Abstract

COVID-19 represents one of the greatest challenges in modern history. Its impact is most noticeable in the health care system, mostly due to the accelerated and increased influx of patients with a more severe clinical picture. These facts are increasing the pressure on health systems. For this reason, the aim is to automate the process of diagnosis and treatment. The research presented in this article conducted an examination of the possibility of classifying the clinical picture of a patient using X-ray images and convolutional neural networks. The research was conducted on the dataset of 185 images that consists of four classes. Due to a lower amount of images, a data augmentation procedure was performed. In order to define the CNN architecture with highest classification performances, multiple CNNs were designed. Results show that the best classification performances can be achieved if ResNet152 is used. This CNN has achieved and up to 0.94, suggesting the possibility of applying CNN to the classification of the clinical picture of COVID-19 patients using an X-ray image of the lungs. When higher layers are frozen during the training procedure, higher and values are achieved. If ResNet152 is utilized, and values up to 0.96 are achieved if all layers except the last 12 are frozen during the training procedure.

Highlights

  • The Coronavirus disease 2019 (COVID-19) caused by Severe Acute Respiratory Syndrome virus 2 (SARS-CoV-2) is a viral, respiratory lung disease [1]

  • A significant drop of AUCmicro occurs if ResNet50 is trained for a higher number of consecutive epochs, while the AUCmicro value tops when the network is trained for 75 epochs with an Adam solver or 100 epochs for the AdaMax and Nadam solvers

  • It can be noticed that the highest AUCmacro value is achieved when ResNet152 is trained for 125 epochs

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Summary

Introduction

The Coronavirus disease 2019 (COVID-19) caused by Severe Acute Respiratory Syndrome virus 2 (SARS-CoV-2) is a viral, respiratory lung disease [1]. The spread of COVID-19 has been rapid, and it has affected the daily lives of millions across the globe The dangers it poses are well-known [2], with the most important ones being its relatively high severity and mortality rate [3] and the strain it exhibits on the healthcare systems of countries worldwide [4,5]. Artificial intelligence (AI) techniques have already been proven to be a useful tool in the fight against COVID-19 [7,8], so the possibility exists of them being applied in this area as well Existence of such algorithms may lower the strain on the potentially scarce resources, by allowing early planning and allocation. They may provide decision support to overworked healthcare professionals

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