COVID-19: A qualitative chest CT model to identify severe form of the disease - 23/01/21
, Lukshe Kanagaratnam b, Jeanne-Marie Perotin c, Damien Jolly b, Jean-Noël Ravey d, Manel Djelouah a, Christine Hoeffel a, eHighlights |
• | Chest CT helps identify patients with severe COVID-19 using only three qualitative features. |
• | A qualitative model based on three qualitative variables can avoid calculating semi-quantitative total CT score. |
• | New Early Warning Score 2 is comparable to the CT score for identification of severe forms of COVID-19. |
Abstract |
Purpose |
The purpose of this study was to identify clinical and chest computed tomography (CT) features associated with a severe form of coronavirus disease 2019 (COVID-19) and to propose a quick and easy to use model to identify patients at risk of a severe form.
Materials and methods |
A total of 158 patients with biologically confirmed COVID-19 who underwent a chest CT after the onset of the symptoms were included. There were 84 men and 74 women with a mean age of 68±14 (SD) years (range: 24–96years). There were 100 non-severe and 58 severe cases. Their clinical data were recorded and the first chest CT examination was reviewed using a computerized standardized report. Univariate and multivariate analyses were performed in order to identify the risk factors associated with disease severity. Two models were built: one was based only on qualitative CT features and the other one included a semi-quantitative total CT score to replace the variable representing the extent of the disease. Areas under the ROC curves (AUC) of the two models were compared with DeLong's method.
Results |
Central involvement of lung parenchyma (P<0.001), area of consolidation (P<0.008), air bronchogram sign (P<0.001), bronchiectasis (P<0.001), traction bronchiectasis (P<0.011), pleural effusion (P<0.026), large involvement of either one of the upper lobes or of the middle lobe (P<0.001) and total CT score≥15 (P<0.001) were more often observed in the severe group than in the non-severe group. No significant differences were found between the qualitative model (large involvement of either upper lobes or middle lobe [odd ratio (OR)=2.473], central involvement [OR=2.760], pleural effusion [OR=2.699]) and the semi-quantitative model (total CT score≥15 [OR=3.342], central involvement [OR=2.344], pleural effusion [OR=2.754]) with AUC of 0.722 (95% CI: 0.638–0.806) vs. 0.739 (95% CI: 0.656–0.823), respectively (P=0.209).
Conclusion |
We have developed a new qualitative chest CT-based multivariate model that provides independent risk factors associated with severe form of COVID-19.
Le texte complet de cet article est disponible en PDF.Keywords : Severe acute respiratory syndrome coronavirus 2, Tomography, X-ray computed (CT), COVID-19, Risk factors, Severity of illness index
Abbreviations : AUC, COPD, COVID-19, CT, EWS, GGO, HU, ICU, LUL, ML, NEWS2, OR, ROC, RT-PCR, RUL, SARS-CoV-2, SD
Plan
Vol 102 - N° 2
P. 77-84 - février 2021 Retour au numéroBienvenue sur EM-consulte, la référence des professionnels de santé.
