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A comparative study of deep-learning models for COVID-19 diagnosis based on X-ray images.

Siddiqui, Shah; Hossain, Elias; Ferdous, Rezowan; Arifeen, Murshedul; Rahman, Wahidur; Masum, Shamsul; Hopgood, Adrian; Good, Alice; Gegov, Alexander

Authors

Shah Siddiqui

Elias Hossain

Rezowan Ferdous

Wahidur Rahman

Shamsul Masum

Adrian Hopgood

Alice Good

Alexander Gegov



Contributors

Robert J. Howlett
Editor

Lakhumi C. Jain
Editor

John R. Littlewood
Editor

Marius M. Balas
Editor

Abstract

Background: The rise of COVID-19 has caused immeasurable loss to public health globally. The world has faced a severe shortage of the gold standard testing kit known as reverse transcription-polymerase chain reaction (RT-PCR). The accuracy of RT-PCR is not 100%, and it takes a few hours to deliver the test results. An additional testing solution to RT-PCR would be beneficial. Deep learning's superiority in image processing is characterised as the most effective COVID-19 diagnosis based on images. The small number of COVID-19 X-ray images in existing deep learning methods for COVID-19 diagnosis may degrade the performance of deep learning methods for new sets of images. Our priority for this research is to test and compare different deep learning algorithms on a dataset consisting of many COVID-19 X-ray images. Methods: We have merged the publicly available image data into two groups (COVID and Normal). Our dataset contains 579 COVID-19 cases and 1773 Normal cases of X-ray images. We have used 145 COVID-19 cases and 150 Normal cases to test the deep learning models. Deep learning models based on CNN, VGG16 and 19, and InceptionV3 have been considered for prediction. The performance of these models is compared based on measurements of accuracy, sensitivity, and specificity. In the deep learning models, the SoftMax activation function is used along with the Adam optimiser and categorical cross-entropy loss. A customised hybrid CNN model found in literature is considered and compared to explore how the inclusion of many COVID-19 X-ray images could impact the model's performance. Results: The accuracy of the considered deep learning models using InceptionV3, VGG16, and VGG19 algorithms achieved 50%, 90%, and 83%, respectively, in predicting the X-ray images of COVID-19. We have shown that number of COVID-19 X-ray images does have a significant impact on the model's performance. A customised hybrid CNN model found in the literature failed to perform well on a dataset consisting of a large number of COVID-19 X-ray images. The customised hybrid CNN model reached an accuracy of 71% on many COVID-19 X-ray images. In contrast, it achieved 98% accuracy on a small number of COVID-19 X-ray images. It is also observed from the experiments that the VGG16 performs well with an increased number of images. Conclusions: A maximised number of COVID-19 X-ray images should be considered in building a deep learning model. The deep learning model with VGG16 performs the best in predicting from the X-ray images.

Citation

SIDDIQUI, S., HOSSAIN, E., FERDOUS, R., ARIFEEN, M., RAHMAN, W., MASUM, S., HOPGOOD, A., GOOD, A. and GEGOV, A. 2022. A comparative study of deep-learning models for COVID-19 diagnosis based on X-ray images. In Howlett, R.J., Jain, L.C., Littlewood, J.R. and Balas, M.M. (eds.) Smart and sustainable technology for resilient cities and communities. Singapore: Springer [online], pages 163-174. Available from: https://doi.org/10.1007/978-981-16-9101-0_12

Online Publication Date Feb 25, 2022
Publication Date Dec 31, 2022
Deposit Date Aug 8, 2022
Publicly Available Date Feb 26, 2024
Publisher Springer
Pages 163-174
Series Title Advances in sustainability science and technology
Series ISSN 2662-6829; 2662-6837
Book Title Smart and sustainable technology for resilient cities and communities
Chapter Number Chapter 12
ISBN 9789811691003
DOI https://doi.org/10.1007/978-981-16-9101-0_12
Public URL https://rgu-repository.worktribe.com/output/1664713

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