Loading [a11y]/accessibility-menu.js
B5G and Explainable Deep Learning Assisted Healthcare Vertical at the Edge: COVID-I9 Perspective | IEEE Journals & Magazine | IEEE Xplore

B5G and Explainable Deep Learning Assisted Healthcare Vertical at the Edge: COVID-I9 Perspective


Abstract:

B5G-based tactile edge learning shows promise as a solution to handle infectious diseases such as COVID-19 at a global level. By leveraging edge computing with the 5G RAN...Show More

Abstract:

B5G-based tactile edge learning shows promise as a solution to handle infectious diseases such as COVID-19 at a global level. By leveraging edge computing with the 5G RAN, management of epidemic diseases such as COVID-19 can be conducted efficiently. Deploying a hierarchical edge computing architecture offers several benefits such as scalability, low latency, and privacy for the data and the training model, which enables analysis of COVID-19 by a local trusted edge server. However, existing deep learning (DL) algorithms suffer from two crucial drawbacks: first, the training requires a large COVID-19 dataset on various dimensions, which is difficult for any local authority to manage. Second, the DL results require ethical approval and explanations from healthcare providers and other stakeholders in order to be accepted. In this article, we propose a B5G framework that supports COVID-19 diagnosis, leveraging the low-latency, high-bandwidth features of the 5G network at the edge. Our framework employs a distributed DL paradigm where each COVID-19 edge employs its own local DL framework and uses a three-phase reconciliation with the global DL framework. The local DL model runs on edge nodes while the global DL model runs on a cloud environment. The training of a local DL model is performed with the dataset available from the edge; it is applied to the global model after receiving approval from the subject matter experts at the edge. Our framework adds semantics to existing DL models so that human domain experts on COVID-19 can gain insight and semantic visualization of the key decision-making activities that take place within the deep learning ecosystem. We have implemented a subset of various COVID-19 scenarios using distributed DL at the edge and in the cloud. The test results are promising.
Published in: IEEE Network ( Volume: 34, Issue: 4, July/August 2020)
Page(s): 98 - 105
Date of Publication: 08 July 2020

ISSN Information:

Department of Cyber Security and Forensic Computing, University of Prince Mugrin
Md. Abdur Rahman [SM' is an associate professor in the Department of Cyber Security and Forensic Computing and Director of Scientific Research and Graduate Studies at the University of Prince Muqrin (UPM), Madinah AI Munawwarah, KSA. In 2018 and 2019, he received the BEST Researcher Award from UPM. He has authored more than 120 publications. He has one U.S. patent granted and several are pending. He has received more than...Show More
Md. Abdur Rahman [SM' is an associate professor in the Department of Cyber Security and Forensic Computing and Director of Scientific Research and Graduate Studies at the University of Prince Muqrin (UPM), Madinah AI Munawwarah, KSA. In 2018 and 2019, he received the BEST Researcher Award from UPM. He has authored more than 120 publications. He has one U.S. patent granted and several are pending. He has received more than...View more
Department of Software Engineering, King Saud University, Riyadh, Saudi Arabia
M. Shamim Hossain [SM'09] is currently a professor with the Chair of Smart Cities Technology, and the Department of Software Engineering, College of Computer and Information Sciences, King Saud University, Riyadh, Saudi Arabia. His research interests include cloud networking, smart environment (smart city, smart health), AI, deep learning, edge computing, Internet of Things (IoT), multimedia for health care, and multimedi...Show More
M. Shamim Hossain [SM'09] is currently a professor with the Chair of Smart Cities Technology, and the Department of Software Engineering, College of Computer and Information Sciences, King Saud University, Riyadh, Saudi Arabia. His research interests include cloud networking, smart environment (smart city, smart health), AI, deep learning, edge computing, Internet of Things (IoT), multimedia for health care, and multimedi...View more
Biomedical Technology Department, King Saud University, Riyadh, Saudi Arabia
Nabil A. Alrajeh obtained his Ph.D. in biomedical informatics engineering from Vanderbilt University, USA. Currently, he is a professor of health informatics in the Biomedical Technology Department, College of Applied Medical Sciences, King Saud University, and the Rector of Prince Mugrin Bin Abdulaziz University. He worked as a senior advisor for the Ministry of Higher Education, responsible for implementing development ...Show More
Nabil A. Alrajeh obtained his Ph.D. in biomedical informatics engineering from Vanderbilt University, USA. Currently, he is a professor of health informatics in the Biomedical Technology Department, College of Applied Medical Sciences, King Saud University, and the Rector of Prince Mugrin Bin Abdulaziz University. He worked as a senior advisor for the Ministry of Higher Education, responsible for implementing development ...View more
School of Electrical Engineering & Computer Science, Washington State University, Pullman, WA, USA
Nadra Guizani is with the School of Electrical Engineering & Computer Science, Washington State University, USA. She obtained her Ph.D. in computer engineering from Purdue University, USA.
Nadra Guizani is with the School of Electrical Engineering & Computer Science, Washington State University, USA. She obtained her Ph.D. in computer engineering from Purdue University, USA.View more

