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TSRNet: Diagnosis of COVID-19 based on self-supervised learning and hybrid ensemble model

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posted on 2022-07-11, 08:01 authored by J Sun, P Pi, C Tang, SH Wang, YD Zhang
Background: As of Feb 27, 2022, coronavirus (COVID-19) has caused 434,888,591 infections and 5,958,849 deaths worldwide, dealing a severe blow to the economies and cultures of most countries around the world. As the virus has mutated, its infectious capacity has further increased. Effective diagnosis of suspected cases is an important tool to stop the spread of the pandemic. Therefore, we intended to develop a computer-aided diagnosis system for the diagnosis of suspected cases. Methods: To address the shortcomings of commonly used pre-training methods and exploit the information in unlabeled images, we proposed a new pre-training method based on transfer learning with self-supervised learning (TS). After that, a new convolutional neural network based on attention mechanism and deep residual network (RANet) was proposed to extract features. Based on this, a hybrid ensemble model (TSRNet) was proposed for classifying lung CT images of suspected patients as COVID-19 and normal. Results: Compared with the existing five models in terms of accuracy (DarkCOVIDNet: 98.08%; Deep-COVID: 97.58%; NAGNN: 97.86%; COVID-ResNet: 97.78%; Patch-based CNN: 88.90%), TSRNet has the highest accuracy of 99.80%. In addition, the recall, f1-score, and AUC of the model reached 99.59%, 99.78%, and 1, respectively. Conclusion: TSRNet can effectively diagnose suspected COVID-19 cases with the help of the information in unlabeled and labeled images, thus helping physicians to adopt early treatment plans for confirmed cases.

Funding

Key Science and Technology Program of Henan Province, China (212102310084)

Key Scientific Research Projects of Colleges and Universities in Henan Province(22A520027)

History

Author affiliation

School of Computing and Mathematical Sciences, University of Leicester

Version

  • AM (Accepted Manuscript)

Published in

Computers in Biology and Medicine

Volume

146

Pagination

105531 - 105531

Publisher

Elsevier

issn

0010-4825

eissn

1879-0534

Acceptance date

2022-04-13

Copyright date

2022

Available date

2023-04-16

Language

eng

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