis. To overcome such obstacles, this study proposes an automatic ECG classification algorithm based on transfer learning and continuous wavelet transform (CWT). The transfer learning method is able to transfer the domain knowledge and features of images to a EGG, which is a one-dimensional signal when a convolutional neural network (CNN) is used for classification. Meanwhile, CWT is used to convert a one-dimensional ECG signal into a two-dimensional signal map consisting of time-frequency components. Considering that morphological features can be helpful in arrhythmia classification, eight features related to the R peak of an ECG signal are proposed. These auxiliary features are integrated with the features extracted by the CNN and then fed into the fully linked arrhythmia classification layer. The CNN developed in this study can also be used for bird activity detection. The classification experiments were performed after converting the two types of audio files containing songbird sounds and those without songbird sounds from the NIPS4Bplus bird song dataset into the Mel spectrum. Compared to the most recent methods in the same field, the classification results improved accuracy and recognition by 11.67% and 11.57%, respectively.
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