Author: Dhaka, Vijaypal Singh; Rani, Geeta; Oza, Meet Ganpatlal; Sharma, Tarushi; Misra, Ankit
Title: A deep learning model for mass screening of COVIDâ€19 Cord-id: qv439si3 Document date: 2021_2_3
ID: qv439si3
Snippet: The objective of this research is to develop a convolutional neural network model ‘COVIDâ€Screenâ€Net’ for multiâ€class classification of chest Xâ€ray images into three classes viz. COVIDâ€19, bacterial pneumonia, and normal. The model performs the automatic feature extraction from Xâ€ray images and accurately identifies the features responsible for distinguishing the Xâ€ray images of different classes. It plots these features on the GradCam. The authors optimized the number of convol
Document: The objective of this research is to develop a convolutional neural network model ‘COVIDâ€Screenâ€Net’ for multiâ€class classification of chest Xâ€ray images into three classes viz. COVIDâ€19, bacterial pneumonia, and normal. The model performs the automatic feature extraction from Xâ€ray images and accurately identifies the features responsible for distinguishing the Xâ€ray images of different classes. It plots these features on the GradCam. The authors optimized the number of convolution and activation layers according to the size of the dataset. They also fineâ€tuned the hyperparameters to minimize the computation time and to enhance the efficiency of the model. The performance of the model has been evaluated on the anonymous chest Xâ€ray images collected from hospitals and the dataset available on the web. The model attains an average accuracy of 97.71% and a maximum recall of 100%. The comparative analysis shows that the ‘COVIDâ€Screenâ€Net’ outperforms the existing systems for screening of COVIDâ€19. The effectiveness of the model is validated by the radiology experts on the realâ€time dataset. Therefore, it may prove a useful tool for quick and lowâ€cost mass screening of patients of COVIDâ€19. This tool may reduce the burden on health experts in the present situation of the Global Pandemic. The copyright of this tool is registered in the names of authors under the laws of Intellectual Property Rights in India with the registration number ‘SWâ€13625/2020’.
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