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Journal of Intelligent Systems and Internet of Things
Volume 2 , Issue 1, PP: 33-45 , 2021 | Cite this article as | XML | Html |PDF

Title

Recurrent Model for Automatic Detection Cardiac Arrhythmia on the Internet of Healthcare Things

  Waleed Abd Elkhalik 1 *

1  Faculty of Computers and Informatics, Zagazig University, Zagazig, Sharqiyah, 44519, Egypt
    (waleed.abdlekhalik@zu.edu.eg)


Doi   :   https://doi.org/10.54216/JISIoT.020104

Received: March 19, 2021 Accepted: July 25, 2021

Abstract :

With the growing prevalence of the Internet of Health Things (IoHT), there is an increasing need for reliable and precise categorization of electrocardiogram (ECG) indications for the early detection of cardiovascular diseases. In this research, we propose a machine learning approach for ECG classification in IoHT applications. Our solution use wavelet transforms to clean the ECG records before passing them to the model. Then, a stack of long short-term memory (LSTM) cells is built to learn the temporal interrelations in the ECG signals and make accurate predictions. We assessed the performance of our model on a publicly available dataset of ECG signals, achieving an overall accuracy of 97.5%. The experimental findings demonstrate that our models can effectively classify ECG signals in IoHT applications, providing a valuable tool for the early discovery of vascular diseases. Furthermore, our model can be certainly incorporated into IoHT systems, providing a reliable and efficient solution for ECG classification.

Keywords :

Deep Learning; Internet of Healthcare Things (IoHT); ECG classification; Arrhythmia Detection; Smart Healthcare.

References :

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Cite this Article as :
Style #
MLA Waleed Abd Elkhalik. "Recurrent Model for Automatic Detection Cardiac Arrhythmia on the Internet of Healthcare Things." Journal of Intelligent Systems and Internet of Things, Vol. 2, No. 1, 2021 ,PP. 33-45 (Doi   :  https://doi.org/10.54216/JISIoT.020104)
APA Waleed Abd Elkhalik. (2021). Recurrent Model for Automatic Detection Cardiac Arrhythmia on the Internet of Healthcare Things. Journal of Journal of Intelligent Systems and Internet of Things, 2 ( 1 ), 33-45 (Doi   :  https://doi.org/10.54216/JISIoT.020104)
Chicago Waleed Abd Elkhalik. "Recurrent Model for Automatic Detection Cardiac Arrhythmia on the Internet of Healthcare Things." Journal of Journal of Intelligent Systems and Internet of Things, 2 no. 1 (2021): 33-45 (Doi   :  https://doi.org/10.54216/JISIoT.020104)
Harvard Waleed Abd Elkhalik. (2021). Recurrent Model for Automatic Detection Cardiac Arrhythmia on the Internet of Healthcare Things. Journal of Journal of Intelligent Systems and Internet of Things, 2 ( 1 ), 33-45 (Doi   :  https://doi.org/10.54216/JISIoT.020104)
Vancouver Waleed Abd Elkhalik. Recurrent Model for Automatic Detection Cardiac Arrhythmia on the Internet of Healthcare Things. Journal of Journal of Intelligent Systems and Internet of Things, (2021); 2 ( 1 ): 33-45 (Doi   :  https://doi.org/10.54216/JISIoT.020104)
IEEE Waleed Abd Elkhalik, Recurrent Model for Automatic Detection Cardiac Arrhythmia on the Internet of Healthcare Things, Journal of Journal of Intelligent Systems and Internet of Things, Vol. 2 , No. 1 , (2021) : 33-45 (Doi   :  https://doi.org/10.54216/JISIoT.020104)