We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Automatic ECG classification using discrete wavelet transform and one-dimensional convolutional neural network.
- Authors
Shoughi, Armin; Dowlatshahi, Mohammad Bagher; Amiri, Arefeh; Kuchaki Rafsanjani, Marjan; Batth, Ranbir Singh
- Abstract
This paper presents an approach based on deep learning for accurate Electrocardiogram signal classification. The electrocardiogram is a significant signal in the realm of medical affairs, which gives vital information about the cardiovascular status of patients to heart specialists. Manually meticulous analysis of signals needs high and specific skills, and it is a time-consuming job too. The existence of noise, the inflexibility of signals, and the irregularity of heartbeats keep heart specialists in trouble. Cardiovascular diseases (CVDs) are the most important factor of fatality globally, which annually caused the deaths of 17.9 million people. Totally 31% of all death in the world are related to CVDs, which the age of 1/3 of patients that died because of CVDs is below 70 Because of the high percentage of mortality in cardiovascular patients, accurate diagnosis of this disease is an important matter. We present an approach to the analysis of electrocardiogram signals based on the convolutional neural network, discrete wavelet transformation with db2 mother wavelet, and synthetic minority over-sampling technique (SMOTE) on the MIT-BIH dataset according to the association for the advancement of medical instrumentation (AAMI) standards to increase the accuracy in electrocardiogram signal classifications. The evaluation results show this approach with 50 epoch training that the time of each epoch is 39 s, achieved 99.71% accuracy for category F, 98.69% accuracy for category N, 99.45% accuracy for category S, 99.33% accuracy for category V and 99.82% accuracy for category Q. It is worth mentioning that it can potentially be used as a clinical auxiliary diagnostic tool. The source code is available at https://gitlab.com/arminshoughi/ecg-classification-cnn.
- Subjects
CONVOLUTIONAL neural networks; DISCRETE wavelet transforms; WAVELET transforms; AUTOMATIC classification; WAVELETS (Mathematics); SIGNAL classification; DEEP learning
- Publication
Computing, 2024, Vol 106, Issue 4, p1227
- ISSN
0010-485X
- Publication type
Article
- DOI
10.1007/s00607-023-01243-0