ReviewOpen Access
Deep learning-based analysis of COVID-19 X-ray images: Incorporating clinical significance and assessing misinterpretation
Authors
Author Affiliations
Daffodil International University, Charles Darwin University, University of Calgary, United International University
Published InDigital Health
Year2023
Citations15
Abstract
COVID-19, pneumonia, and tuberculosis have had a significant effect on recent global health. Since 2019, COVID-19 has been a major factor underlying the increase in respiratory-related terminal illness. Early-stage interpretation and identification of these diseases from X-ray images is essential to aid medical specialists in diagnosis. In this study, (COV-X-net19) a convolutional neural network model is developed and customized with a soft attention mechanism to classify lung diseases into four classes: normal, COVID-19, pneumonia, and tuberculosis using chest X-ray images. Image preprocessing is carried out by adjusting optimal parameters to preprocess the images before undertaking training of the classification models. Moreover, the proposed model is optimized by experimenting with different architectural structures and hyperparameters to further boost performance. The performance…
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