Back to Search Start Over

WavelNet: A novel convolutional neural network architecture for arrhythmia classification from electrocardiograms.

Authors :
Kim, Namho
Seo, Wonju
Kim, Ju-ho
Choi, So Yoon
Park, Sung-Min
Source :
Computer Methods & Programs in Biomedicine. Apr2023, Vol. 231, pN.PAG-N.PAG. 1p.
Publication Year :
2023

Abstract

• WavelNet , a novel convolutional neural network architecture, is capable of wavelet transform-based spectral analysis of raw physiological signals. • Accurate, interpretable, and highly reproducible end-to-end arrhythmia classification can be accomplished by adopting WavelNet. • The MIT-BIH arrhythmia database and Google Colab Pro+ environment are adopted, allowing easy reproduction and application of this study. Automated detection of arrhythmias from electrocardiograms (ECGs) can be of considerable assistance to medical professionals in providing efficient treatment for patients with cardiovascular diseases. In recent times, convolutional neural network (CNN)-based arrhythmia classification models have been introduced, but their decision-making processes remain unclear and their performances are not reproducible. This paper proposes an accurate, interpretable, and reproducible end-to-end arrhythmia classification model based on a novel CNN architecture named WavelNet , which is interpretable and optimal for dealing with ECGs. Inspired by SincNet, which is capable of band-pass filtering-based spectral analysis, WavelNet was devised to achieve wavelet transform-based spectral analysis. WavelNet was trained using a subject-oriented five-class ECG arrhythmia dataset generated from the MIT-BIH Arrhythmia Database while following a benchmark scheme. By adopting various mother wavelets, multiple WavelNet -based arrhythmia classification models were implemented. To investigate whether our wavelet transform-based approach outperforms original end-to-end and band-pass filtering-based approaches, our proposed models were compared with vanilla CNN- and SincNet -based models. Model implementation and evaluation processes were repeated ten times in a Google Colab Pro+ environment. Furthermore, our most successful model was compared with state-of-the-art arrhythmia classification models for performance evaluation. The proposed WavelNet -based models showed excellent performance on classifying non-ectopic, supraventricular ectopic, and ventricular ectopic beats because of their ability to perform adaptive spectral analysis while preserving temporal ECG information compared with vanilla CNN- and SincNet -based models. In particular, a Symlet 4 wavelet-adopting WavelNet -based model achieved the best performance with nearly 90% overall accuracy as well as the highest levels of sensitivity in classifying each arrhythmia class: 91.4%, 49.3%, and 91.4% for non-ectopic, supraventricular ectopic, and ventricular ectopic beat classifications, respectively. These results were comparable to those of state-of-the-art models. In addition, the results are reproducible, which differentiates our study from previous studies. Our proposed WavelNet -based arrhythmia classification model achieved remarkable performance based on a reasonable decision-making process, in comparison with other models. As its noteworthy performance is clinically reasonable and reproducible, our proposed model can contribute toward implementing a real-world precision healthcare system for patients with cardiovascular diseases. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01692607
Volume :
231
Database :
Academic Search Index
Journal :
Computer Methods & Programs in Biomedicine
Publication Type :
Academic Journal
Accession number :
162323753
Full Text :
https://doi.org/10.1016/j.cmpb.2023.107375