Automatic detection and localization of COVID-19 pneumonia using axial computed tomography images and deep convolutional neural networks
Author
Polat, Hasan and Ozerdem, Mehmet Sirac and Ekici, Faysal and Akpolat,
Veysi
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COVID-19 was first reported as an unknown group of pneumonia in Wuhan
City, Hubei province of China in late December of 2019. The rapid
increase in the number of cases diagnosed with COVID-19 and the lack of
experienced radiologists can cause diagnostic errors in the
interpretation of the images along with the exceptional workload
occurring in this process. Therefore, the urgent development of
automated diagnostic systems that can scan radiological images quickly
and accurately is important in combating the pandemic. With this
motivation, a deep convolutional neural network (CNN)-based model that
can automatically detect patterns related to lesions caused by COVID-19
from chest computed tomography (CT) images is proposed in this study. In
this context, the image ground-truth regarding the COVID-19 lesions
scanned by the radiologist was evaluated as the main criteria of the
segmentation process. A total of 16 040 CT image segments were obtained
by applying segmentation to the raw 102 CT images. Then, 10 420 CT image
segments related to healthy lung regions were labeled as COVID-negative,
and 5620 CT image segments, in which the findings related to the lesions
were detected in various forms, were labeled as COVID-positive. With the
proposed CNN architecture, 93.26\% diagnostic accuracy performance was
achieved. The sensitivity and specificity performance metrics for the
proposed automatic diagnosis model were 93.27\% and 93.24\%,
respectively. Additionally, it has been shown that by scanning the small
regions of the lungs, COVID-19 pneumonia can be localized automatically
with high resolution and the lesion densities can be successfully
evaluated quantitatively.
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