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A deep learning-based application for COVID-19 diagnosis on CT:The Imaging COVID-19 AI initiative
- Source :
- Topff , L , Sánchez-García , J , the Imaging COVID-19 AI initiative , López-González , R , Pastor , A J , Visser , J J , Huisman , M , Guiot , J , Beets-Tan , R G H , Alberich-Bayarri , A , Fuster-Matanzo , A & Ranschaert , E R 2023 , ' A deep learning-based application for COVID-19 diagnosis on CT : The Imaging COVID-19 AI initiative ' , PLoS ONE , vol. 18 , no. 5 5 , e0285121 .
- Publication Year :
- 2023
-
Abstract
- Background Recently, artificial intelligence (AI)-based applications for chest imaging have emerged as potential tools to assist clinicians in the diagnosis and management of patients with coronavirus disease 2019 (COVID-19). Objectives To develop a deep learning-based clinical decision support system for automatic diagnosis of COVID-19 on chest CT scans. Secondarily, to develop a complementary segmentation tool to assess the extent of lung involvement and measure disease severity. Methods The Imaging COVID-19 AI initiative was formed to conduct a retrospective multicentre cohort study including 20 institutions from seven different European countries. Patients with suspected or known COVID-19 who underwent a chest CT were included. The dataset was split on the institution-level to allow external evaluation. Data annotation was performed by 34 radiologists/radiology residents and included quality control measures. A multi-class classification model was created using a custom 3D convolutional neural network. For the segmentation task, a UNET-like architecture with a backbone Residual Network (ResNet-34) was selected. Results A total of 2, 802 CT scans were included (2, 667 unique patients, mean [standard deviation] age = 64.6 [16.2] years, male/female ratio 1.3:1). The distribution of classes (COVID-19/Other type of pulmonary infection/No imaging signs of infection) was 1, 490 (53.2%), 402 (14.3%), and 910 (32.5%), respectively. On the external test dataset, the diagnostic multiclassification model yielded high micro-average and macro-average AUC values (0.93 and 0.91, respectively). The model provided the likelihood of COVID-19 vs other cases with a sensitivity of 87% and a specificity of 94%. The segmentation performance was moderate with Dice similarity coefficient (DSC) of 0.59. An imaging analysis pipeline was developed that returned a quantitative report to the user. Conclusion We developed a deep learning-based clinical decision support system that could bec
Details
- Database :
- OAIster
- Journal :
- Topff , L , Sánchez-García , J , the Imaging COVID-19 AI initiative , López-González , R , Pastor , A J , Visser , J J , Huisman , M , Guiot , J , Beets-Tan , R G H , Alberich-Bayarri , A , Fuster-Matanzo , A & Ranschaert , E R 2023 , ' A deep learning-based application for COVID-19 diagnosis on CT : The Imaging COVID-19 AI initiative ' , PLoS ONE , vol. 18 , no. 5 5 , e0285121 .
- Notes :
- application/pdf, English
- Publication Type :
- Electronic Resource
- Accession number :
- edsoai.on1383761008
- Document Type :
- Electronic Resource