Abstract

A novel strain of Coronavirus, identified as the Severe Acute Respiratory Syndrome-2 (SARS-CoV-2), outbroke in December 2019 causing the novel Corona Virus Disease (COVID-19). Since its emergence, the virus has spread rapidly and has been declared a global pandemic. As of the end of January 2021, there are almost 100 million cases worldwide with over 2 million confirmed deaths. Widespread testing is essential to reduce further spread of the disease, but due to a shortage of testing kits and limited supply, alternative testing methods are being evaluated. Recently researchers have found that chest X-Ray (CXR) images provide salient information about COVID-19. An intelligent system can help the radiologists to detect COVID-19 from these CXR images which can come in handy at remote locations in many developing nations. In this work, we propose a pipeline that uses CXR images to detect COVID-19 infection. The features from the CXR images were extracted and the relevant features were then selected using Hybrid Social Group Optimization algorithm. The selected features were then used to classify the CXR images using a number of classifiers. The proposed pipeline achieves a classification accuracy of 99.65% using support vector classifier, which outperforms other state-of-the-art deep learning algorithms for binary and multi-class classification.

Highlights

  • In December 2019, China saw a sudden increase in pneumonia patients

  • The proposed model achieves an accuracy of 99.65% using the Support Vector Classifier

  • We discuss the implementation of the Hybrid SGO algorithm (HSGO) algorithm

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Summary

Introduction

In December 2019, China saw a sudden increase in pneumonia patients. The clear cause of this pneumonia remained shrouded in mystery. These were soon to be epidemiologically linked to the wet animal wholesale market [1, 2]. China alerted the World Health Organization (WHO) on the December 31 about the odd. The virus causing COVID-19 is highly transmittable and spreads mainly through coming in contact with respiratory droplets of an infected person. These droplets can penetrate the human body through inhalation or mouth [6].

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