Author/Authors :
Ghomi, Zahra Department of Radiology - Shohadaye Tajrish Hospital - Shahid Beheshti University of Medical Sciences, Tehran, Iran , Mirshahi, Reza Eye Research Center - The Five Senses Institute - Iran University of Medical Sciences, Tehran, Iran , Khameneh Bagheri, Arash Department of Radiology - Shohadaye Tajrish Hospital - Shahid Beheshti University of Medical Sciences, Tehran, Iran , Fattahpour, Ali Department of Radiology - Arak University of Medical Sciences, Arak, Iran , Mohammadiun, Saeed School of Engineering - University of British Columbia, Canada , Alavi Gharahbagh, Abdorreza Department of Electrical and Computer Engineering - Islamic Azad University, Shahrood Branch, Iran , Djavadifar, Abtin School of Engineering - University of British Columbia, Canada , Arabalibeik, Hossein Research Center for Biomedical Technologies and Robotics (RCBTR) - Tehran University of Medical Sciences, Tehran, Iran , Sadiq, Rehan School of Engineering - University of British Columbia, Canada , Hewage, Kasun School of Engineering - University of British Columbia, Canada
Abstract :
Background: Lung CT scan has a pivotal role in diagnosis and monitoring of COVID-19 patients, and with growing number of
affected individuals, the need for artificial intelligence (AI)-based systems for interpretation of CT images is emerging. In current
investigation we introduce a new deep learning-based automatic segmentation model for localization of COVID-19 pulmonary lesions.
Methods: A total of 2469 CT scan slices, containing 1402 manually segmented abnormal and 1067 normal slices form 55 COVID-
19 patients and 41 healthy individuals, were used to train a deep convolutional neural network (CNN) model based on Detectron2, an
open-source modular object detection library. A dataset, including 1224 CT slices of 18 COVID-19 patients and 9 healthy individuals,
was used to test the model.
Results: The accuracy, sensitivity, and specificity of the trained model in marking a single image slice with COVID-19 lesion were
0.954, 0.928, and 0.961, respectively. Considering a threshold of 0.4% for percentage of lung involvement, the model was capable of
diagnosing the patients with COVID-19 pneumonia, with a sensitivity of 0.982% and a specificity of 88.5%. Furthermore, the mean
Intersection over union (IoU) index for the test dataset was 0.865.
Conclusion: The deep learning-based automatic segmentation method provides an acceptable accuracy in delineation and
localization of COVID-19 lesions, assisting the clinicians and researchers for quantification of abnormal findings in chest CT scans.
Moreover, instance segmentation is capable of monitoring longitudinal changes of the lesions, which could be beneficial to patients’
follow-up.
Keywords :
COVID-19 , Artificial intelligence , Deep learning , Tomography , X-ray , Pneumonia