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Diagnosing COVID-19 From Chest CT Scan Images Using Deep Learning Models

Shamik Tiwari, Anurag Jain and Sunil Kumar Chawla
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Shamik Tiwari: University of Petroleum and Energy Studies, India
Anurag Jain: University of Petroleum and Energy Studies, India
Sunil Kumar Chawla: University Institute of Engineering, Chandigarh University, India

International Journal of Reliable and Quality E-Healthcare (IJRQEH), 2022, vol. 11, issue 2, 1-15

Abstract: A novel coronavirus named COVID-19 has spread speedily and has triggered a worldwide outbreak of respiratory illness. Early diagnosis is always crucial for pandemic control. Compared to RT-PCR, chest computed tomography (CT) imaging is the more consistent, concrete, and prompt method to identify COVID-19 patients. For clinical diagnostics, the information received from computed tomography scans is critical. So there is a need to develop an image analysis technique for detecting viral epidemics from computed tomography scan pictures. Using DenseNet, ResNet, CapsNet, and 3D-ConvNet, four deep machine learning-based architectures have been proposed for COVID-19 diagnosis from chest computed tomography scans. From the experimental results, it is found that all the architectures are providing effective accuracy, of which the COVID-DNet model has reached the highest accuracy of 99%. Proposed architectures are accessible at https://github.com/shamiktiwari/CTscanCovi19 can be utilized to support radiologists and reserachers in validating their initial screening.

Date: 2022
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