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Detecting COVID-19 infection status from chest X-ray and CT scan via single transfer learning-driven approach

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posted on 2024-06-20, 03:44 authored by P Ghose, M Alavi, M Tabassum, M Ashraf Uddin, M Biswas, K Mahbub, L Gaur, S Mallik, Z Zhao
COVID-19 has caused over 528 million infected cases and over 6.25 million deaths since its outbreak in 2019. The uncontrolled transmission of the SARS-CoV-2 virus has caused human suffering and the death of uncountable people. Despite the continuous effort by the researchers and laboratories, it has been difficult to develop reliable efficient and stable vaccines to fight against the rapidly evolving virus strains. Therefore, effectively preventing the transmission in the community and globally has remained an urgent task since its outbreak. To avoid the rapid spread of infection, we first need to identify the infected individuals and isolate them. Therefore, screening computed tomography (CT scan) and X-ray can better separate the COVID-19 infected patients from others. However, one of the main challenges is to accurately identify infection from a medical image. Even experienced radiologists often have failed to do it accurately. On the other hand, deep learning algorithms can tackle this task much easier, faster, and more accurately. In this research, we adopt the transfer learning method to identify the COVID-19 patients from normal individuals when there is an inadequacy of medical image data to save time by generating reliable results promptly. Furthermore, our model can perform both X-rays and CT scan. The experimental results found that the introduced model can achieve 99.59% accuracy for X-rays and 99.95% for CT scan images. In summary, the proposed method can effectively identify COVID-19 infected patients, could be a great way which will help to classify COVID-19 patients quickly and prevent the viral transmission in the community.

History

Journal

Frontiers in Genetics

Volume

13

Pagination

1-13

Location

Lausanne, Switzerland

Open access

  • Yes

ISSN

1664-8021

eISSN

1664-8021

Language

eng

Publication classification

C1.1 Refereed article in a scholarly journal

Publisher

Frontiers Media SA

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