Abstract

COVID-19 is a respiratory illness that has affected a large population worldwide and continues to have devastating consequences. It is imperative to detect COVID-19 at the earliest opportunity to limit the span of infection. In this work, we developed a new CNN architecture STM-RENet to interpret the radiographic patterns from X-ray images. The proposed STM-RENet is a block-based CNN that employs the idea of split–transform–merge in a new way. In this regard, we have proposed a new convolutional block STM that implements the region and edge-based operations separately, as well as jointly. The systematic use of region and edge implementations in combination with convolutional operations helps in exploring region homogeneity, intensity inhomogeneity, and boundary-defining features. The learning capacity of STM-RENet is further enhanced by developing a new CB-STM-RENet that exploits channel boosting and learns textural variations to effectively screen the X-ray images of COVID-19 infection. The idea of channel boosting is exploited by generating auxiliary channels from the two additional CNNs using Transfer Learning, which are then concatenated to the original channels of the proposed STM-RENet. A significant performance improvement is shown by the proposed CB-STM-RENet in comparison to the standard CNNs on three datasets, especially on the stringent CoV-NonCoV-15k dataset. The good detection rate (97%), accuracy (96.53%), and reasonable F-score (95%) of the proposed technique suggest that it can be adapted to detect COVID-19 infected patients.

Highlights

  • COVID-19 is a severe and continuing pandemic, which broke out in December 2019 and has affected the whole world [1]

  • Channel Boosted (CB)-STM-RENet significantly decreases the number of False negatives

  • This work images exhibit COVID-19 specific patterns such as Ground Glass Opacity, Consolidation, proposes STM-RENet, which incorporates the idea of classical image processing in convoluReticulation, and blurring of lung markings compared to healthy individuals

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Summary

Introduction

COVID-19 is a severe and continuing pandemic, which broke out in December 2019 and has affected the whole world [1]. This new pathogenic viral infection is caused by a new virus from the coronavirus (CoV) family named SARS-CoV-2. COVID-19 causes a respiratory illness that can be asymptomatic, or its clinical manifestation can span fever, cough, myalgia, respiratory impairment, pneumonia, acute respiratory distress and even death in severe cases [4,5]. These factors necessitate the early detection of COVID-19 for proper care of patients and to control infection spread [6]. The standard virus antigen detection approach approved by the World Health Organization is Polymerase Chain Reaction (PCR); it suffers from a high False-negative rate depending upon viral load and sampling strategy (30–70% True-positive rate) [7–9]

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