Author: Irmak, Emrah
Title: COVIDâ€19 disease severity assessment using CNN model Cord-id: 5i5tn27w Document date: 2021_3_7
ID: 5i5tn27w
Snippet: Due to the highly infectious nature of the novel coronavirus (COVIDâ€19) disease, excessive number of patients waits in the line for chest Xâ€ray examination, which overloads the clinicians and radiologists and negatively affects the patient's treatment, prognosis and control of the pandemic. Now that the clinical facilities such as the intensive care units and the mechanical ventilators are very limited in the face of this highly contagious disease, it becomes quite important to classify the
Document: Due to the highly infectious nature of the novel coronavirus (COVIDâ€19) disease, excessive number of patients waits in the line for chest Xâ€ray examination, which overloads the clinicians and radiologists and negatively affects the patient's treatment, prognosis and control of the pandemic. Now that the clinical facilities such as the intensive care units and the mechanical ventilators are very limited in the face of this highly contagious disease, it becomes quite important to classify the patients according to their severity levels. This paper presents a novel implementation of convolutional neural network (CNN) approach for COVIDâ€19 disease severity classification (assessment). An automated CNN model is designed and proposed to divide COVIDâ€19 patients into four severity classes as mild, moderate, severe, and critical with an average accuracy of 95.52% using chest Xâ€ray images as input. Experimental results on a sufficiently large number of chest Xâ€ray images demonstrate the effectiveness of CNN model produced with the proposed framework. To the best of the author's knowledge, this is the first COVIDâ€19 disease severity assessment study with four stages (mild vs. moderate vs. severe vs. critical) using a sufficiently large number of Xâ€ray images dataset and CNN whose almost all hyperâ€parameters are automatically tuned by the grid search optimiser.
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