COVIDiag: a clinical CAD system to diagnose COVID-19 pneumonia based on CT findings

Abbasian Ardakani, A. and Acharya, U.R. and Habibollahi, S. and Mohammadi, A. (2021) COVIDiag: a clinical CAD system to diagnose COVID-19 pneumonia based on CT findings. European Radiology, 31 (1). pp. 121-130.

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Abstract

Objectives: CT findings of COVID-19 look similar to other atypical and viral (non-COVID-19) pneumonia diseases. This study proposes a clinical computer-aided diagnosis (CAD) system using CT features to automatically discriminate COVID-19 from non-COVID-19 pneumonia patients. Methods: Overall, 612 patients (306 COVID-19 and 306 non-COVID-19 pneumonia) were recruited. Twenty radiological features were extracted from CT images to evaluate the pattern, location, and distribution of lesions of patients in both groups. All significant CT features were fed in five classifiers namely decision tree, K-nearest neighbor, naïve Bayes, support vector machine, and ensemble to evaluate the best performing CAD system in classifying COVID-19 and non-COVID-19 cases. Results: Location and distribution pattern of involvement, number of the lesion, ground-glass opacity (GGO) and crazy-paving, consolidation, reticular, bronchial wall thickening, nodule, air bronchogram, cavity, pleural effusion, pleural thickening, and lymphadenopathy are the significant features to classify COVID-19 from non-COVID-19 groups. Our proposed CAD system obtained the sensitivity, specificity, and accuracy of 0.965, 93.54, 90.32, and 91.94, respectively, using ensemble (COVIDiag) classifier. Conclusions: This study proposed a COVIDiag model obtained promising results using CT radiological routine features. It can be considered an adjunct tool by the radiologists during the current COVID-19 pandemic to make an accurate diagnosis. Key Points: � Location and distribution of involvement, number of lesions, GGO and crazy-paving, consolidation, reticular, bronchial wall thickening, nodule, air bronchogram, cavity, pleural effusion, pleural thickening, and lymphadenopathy are the significant features between COVID-19 from non-COVID-19 groups. � The proposed CAD system, COVIDiag, could diagnose COVID-19 pneumonia cases with an AUC of 0.965 (sensitivity = 93.54; specificity = 90.32; and accuracy = 91.94). � The AUC, sensitivity, specificity, and accuracy obtained by radiologist diagnosis are 0.879, 87.10, 88.71, and 87.90, respectively. © 2020, European Society of Radiology.

Item Type: Article
Additional Information: cited By 3
Uncontrolled Keywords: adult; Article; Bayesian learning; bronchial wall thickening; bronchography; classifier; clinical feature; computer assisted diagnosis; coronavirus disease 2019; decision tree; feature extraction; female; human; k nearest neighbor; lung nodule; lymphadenopathy; major clinical study; male; multidetector computed tomography; pleura cavity; pleura effusion; pleura thickening; pneumonia; priority journal; retrospective study; sensitivity and specificity; support vector machine; thorax radiography; x-ray computed tomography
Subjects: WC Communicable Diseases
WF Respiratory System
Depositing User: eprints admin
Date Deposited: 18 Apr 2021 07:46
Last Modified: 18 Apr 2021 07:46
URI: http://eprints.iums.ac.ir/id/eprint/33325

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