Comparative study of X-ray and CT scan images for the detection of COVID-19 using deep learning
Date
2015-08Publisher
Brac UniversityAuthor
Niloy, Ahashan HabibShiba, Shammi Akhter
Fahim, S.M. Farah Al
Faria, Faizun Nahar
Rahman, Md. Jamilur
Metadata
Show full item recordAbstract
Coronavirus 2019 (in short, COVID-19), originated in the Wuhan province of China
in December 2019, has been declared a global pandemic by WHO in March 2020.
Since its inception, it’s rapid spread among nations had initially collapsed the world
economy and the increasing death-pool created a strong fear among people as the
virus spread through human contact. Initially doctors struggled to diagnose the
increasing number of patients as there was less availability of testing kits and failed
to treat people efficiently which ultimately led to the collapse of the health sector of
several countries. To help doctors primarily diagnose the virus, researchers around
the world have come up with some radiology imaging techniques using the Convo lutional Neural Network (CNN). While some of them worked on x-ray images and
some others on CT scan images, none worked on both the image types. Thus there’s
no way to know which image works better for a particular model. This, therefore,
insisted us to perform a comparison between x-ray and CT scan images. Thus we
came up with a novel CNN model named CoroPy which works for both the image
types and shows that in 2 classes (normal and covid), CT scan images show a better
accuracy and it is 99.17% whereas it is 95.73% for x-ray images. However, in the
case of 3 classes (normal, covid and viral pneumonia), x-ray images show a better
accuracy and it is 92.45% whereas it is 68.81% for CT scan images.