COVID-19 Symptoms Detection Based on NasNetMobile with Explainable AI Using Various Imaging Modalities

  title={COVID-19 Symptoms Detection Based on NasNetMobile with Explainable AI Using Various Imaging Modalities},
  author={Md. Manjurul Ahsan and Kishor Datta Gupta and Mohammad Maminur Islam and Sajib Sen and Md Lutfar Rahman and Mohammad Shakhawat Hossain},
  journal={Mach. Learn. Knowl. Extr.},
The outbreak of COVID-19 has caused more than 200,000 deaths so far in the USA alone, which instigates the necessity of initial screening to control the spread of the onset of COVID-19. However, screening for the disease becomes laborious with the available testing kits as the number of patients increases rapidly. Therefore, to reduce the dependency on the limited test kits, many studies suggested a computed tomography (CT) scan or chest radiograph (X-ray) based screening system as an… 

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  • M. SheelaC. Arun
  • Computer Science, Medicine
    International journal of information technology : an official journal of Bharati Vidyapeeth's Institute of Computer Applications and Management
  • 2022
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