Abstract

The chest Computer Tomography (CT scan) is used in the diagnosis of coronavirus disease 2019 (COVID-19) and is an important complement to the Reverse Transcription Polymerase Chain Reaction (RT-PCR) test. The paper aims to improve the radiological diagnosis in the case of coronavirus disease COVID-19 pneumonia on forms of noninvasive approaches with conventional and high-resolution computer tomography (HRCT) scan images upon chest CT images of patients confirmed with mild to severe findings. The preliminary study is to compare the radiological findings of COVID-19 pneumonia in conventional chest CT images with images processed by a new tool and reviewed by expert radiologists. The researchers used a new filter called Golden Key Tool (GK-Tool) which has confirmed the improvement in the quality and diagnostic efficacy of images acquired using our modified images. Further, Convolution Neural Networks (CNNs) architecture called VGG face was used to classify chest CT images. The classification has been performed by using VGG face on various datasets which are considered as a protocol to diagnose COVID-19, Non-COVID-19 (other lung diseases), and normal cases (no findings on chest CT). Accordingly, the performance evaluation of the GK-Tool was fairly good as shown in the first set of results, where 80–95% of participants show a good to excellent assessment of the new images view in the case of COVID-19 patients. The results, in general, illustrate good recognition rates in the diagnosis and, therefore, would be significantly higher in normal cases with COVID-19. These results could reduce the radiologist's workload burden and play a major role in the decision-making process.

Highlights

  • In the first half of this year, on March 13, 2020, the WorldHealth Organization (WHO) officially notified that the novel coronavirus disease (COVID-19) had become a global pandemic

  • Many previous studies have reported that the CT imaging features and correlation of chest computed tomography (CT) and reverse transcription polymerase chain reaction (RT-PCR) testing showed infections with SARS-CoV-2 [2,3,4]

  • The presentation images view in CT scan and the sensitivity in radiology diagnosis and detections can be improved

Read more

Summary

A Study of a New Technique of the CT Scan View and Disease

Classification Protocol Based on Level Challenges in Cases of Coronavirus Disease. Institute of Science, Material Science and Engineering, Kastamonu University, Kuzey Kent /P.O. The paper aims to improve the radiological diagnosis in the case of coronavirus disease COVID-19 pneumonia on forms of noninvasive approaches with conventional and high-resolution computer tomography (HRCT) scan images upon chest CT images of patients confirmed with mild to severe findings. The classification has been performed by using VGG face on various datasets which are considered as a protocol to diagnose COVID-19, Non-COVID-19 (other lung diseases), and normal cases (no findings on chest CT). The results, in general, illustrate good recognition rates in the diagnosis and, would be significantly higher in normal cases with COVID-19. These results could reduce the radiologist’s workload burden and play a major role in the decision-making process

Introduction
Patients and Methods
Results and Discussions
Dataset 1
Dataset 2
Dataset 3
Dataset 4
Conclusion
Conflicts of Interest
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call