Loading...
Thumbnail Image
Publication

Development and Validation of Embedded Device for Electrocardiogram Arrhythmia Empowered with Transfer Learning

Asif, Rizwana Naz
Abbas, Sagheer
Khan, Muhammad Adnan
Rahman, Atta-ur
Sultan, Kiran
Mahmud, Maqsood
Mosavi, Amir
Other Titles
Abstract
With the emergence of the Internet of Things (IoT), investigation of different diseases in healthcare improved, and cloud computing helped to centralize the data and to access patient records throughout the world. In this way, the electrocardiogram (ECG) is used to diagnose heart diseases or abnormalities. The machine learning techniques have been used previously but are feature-based and not as accurate as transfer learning; the proposed development and validation of embedded device prove ECG arrhythmia by using the transfer learning (DVEEA-TL) model. This model is the combination of hardware, software, and two datasets that are augmented and fused and further finds the accuracy results in high proportion as compared to the previous work and research. In the proposed model, a new dataset is made by the combination of the Kaggle dataset and the other, which is made by taking the real-time healthy and unhealthy datasets, and later, the AlexNet transfer learning approach is applied to get a more accurate reading in terms of ECG signals. In this proposed research, the DVEEA-TL model diagnoses the heart abnormality in respect of accuracy during the training and validation stages as 99.9% and 99.8%, respectively, which is the best and more reliable approach as compared to the previous research in this field.
Citation
Asif, R. N., Abbas, S., Khan, M. A., Sultan, K., Mahmud, M., & Mosavi, A. (2022). Development and validation of embedded device for electrocardiogram arrhythmia empowered with transfer learning. Computational Intelligence and Neuroscience, 2022(1), 1-15.
Publisher
Hindawi
Journal
Computational Intelligence and Neuroscience
Research Unit
DOI
10.1155/2022/5054641
PubMed ID
PubMed Central ID
Type
Article
Language
en
Description
Series/Report no.
ISSN
1687-5265
EISSN
1687-5273
ISBN
ISMN
Gov't Doc
Test Link
Sponsors
N/A
Additional Links
http://dx.doi.org/10.1155/2022/5054641