Department of Cyber Security and Forensic Computing, University of Prince Mugrin
Md. Abdur Rahman [SM' is an associate professor in the Department of Cyber Security and Forensic Computing and Director of Scientific Research and Graduate Studies at the University of Prince Muqrin (UPM), Madinah AI Munawwarah, KSA. In 2018 and 2019, he received the BEST Researcher Award from UPM. He has authored more than 120 publications. He has one U.S. patent granted and several are pending. He has received more than 18 million SAR in research grants.
Md. Abdur Rahman [SM' is an associate professor in the Department of Cyber Security and Forensic Computing and Director of Scientific Research and Graduate Studies at the University of Prince Muqrin (UPM), Madinah AI Munawwarah, KSA. In 2018 and 2019, he received the BEST Researcher Award from UPM. He has authored more than 120 publications. He has one U.S. patent granted and several are pending. He has received more than 18 million SAR in research grants.View more
Department of Software Engineering, King Saud University, Riyadh, Saudi Arabia
M. Shamim Hossain [SM'09] is currently a professor with the Chair of Smart Cities Technology, and the Department of Software Engineering, College of Computer and Information Sciences, King Saud University, Riyadh, Saudi Arabia. His research interests include cloud networking, smart environment (smart city, smart health), AI, deep learning, edge computing, Internet of Things (IoT), multimedia for health care, and multimedia big data. He has authored and coauthored more than 250 publications. He is on the editorial board of the IEEE Transactions on Multimedia, IEEE Multimedia, IEEE Network, IEEE Wireless Communications, IEEE Access, Journal of Network and Computer Applications, and International Journal of Multimedia Tools and Applications. He is a senior member of the ACM.
M. Shamim Hossain [SM'09] is currently a professor with the Chair of Smart Cities Technology, and the Department of Software Engineering, College of Computer and Information Sciences, King Saud University, Riyadh, Saudi Arabia. His research interests include cloud networking, smart environment (smart city, smart health), AI, deep learning, edge computing, Internet of Things (IoT), multimedia for health care, and multimedia big data. He has authored and coauthored more than 250 publications. He is on the editorial board of the IEEE Transactions on Multimedia, IEEE Multimedia, IEEE Network, IEEE Wireless Communications, IEEE Access, Journal of Network and Computer Applications, and International Journal of Multimedia Tools and Applications. He is a senior member of the ACM.View more
Biomedical Technology Department, King Saud University, Riyadh, Saudi Arabia
Nabil A. Alrajeh obtained his Ph.D. in biomedical informatics engineering from Vanderbilt University, USA. Currently, he is a professor of health informatics in the Biomedical Technology Department, College of Applied Medical Sciences, King Saud University, and the Rector of Prince Mugrin Bin Abdulaziz University. He worked as a senior advisor for the Ministry of Higher Education, responsible for implementing development programs including educational affairs, strategic planning, research and innovation. He is a board member of several private universities in Saudi Arabia.
Nabil A. Alrajeh obtained his Ph.D. in biomedical informatics engineering from Vanderbilt University, USA. Currently, he is a professor of health informatics in the Biomedical Technology Department, College of Applied Medical Sciences, King Saud University, and the Rector of Prince Mugrin Bin Abdulaziz University. He worked as a senior advisor for the Ministry of Higher Education, responsible for implementing development programs including educational affairs, strategic planning, research and innovation. He is a board member of several private universities in Saudi Arabia.View more
School of Electrical Engineering & Computer Science, Washington State University, Pullman, WA, USA
Nadra Guizani is with the School of Electrical Engineering & Computer Science, Washington State University, USA. She obtained her Ph.D. in computer engineering from Purdue University, USA.
Nadra Guizani is with the School of Electrical Engineering & Computer Science, Washington State University, USA. She obtained her Ph.D. in computer engineering from Purdue University, USA.View more

References

References is not available for this document.