COVID-19 Screening Using Residual Attention Network an Artificial Intelligence Approach
Vishal Sharma, Curtis Dyreson

TL;DR
This paper introduces a Residual Attention Network-based AI method for rapid COVID-19 screening from chest X-ray images, achieving high accuracy and aiding clinical diagnosis amid testing kit shortages.
Contribution
The study develops a novel Residual Attention Network model that outperforms traditional CNNs in COVID-19 detection from X-ray images, with 98% testing accuracy and 100% validation accuracy.
Findings
Residual Attention Network achieves 98% testing accuracy.
Model highlights important features in X-ray images.
Code and dataset are publicly available.
Abstract
Coronavirus Disease 2019 (COVID-19) is caused by severe acute respiratory syndrome coronavirus 2 virus (SARS-CoV-2). The virus transmits rapidly; it has a basic reproductive number R of 2.2-2.7. In March 2020, the World Health Organization declared the COVID-19 outbreak a pandemic. COVID-19 is currently affecting more than 200 countries with 6M active cases. An effective testing strategy for COVID-19 is crucial to controlling the outbreak but the demand for testing surpasses the availability of test kits that use Reverse Transcription Polymerase Chain Reaction (RT-PCR). In this paper, we present a technique to screen for COVID-19 using artificial intelligence. Our technique takes only seconds to screen for the presence of the virus in a patient. We collected a dataset of chest X-ray images and trained several popular deep convolution neural network-based models (VGG, MobileNet,…
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Taxonomy
MethodsMobileNetV1 · Ethereum Customer Service Number +1-833-534-1729 · Concatenated Skip Connection · Softmax · Batch Normalization · Kaiming Initialization · Average Pooling · Dropout · Depthwise Convolution · Pointwise Convolution
