Feasibility of Radiomics to Differentiate Coronavirus Disease 2019 (COVID-19) from H1N1 Influenza Pneumonia on Chest Computed Tomography: A Proof of Concept.
Artificial intelligence
COVID-19
Influenza, Human
Tomography
Journal
Iranian journal of medical sciences
ISSN: 1735-3688
Titre abrégé: Iran J Med Sci
Pays: Iran
ID NLM: 8104374
Informations de publication
Date de publication:
Nov 2021
Nov 2021
Historique:
received:
08
09
2020
revised:
09
01
2021
accepted:
20
01
2021
entrez:
29
11
2021
pubmed:
30
11
2021
medline:
24
12
2021
Statut:
ppublish
Résumé
Chest computed tomography (CT) plays an essential role in diagnosing coronavirus disease 2019 (COVID-19). However, CT findings are often nonspecific among different viral pneumonia conditions. The differentiation between COVID-19 and influenza can be challenging when seasonal influenza concurs with the COVID-19 pandemic. This study was conducted to test the ability of radiomics-artificial intelligence (AI) to perform this task. In this retrospective study, chest CT images from 47 patients with COVID-19 (after February 2020) and 19 patients with H1N1 influenza (before September 2019) pneumonia were collected from three hospitals affiliated with Arak University of Medical Sciences, Arak, Iran. All pulmonary lesions were segmented on CT images. Multiple radiomics features were extracted from the lesions and used to develop support-vector machine (SVM), k-nearest neighbor (k-NN), decision tree, neural network, adaptive boosting (AdaBoost), and random forest. The patients with COVID-19 and H1N1 influenza were not significantly different in age and sex (P=0.13 and 0.99, respectively). Nonetheless, the average time between initial symptoms/hospitalization and chest CT was shorter in the patients with COVID-19 (P=0.001 and 0.01, respectively). After the implementation of the inclusion and exclusion criteria, 453 pulmonary lesions were included in this study. On the harmonized features, random forest yielded the highest performance (area under the curve=0.97, sensitivity=89%, precision=90%, F1 score=89%, and classification accuracy=89%). In our preliminary study, radiomics feature extraction, conjoined with AI, especially random forest and neural network, appeared to yield very promising results in the differentiation between COVID-19 and H1N1 influenza on chest CT.
Sections du résumé
BACKGROUND
BACKGROUND
Chest computed tomography (CT) plays an essential role in diagnosing coronavirus disease 2019 (COVID-19). However, CT findings are often nonspecific among different viral pneumonia conditions. The differentiation between COVID-19 and influenza can be challenging when seasonal influenza concurs with the COVID-19 pandemic. This study was conducted to test the ability of radiomics-artificial intelligence (AI) to perform this task.
METHODS
METHODS
In this retrospective study, chest CT images from 47 patients with COVID-19 (after February 2020) and 19 patients with H1N1 influenza (before September 2019) pneumonia were collected from three hospitals affiliated with Arak University of Medical Sciences, Arak, Iran. All pulmonary lesions were segmented on CT images. Multiple radiomics features were extracted from the lesions and used to develop support-vector machine (SVM), k-nearest neighbor (k-NN), decision tree, neural network, adaptive boosting (AdaBoost), and random forest.
RESULTS
RESULTS
The patients with COVID-19 and H1N1 influenza were not significantly different in age and sex (P=0.13 and 0.99, respectively). Nonetheless, the average time between initial symptoms/hospitalization and chest CT was shorter in the patients with COVID-19 (P=0.001 and 0.01, respectively). After the implementation of the inclusion and exclusion criteria, 453 pulmonary lesions were included in this study. On the harmonized features, random forest yielded the highest performance (area under the curve=0.97, sensitivity=89%, precision=90%, F1 score=89%, and classification accuracy=89%).
CONCLUSION
CONCLUSIONS
In our preliminary study, radiomics feature extraction, conjoined with AI, especially random forest and neural network, appeared to yield very promising results in the differentiation between COVID-19 and H1N1 influenza on chest CT.
Identifiants
pubmed: 34840382
doi: 10.30476/ijms.2021.88036.1858
pii: IJMS-46-6
pmc: PMC8611216
doi:
Types de publication
Journal Article
Langues
eng
Sous-ensembles de citation
IM
Pagination
420-427Informations de copyright
Copyright: © Iranian Journal of Medical Sciences.
Références
BMC Med Imaging. 2019 Aug 8;19(1):63
pubmed: 31395012
PLoS One. 2019 May 7;14(5):e0216308
pubmed: 31063477
Zhonghua Lao Dong Wei Sheng Zhi Ye Bing Za Zhi. 2019 Sep 20;37(9):707-710
pubmed: 31594134
Clin Med (Lond). 2020 Mar;20(2):124-127
pubmed: 32139372
Eur J Radiol Open. 2020;7:100271
pubmed: 32959017
Sci Rep. 2018 Aug 29;8(1):13047
pubmed: 30158540
Eur J Radiol. 2020 May;126:108961
pubmed: 32229322
Eur Radiol. 2021 May;31(5):2819-2824
pubmed: 33051732
Phys Med Biol. 2020 Jan 13;65(1):015010
pubmed: 31835261
Radiology. 2020 Aug;296(2):E32-E40
pubmed: 32101510
MedComm (2020). 2020 Aug 13;:
pubmed: 32838396
J Thorac Dis. 2019 Jun;11(6):2274-2286
pubmed: 31372264
Med Phys. 2017 Mar;44(3):1050-1062
pubmed: 28112418
J Med Virol. 2021 Jan;93(1):448-455
pubmed: 32603515
Transl Lung Cancer Res. 2019 Dec;8(6):979-988
pubmed: 32010576
Eur Radiol Exp. 2018 Nov 14;2(1):36
pubmed: 30426318