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Machine Learning Approach for Autonomous Detection and Classification of COVID-19 Virus.
Shahin, Osama R; Alshammari, Hamoud H; Taloba, Ahmed I; El-Aziz, Rasha M Abd.
  • Shahin OR; Department of Computer Science, College of Science and Arts in Gurayat, Jouf University, SaudiArabia.
  • Alshammari HH; Information Systems Department, College of Computer and information sciences, Sakaka, Jouf University, Saudi Arabia.
  • Taloba AI; Department of Computer Science, College of Science and Arts in Gurayat, Jouf University, SaudiArabia.
  • El-Aziz RMA; Department of Computer Science, College of Science and Arts in Gurayat, Jouf University, SaudiArabia.
Comput Electr Eng ; 101: 108055, 2022 Jul.
Article in English | MEDLINE | ID: covidwho-1814286
ABSTRACT
As people all over the world are vulnerable to be affected by the COVID-19 virus, the automatic detection of such a virus is an important concern. The paper aims to detect and classify corona virus using machine learning. To spot and identify corona virus in CT-Lung screening and Computer-Aided diagnosis (CAD) system is projected to distinguish and classifies the COVID-19. By utilizing the clinical specimens obtained from the corona-infected patients with the help of some machine learning techniques like Decision Tree, Support Vector Machine, K-means clustering, and Radial Basis Function. While some specialists believe that the RT-PCR test is the best option for diagnosing Covid-19 patients, others believe that CT scans of the lungs can be more accurate in diagnosing corona virus infection, as well as being less expensive than the PCR test. The clinical specimens include serum specimens, respiratory secretions, and whole blood specimens. Overall, 15 factors are measured from these specimens as the result of the previous clinical examinations. The proposed CAD system consists of four phases starting with the CT lungs screening collection, followed by a pre-processing stage to enhance the appearance of the ground glass opacities (GGOs) nodules as they originally lock hazy with fainting contrast. A modified K-means algorithm will be used to detect and segment these regions. Finally, the use of detected, infected areas that obtained in the detection phase with a scale of 50×50 and perform segmentation of the solid false positives that seem to be GGOs as inputs and targets for the machine learning classifiers, here a support vector machine (SVM) and Radial basis function (RBF) has been utilized. Moreover, a GUI application is developed which avoids the confusion of the doctors for getting the exact results by giving the 15 input factors obtained from the clinical specimens.
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Full text: Available Collection: International databases Database: MEDLINE Type of study: Diagnostic study / Prognostic study Language: English Journal: Comput Electr Eng Year: 2022 Document Type: Article

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Full text: Available Collection: International databases Database: MEDLINE Type of study: Diagnostic study / Prognostic study Language: English Journal: Comput Electr Eng Year: 2022 Document Type: Article