EDL-COVID: Ensemble Deep Learning for COVID-19 Case Detection From Chest X-Ray Images

Effective screening of COVID-19 cases has been becoming extremely important to mitigate and stop the quick spread of the disease during the current period of COVID-19 pandemic worldwide. In this article, we consider radiology examination of using chest X-ray images, which is among the effective scre...

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Veröffentlicht in:IEEE transactions on industrial informatics 2021-09, Vol.17 (9), p.6539-6549
Hauptverfasser: Tang, Shanjiang, Wang, Chunjiang, Nie, Jiangtian, Kumar, Neeraj, Zhang, Yang, Xiong, Zehui, Barnawi, Ahmed
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Sprache:eng
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Zusammenfassung:Effective screening of COVID-19 cases has been becoming extremely important to mitigate and stop the quick spread of the disease during the current period of COVID-19 pandemic worldwide. In this article, we consider radiology examination of using chest X-ray images, which is among the effective screening approaches for COVID-19 case detection. Given deep learning is an effective tool and framework for image analysis, there have been lots of studies for COVID-19 case detection by training deep learning models with X-ray images. Although some of them report good prediction results, their proposed deep learning models might suffer from overfitting, high variance, and generalization errors caused by noise and a limited number of datasets. Considering ensemble learning can overcome the shortcomings of deep learning by making predictions with multiple models instead of a single model, we propose EDL-COVID , an ensemble deep learning model employing deep learning and ensemble learning. The EDL-COVID model is generated by combining multiple snapshot models of COVID-Net, which has pioneered in an open-sourced COVID-19 case detection method with deep neural network processed chest X-ray images, by employing a proposed weighted averaging ensembling method that is aware of different sensitivities of deep learning models on different classes types. Experimental results show that EDL-COVID offers promising results for COVID-19 case detection with an accuracy of 95%, better than COVID-Net of 93.3%.
ISSN:1551-3203
1941-0050
DOI:10.1109/TII.2021.3057683