Abstract

The global pandemic of coronavirus disease 2019 (COVID-19) is continuing to have a significant effect on the well-being of the global population, thus increasing the demand for rapid testing, diagnosis, and treatment. As COVID-19 can cause severe pneumonia, early diagnosis is essential for correct treatment, as well as to reduce the stress on the healthcare system. Along with COVID-19, other etiologies of pneumonia and Tuberculosis (TB) constitute additional challenges to the medical system. Pneumonia (viral as well as bacterial) kills about 2 million infants every year and is consistently estimated as one of the most important factor of childhood mortality (according to the World Health Organization). Chest X-ray (CXR) and computed tomography (CT) scans are the primary imaging modalities for diagnosing respiratory diseases. Although CT scans are the gold standard, they are more expensive, time consuming, and are associated with a small but significant dose of radiation. Hence, CXR have become more widespread as a first line investigation. In this regard, the objective of this work is to develop a new deep transfer learning pipeline, named DenResCov-19, to diagnose patients with COVID-19, pneumonia, TB or healthy based on CXR images. The pipeline consists of the existing DenseNet-121 and the ResNet-50 networks. Since the DenseNet and ResNet have orthogonal performances in some instances, in the proposed model we have created an extra layer with convolutional neural network (CNN) blocks to join these two models together to establish superior performance as compared to the two individual networks. This strategy can be applied universally in cases where two competing networks are observed. We have tested the performance of our proposed network on two-class (pneumonia and healthy), three-class (COVID-19 positive, healthy, and pneumonia), as well as four-class (COVID-19 positive, healthy, TB, and pneumonia) classification problems. We have validated that our proposed network has been able to successfully classify these lung-diseases on our four datasets and this is one of our novel findings. In particular, the AUC-ROC are 99.60, 96.51, 93.70, 96.40% and the F1 values are 98.21, 87.29, 76.09, 83.17% on our Dataset X-Ray 1, 2, 3, and 4 (DXR1, DXR2, DXR3, DXR4), respectively.

Highlights

  • Coronavirus 2019 (COVID-19), a disease caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) virus, has affected the health of populations globally ((16))

  • Related Works JoIn this section, we present a brief overview of pneumonia and COVID-19 diagnosis studies based on chest X-ray (CXR)/computed tomography (CT) scans and the impact of artificial intelligence of COVID-19 in hospital management. 2.1

  • Methodology and Background u In the current study, we propose to train a deep learning network, named JoDenResCov-19, to solve a multi-class problem, namely, whether a patient is healthy or has pneumonia, COVID-19, or tuberculosis. 3.1

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Summary

Introduction

Coronavirus 2019 (COVID-19), a disease caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) virus, has affected the health of populations globally ((16)). O [48] implemented a deep learning-based CT diagnosis system, named Deepo Pneumonia, to identify patients with COVID-19 They manually segmented the r lung region and classified COVID-19 or healthy cases using a DL network. Methodology and Background u In the current study, we propose to train a deep learning network, named JoDenResCov-19, to solve a multi-class problem, namely, whether a patient is healthy or has pneumonia, COVID-19, or tuberculosis. Since there is currently a lack of existing publicly available u dataset of CXR images relating to COVID-19 cases, we have tested the behavior oof benchmark models in the CT cohort in order to check if the expected behavior Jof the proposed network can be observed (i.e. achieve high F1 and AUC-ROC values). The AUC (area under the curve)-ROC value can be computed by integrating over the receiver operating characteristic (ROC) curve, plotting the true positive rate against the false positive rate

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