CCBlock: An Effective Use of Deep Learning for Automatic Diagnosis of COVID-19 Using X-Ray Images
Ali Al-Bawi, Karrar Ali Al-Kaabi, Mohammed Jeryo, Ahmad Al-Fatlawi

TL;DR
This paper introduces CCBlock, an enhanced deep learning model based on VGG, for accurate automatic COVID-19 diagnosis from X-ray images, achieving over 98% accuracy and aiding radiologists in rapid detection.
Contribution
The study proposes a novel convolutional COVID block (CCBlock) integrated with VGG to improve COVID-19 detection accuracy from radiography images.
Findings
Achieved 98.52% accuracy in two-class COVID-19 diagnosis.
Achieved 95.34% accuracy in three-class classification (COVID-19, pneumonia, healthy).
Demonstrated effectiveness of the enhanced VGG model for automated diagnosis.
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…
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Taxonomy
MethodsDense Connections · Dropout · *Communicated@Fast*How Do I Communicate to Expedia? · Softmax · Max Pooling · Convolution · Ethereum Customer Service Number +1-833-534-1729
