Abstract

Coronavirus disease 2019 (COVID-19) is a novel harmful respiratory disease that has rapidly spread worldwide. At the end of 2019, COVID-19 emerged as a previously unknown respiratory disease in Wuhan, Hubei Province, China. The world health organization (WHO) declared the coronavirus outbreak a pandemic in the second week of March 2020. Simultaneous deep learning detection and classification of COVID-19 based on the full resolution of digital X-ray images is the key to efficiently assisting patients by enabling physicians to reach a fast and accurate diagnosis decision. In this paper, a simultaneous deep learning computer-aided diagnosis (CAD) system based on the YOLO predictor is proposed that can detect and diagnose COVID-19, differentiating it from eight other respiratory diseases: atelectasis, infiltration, pneumothorax, masses, effusion, pneumonia, cardiomegaly, and nodules. The proposed CAD system was assessed via five-fold tests for the multi-class prediction problem using two different databases of chest X-ray images: COVID-19 and ChestX-ray8. The proposed CAD system was trained with an annotated training set of 50,490 chest X-ray images. The regions on the entire X-ray images with lesions suspected of being due to COVID-19 were simultaneously detected and classified end-to-end via the proposed CAD predictor, achieving overall detection and classification accuracies of 96.31% and 97.40%, respectively. Most test images from patients with confirmed COVID-19 and other respiratory diseases were correctly predicted, achieving average intersection over union (IoU) greater than 90%. Applying deep learning regularizers of data balancing and augmentation improved the COVID-19 diagnostic performance by 6.64% and 12.17% in terms of the overall accuracy and the F1-score, respectively. It is feasible to achieve a diagnosis based on individual chest X-ray images with the proposed CAD system within 0.0093 s. Thus, the CAD system presented in this paper can make a prediction at the rate of 108 frames/s (FPS), which is close to real-time. The proposed deep learning CAD system can reliably differentiate COVID-19 from other respiratory diseases. The proposed deep learning model seems to be a reliable tool that can be used to practically assist health care systems, patients, and physicians.

Highlights

  • Coronavirus disease 2019 (COVID-19) has recently become an unprecedented public health crisis worldwide [1]

  • The objective of this work was to provide a practical and feasible computer-aided diagnosis (CAD) system based on artificial intelligence (AI) that can help physicians, patients, healthcare systems, and hospitals by facilitating the faster and more accurate diagnosis of COVID-19

  • The detection by the CAD system of regions containing suspected lesions related to a respiratory disease (i.e., COVID-19 or another disease) represents a crucial prerequisite for achieving a more accurate diagnosis

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Summary

Introduction

Coronavirus disease 2019 (COVID-19) has recently become an unprecedented public health crisis worldwide [1]. COVID19 caused by a new coronavirus named severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) [2, 3]. After the first case of COVID-19 was discovered in Wuhan, the virus has rapidly spread to 216 countries worldwide, largely due to human-to-human transmission of the virus early in the clinical course [1]. The COVID-19 pandemic has imposed substantial demands on the public health systems, health infrastructure, and economies of most countries worldwide [5]. Because the total number of people infected by SARS-CoV-2 has increased rapidly, the capacity of healthcare systems (i.e., beds, ventilators, care providers, masks, etc.) is insufficient to meet the demand. Education systems have been negatively affected by the COVID-19 pandemic, and schools and universities have switch to remote learning

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