COV-SNET: A deep learning model for X-ray-based COVID-19 classification
Author(s) -
Robert Hertel,
Rachid Benlamri
Publication year - 2021
Publication title -
informatics in medicine unlocked
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.44
H-Index - 21
ISSN - 2352-9148
DOI - 10.1016/j.imu.2021.100620
Subject(s) - deep learning , covid-19 , artificial intelligence , transfer of learning , computer science , robustness (evolution) , machine learning , offset (computer science) , artificial neural network , medicine , infectious disease (medical specialty) , pathology , disease , biochemistry , chemistry , outbreak , gene , programming language
The AI research community has recently been intensely focused on diagnosing COVID-19 by applying deep learning technology to the X-ray scans taken of COVID-19 patients. Differentiating COVID-19 from other pneumonia-inducing illnesses is a highly challenging task as it shares many of the same imaging characteristics as other pulmonary diseases. This is especially true given the small number of COVID-19 X-rays that are publicly available. Deep learning experts commonly use transfer learning to offset the small number of images typically available in medical imaging tasks. Our COV-SNET model is a deep neural network that was pretrained on over one hundred thousand X-ray images. In this paper, we designed two COV-SNET models with the purpose of diagnosing Covid-19. The experimental results demonstrate the robustness of our deep learning models, ultimately achieving sensitivities of 95% for our three-class and two-class models. We also discuss the strengths and weaknesses of such an approach, focusing mainly on the limitations of public X-ray datasets on current Covid-19 deep learning models. Finally, we conclude with possible future directions for this research.
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