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Tytuł pozycji:

Transfer-to-Transfer Learning Approach for Computer Aided Detection of COVID-19 in Chest Radiographs

Tytuł:
Transfer-to-Transfer Learning Approach for Computer Aided Detection of COVID-19 in Chest Radiographs
Autorzy:
Barath Narayanan Narayanan
Russell C. Hardie
Vignesh Krishnaraja
Christina Karam
Venkata Salini Priyamvada Davuluru
Temat:
coronavirus
COVID-19
computer aided detection
convolutional neural networks
pneumonia
chest radiography
Electronic computers. Computer science
QA75.5-76.95
Źródło:
AI, Vol 1, Iss 4, Pp 539-557 (2020)
Wydawca:
MDPI AG, 2020.
Rok publikacji:
2020
Kolekcja:
LCC:Electronic computers. Computer science
Typ dokumentu:
article
Opis pliku:
electronic resource
Język:
English
ISSN:
2673-2688
Relacje:
https://www.mdpi.com/2673-2688/1/4/32; https://doaj.org/toc/2673-2688
DOI:
10.3390/ai1040032
Dostęp URL:
https://doaj.org/article/9ad0106067dc4be39e0847990f98e42f  Link otwiera się w nowym oknie
Numer akcesji:
edsdoj.9ad0106067dc4be39e0847990f98e42f
Czasopismo naukowe
The coronavirus disease 2019 (COVID-19) global pandemic has severely impacted lives across the globe. Respiratory disorders in COVID-19 patients are caused by lung opacities similar to viral pneumonia. A Computer-Aided Detection (CAD) system for the detection of COVID-19 using chest radiographs would provide a second opinion for radiologists. For this research, we utilize publicly available datasets that have been marked by radiologists into two-classes (COVID-19 and non-COVID-19). We address the class imbalance problem associated with the training dataset by proposing a novel transfer-to-transfer learning approach, where we break a highly imbalanced training dataset into a group of balanced mini-sets and apply transfer learning between these. We demonstrate the efficacy of the method using well-established deep convolutional neural networks. Our proposed training mechanism is more robust to limited training data and class imbalance. We study the performance of our algorithm(s) based on 10-fold cross validation and two hold-out validation experiments to demonstrate its efficacy. We achieved an overall sensitivity of 0.94 for the hold-out validation experiments containing 2265 and 2139 marked as COVID-19 chest radiographs, respectively. For the 10-fold cross validation experiment, we achieve an overall Area under the Receiver Operating Characteristic curve (AUC) value of 0.996 for COVID-19 detection. This paper serves as a proof-of-concept that an automated detection approach can be developed with a limited set of COVID-19 images, and in areas with scarcity of trained radiologists.

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