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Toward Automated Feature Extraction for Deep Learning Classification of Electrocardiogram Signals

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URI: http://hdl.handle.net/10498/28744

DOI: 10.1109/ACCESS.2022.3220670

ISSN: 2169-3536

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2022_869.pdf (1.644Mb)
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Author/s
Sajid Butt, Fatima; Wagner, Matthias F.; Schaefer, Joerg; Gómez-Ullate Oteiza, DavidAuthority UCA
Date
2022
Department
Ingeniería Informática
Source
IEEE Access, Vol. 10, 2022, pp. 118601-118616
Abstract
Many recent studies have focused on the automatic classification of electrocardiogram (ECG) signals using deep learning (DL) methods. Most rely on existing complex DL methods, such as transfer learning or providing the models with carefully designed extracted features based on domain knowledge. A common assumption is that the deeper and more complex the DL model is, the better it learns. In this study, we propose two different DL models for automatic feature extraction from ECG signals for classification tasks: A CNN-LSTM hybrid model and an attention/transformer-based model with wavelet transform for the dimensional embedding. Both of the models extract the features from time series at the initial layers of the neural networks and can obtain performance at least equal to, if not greater than, many contemporary deep neural networks. To validate our hypothesis, we used three publicly available data-sets to evaluate the proposed models. Our model achieved a benchmark accuracy of 99.92% for fall detection and 99.93% for the PTB database for myocardial infarction versus normal heartbeat classification.
Subjects
Electrocardiograph; benchmark testing; fall detection; time series analysis; machine learning; deep learning; LSTM; CNN; attention; transformer; PTB XL
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  • Artículos Científicos [11595]
  • Articulos Científicos Ing. Inf. [299]
Attribution-NonCommercial-NoDerivatives 4.0 Internacional
This work is under a Creative Commons License Attribution-NonCommercial-NoDerivatives 4.0 Internacional

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