CCBlock: An Effective Use of Deep Learning for Automatic Diagnosis of
COVID-19 Using X-Ray Images
- URL: http://arxiv.org/abs/2009.10141v1
- Date: Mon, 21 Sep 2020 19:20:01 GMT
- Title: CCBlock: An Effective Use of Deep Learning for Automatic Diagnosis of
COVID-19 Using X-Ray Images
- Authors: Ali Al-Bawi, Karrar Ali Al-Kaabi, Mohammed Jeryo, Ahmad Al-Fatlawi
- Abstract summary: The COVID-19 pandemic has dramatically affected the health and well-being of the world's population.
It is necessary to develop assistive methods for detecting and diagnosing the COVID-19 to eradicate the spread of the novel coronavirus among people.
Based on convolutional neural networks (CNNs), automated detection systems have shown promising results of diagnosing patients with the COVID-19 through radiography.
- Score: 0.0
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Propose: Troubling countries one after another, the COVID-19 pandemic has
dramatically affected the health and well-being of the world's population. The
disease may continue to persist more extensively due to the increasing number
of new cases daily, the rapid spread of the virus, and delay in the PCR
analysis results. Therefore, it is necessary to consider developing assistive
methods for detecting and diagnosing the COVID-19 to eradicate the spread of
the novel coronavirus among people. Based on convolutional neural networks
(CNNs), automated detection systems have shown promising results of diagnosing
patients with the COVID-19 through radiography; thus, they are introduced as a
workable solution to the COVID-19 diagnosis. Materials and Methods: Based on
the enhancement of the classical visual geometry group (VGG) network with the
convolutional COVID block (CCBlock), an efficient screening model was proposed
in this study to diagnose and distinguish patients with the COVID-19 from those
with pneumonia and the healthy people through radiography. The model testing
dataset included 1,828 x-ray images available on public platforms. 310 images
were showing confirmed COVID-19 cases, 864 images indicating pneumonia cases,
and 654 images showing healthy people. Results: According to the test results,
enhancing the classical VGG network with radiography provided the highest
diagnosis performance and overall accuracy of 98.52% for two classes as well as
accuracy of 95.34% for three classes. Conclusions: According to the results,
using the enhanced VGG deep neural network can help radiologists automatically
diagnose the COVID-19 through radiography.
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