Segmentation of COVID-19 Infections on CT: Comparison of Four UNet-Based Networks

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Abstract

Diagnosis and staging of COVID-19 are crucial for optimal management of the disease. To this end, novel image analysis methods need to be developed to assist radiologists with the detection and quantification of the COVID-19-related lung infections. In this work, we develop and evaluate four Artificial intelligence (AI) based lesion segmentation and quantification methods from chest CT, using U-Net, Attention U-Net, R2U-Net, and Attention R2U-Net models. These models are trained and evaluated using a dataset consisting of 8739 CT images of the lungs from 147 healthy subjects and 150 patients infected by COVID-19. The results show that the Attention R2U-Net model is superior to the others with a Dice value of 0.79. The lesion volumes estimated by the Attention R2U-Net model are highly correlated with those of the manual segmentations by an expert, with a correlation coefficient of 0.96.

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Hasanzadeh, N., Paima, S. S., Bashirgonbadi, A., Naghibi, M., & Soltanian-Zadeh, H. (2020). Segmentation of COVID-19 Infections on CT: Comparison of Four UNet-Based Networks. In 27th National and 5th International Iranian Conference of Biomedical Engineering, ICBME 2020 (pp. 222–225). Institute of Electrical and Electronics Engineers Inc. https://doi.org/10.1109/ICBME51989.2020.9319412

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