Hybrid Deep-Learning and Machine-Learning Models for Predicting COVID-19

The COVID-19 pandemic has had a significant impact on public life and health worldwide, putting the world’s healthcare systems at risk. The first step in stopping this outbreak is to detect the infection in its early stages, which will relieve the risk, control the outbreak’s spread, and restore ful...

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Veröffentlicht in:Computational intelligence and neuroscience 2021, Vol.2021 (1), p.9996737
Hauptverfasser: Qaid, Talal S., Mazaar, Hussein, Al-Shamri, Mohammad Yahya H., Alqahtani, Mohammed S., Raweh, Abeer A., Alakwaa, Wafaa
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container_issue 1
container_start_page 9996737
container_title Computational intelligence and neuroscience
container_volume 2021
creator Qaid, Talal S.
Mazaar, Hussein
Al-Shamri, Mohammad Yahya H.
Alqahtani, Mohammed S.
Raweh, Abeer A.
Alakwaa, Wafaa
description The COVID-19 pandemic has had a significant impact on public life and health worldwide, putting the world’s healthcare systems at risk. The first step in stopping this outbreak is to detect the infection in its early stages, which will relieve the risk, control the outbreak’s spread, and restore full functionality to the world’s healthcare systems. Currently, PCR is the most prevalent diagnosis tool for COVID-19. However, chest X-ray images may play an essential role in detecting this disease, as they are successful for many other viral pneumonia diseases. Unfortunately, there are common features between COVID-19 and other viral pneumonia, and hence manual differentiation between them seems to be a critical problem and needs the aid of artificial intelligence. This research employs deep- and transfer-learning techniques to develop accurate, general, and robust models for detecting COVID-19. The developed models utilize either convolutional neural networks or transfer-learning models or hybridize them with powerful machine-learning techniques to exploit their full potential. For experimentation, we applied the proposed models to two data sets: the COVID-19 Radiography Database from Kaggle and a local data set from Asir Hospital, Abha, Saudi Arabia. The proposed models achieved promising results in detecting COVID-19 cases and discriminating them from normal and other viral pneumonia with excellent accuracy. The hybrid models extracted features from the flatten layer or the first hidden layer of the neural network and then fed these features into a classification algorithm. This approach enhanced the results further to full accuracy for binary COVID-19 classification and 97.8% for multiclass classification.
doi_str_mv 10.1155/2021/9996737
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The first step in stopping this outbreak is to detect the infection in its early stages, which will relieve the risk, control the outbreak’s spread, and restore full functionality to the world’s healthcare systems. Currently, PCR is the most prevalent diagnosis tool for COVID-19. However, chest X-ray images may play an essential role in detecting this disease, as they are successful for many other viral pneumonia diseases. Unfortunately, there are common features between COVID-19 and other viral pneumonia, and hence manual differentiation between them seems to be a critical problem and needs the aid of artificial intelligence. This research employs deep- and transfer-learning techniques to develop accurate, general, and robust models for detecting COVID-19. The developed models utilize either convolutional neural networks or transfer-learning models or hybridize them with powerful machine-learning techniques to exploit their full potential. 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Qaid et al.</rights><rights>COPYRIGHT 2021 John Wiley &amp; Sons, Inc.</rights><rights>Copyright © 2021 Talal S. Qaid et al. This is an open access article distributed under the Creative Commons Attribution License (the “License”), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License. https://creativecommons.org/licenses/by/4.0</rights><rights>Copyright © 2021 Talal S. 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subjects Algorithms
Artificial Intelligence
Artificial neural networks
Bacterial pneumonia
Cable television broadcasting industry
Classification
Coronaviruses
COVID-19
Datasets
Deep Learning
Epidemics
Experimentation
Feature extraction
Health aspects
Health care
Humans
Infection control
Learning algorithms
Machine Learning
Model accuracy
Neural networks
Outbreaks
Pandemics
Pneumonia
Radiography
Risk management
SARS-CoV-2
Saudi Arabia
Transfer learning
United States
Viral diseases
Virus diseases
X-rays
title Hybrid Deep-Learning and Machine-Learning Models for Predicting COVID-19
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