Abstract

COVID-19 is a disease that can be spread easily with minimal physical contact. Currently, the World Health Organization (WHO) has endorsed the reverse transcription-polymerase chain reaction swab test as a diagnostic tool to confirm COVID-19 cases. This test requires at least a day for the results to come out depending on the available facilities. Many countries have adopted a targeted approach in screening potential patients due to the cost. However, there is a need for a fast and accurate screening test to complement this targeted approach, so that the potential virus carriers can be quarantined as early as possible. The X-ray is a good screening modality; it is quick at capturing, cheap, and widely available, even in third world countries. Therefore, a deep learning approach has been proposed to automate the screening process by introducing LightCovidNet, a lightweight deep learning model that is suitable for the mobile platform. It is important to have a lightweight model so that it can be used all over the world even on a standard mobile phone. The model has been trained with additional synthetic data that were generated from the conditional deep convolutional generative adversarial network. LightCovidNet consists of three components, which are entry, middle, and exit flows. The middle flow comprises five units of feed-forward convolutional neural networks that are built using separable convolution operators. The exit flow is designed to improve the multi-scale capability of the network through a simplified spatial pyramid pooling module. It is a symmetrical architecture with three parallel pooling branches that enable the network to learn multi-scale features, which is suitable for cases wherein the X-ray images were captured from all over the world independently. Besides, the usage of separable convolution has managed to reduce the memory usage without affecting the classification accuracy. The proposed method managed to get the best mean accuracy of 0.9697 with a low memory requirement of just 841,771 parameters. Moreover, the symmetrical spatial pyramid pooling module is the most crucial component; the absence of this module will reduce the screening accuracy to just 0.9237. Hence, the developed model is suitable to be implemented for mass COVID-19 screening.

Highlights

  • As of 10th August 2020, COVID-19 disease has infected more than 20 million people all over the world and caused more than 700,000 deaths.Symmetry 2020, 12, 1530; doi:10.3390/sym12091530 www.mdpi.com/journal/symmetryGenerally, the elderly are more affected by the disease, especially the ones with prior health conditions, whereas younger people rarely show any symptoms even if they have been infected

  • COVID-19 is a type of respiratory illness that is caused by SARS-CoV-2 strain with three main symptoms, which are fever, dry cough, and tiredness [1]

  • A five-fold cross-validation method was used to verify the LightCovidNet performance, wherein the synthetic data were only added to the COVID-19 class to reduce bias during the training process

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Summary

Introduction

As of 10th August 2020, COVID-19 disease has infected more than 20 million people all over the world and caused more than 700,000 deaths (https://www.worldometers.info/coronavirus/).Symmetry 2020, 12, 1530; doi:10.3390/sym12091530 www.mdpi.com/journal/symmetryGenerally, the elderly are more affected by the disease, especially the ones with prior health conditions, whereas younger people rarely show any symptoms even if they have been infected. As of 10th August 2020, COVID-19 disease has infected more than 20 million people all over the world and caused more than 700,000 deaths (https://www.worldometers.info/coronavirus/). Bampoe et al [3] reported that COVID-19 spreads through respiratory droplets from coughing and sneezing, while the risk of airborne transmission is very low. The term “social distancing” has been popularized; it is advisable for people to maintain a certain distance to the others to reduce the infection rate of the disease. It is a crucial step in controlling the spread of the disease; some cases in

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