Title
Deep learning assisted COVID-19 detection using full CT-scans
Abstract
The ongoing pandemic of COVID-19 has shown the limitations of our current medical institutions. There is a need for research in automated diagnosis for speeding up the process while maintaining accuracy and reducing the computational requirements. This work proposes an automated diagnosis of COVID-19 infection from CT scans of the patients using deep learning technique. The proposed model, ReCOV-101, uses full chest CT scans to detect varying degrees of COVID-19 infection. To improve the detection accuracy, the CT-scans were preprocessed by employing segmentation and interpolation. The proposed scheme is based on the residual network that takes advantage of skip connection, allowing the model to go deeper. The model was trained on a single enterprise-level GPU. It can easily be provided on a network’s edge, reducing communication with the cloud, often required for larger neural networks. This work aims to demonstrate a less hardware-intensive approach for COVID-19 detection with excellent performance that can be combined with medical equipment and help ease the examination procedure. With the proposed model, an accuracy of 94.9% was achieved.
Year
DOI
Venue
2021
10.1016/j.iot.2021.100377
Internet of Things
Keywords
DocType
Volume
COVID-19,Internet of Things,Medical imaging,Deep learning,CT-scan,Convolutional neural networks,Supervised learning
Journal
14
ISSN
Citations 
PageRank 
2542-6605
3
0.46
References 
Authors
0
4
Name
Order
Citations
PageRank
Varan Singh Rohila130.46
Nitin Gupta230.46
Amit Kaul330.46
Deepak Kumar Sharma430.46