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Published in: European Radiology 8/2021

Open Access 01-08-2021 | Coronavirus | Imaging Informatics and Artificial Intelligence

A deep learning algorithm using CT images to screen for Corona virus disease (COVID-19)

Authors: Shuai Wang, Bo Kang, Jinlu Ma, Xianjun Zeng, Mingming Xiao, Jia Guo, Mengjiao Cai, Jingyi Yang, Yaodong Li, Xiangfei Meng, Bo Xu

Published in: European Radiology | Issue 8/2021

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Abstract

Objective

The outbreak of Severe Acute Respiratory Syndrome Coronavirus 2 (SARS-COV-2) has caused more than 26 million cases of Corona virus disease (COVID-19) in the world so far. To control the spread of the disease, screening large numbers of suspected cases for appropriate quarantine and treatment are a priority. Pathogenic laboratory testing is typically the gold standard, but it bears the burden of significant false negativity, adding to the urgent need of alternative diagnostic methods to combat the disease. Based on COVID-19 radiographic changes in CT images, this study hypothesized that artificial intelligence methods might be able to extract specific graphical features of COVID-19 and provide a clinical diagnosis ahead of the pathogenic test, thus saving critical time for disease control.

Methods

We collected 1065 CT images of pathogen-confirmed COVID-19 cases along with those previously diagnosed with typical viral pneumonia. We modified the inception transfer-learning model to establish the algorithm, followed by internal and external validation.

Results

The internal validation achieved a total accuracy of 89.5% with a specificity of 0.88 and sensitivity of 0.87. The external testing dataset showed a total accuracy of 79.3% with a specificity of 0.83 and sensitivity of 0.67. In addition, in 54 COVID-19 images, the first two nucleic acid test results were negative, and 46 were predicted as COVID-19 positive by the algorithm, with an accuracy of 85.2%.

Conclusion

These results demonstrate the proof-of-principle for using artificial intelligence to extract radiological features for timely and accurate COVID-19 diagnosis.

Key Points

• The study evaluated the diagnostic performance of a deep learning algorithm using CT images to screen for COVID-19 during the influenza season.
• As a screening method, our model achieved a relatively high sensitivity on internal and external CT image datasets.
• The model was used to distinguish between COVID-19 and other typical viral pneumonia, both of which have quite similar radiologic characteristics.
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Metadata
Title
A deep learning algorithm using CT images to screen for Corona virus disease (COVID-19)
Authors
Shuai Wang
Bo Kang
Jinlu Ma
Xianjun Zeng
Mingming Xiao
Jia Guo
Mengjiao Cai
Jingyi Yang
Yaodong Li
Xiangfei Meng
Bo Xu
Publication date
01-08-2021
Publisher
Springer Berlin Heidelberg
Published in
European Radiology / Issue 8/2021
Print ISSN: 0938-7994
Electronic ISSN: 1432-1084
DOI
https://doi.org/10.1007/s00330-021-07715-1

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