CT imaging features of patients with different clinical types of coronavirus disease 2019 (COVID-19) / 浙江大学学报·医学版
Journal of Zhejiang University. Medical sciences
;
(6): 198-202, 2020.
Article
Dans Chinois
| WPRIM
| ID: wpr-828568
ABSTRACT
OBJECTIVE@#To analyze the CT findings of patients with different clinical types of coronavirus disease 2019 (COVID-19).@*METHODS@#A total of 67 patients diagnosed as COVID-19 by nucleic acid testing were included and divided into 4 groups according to the clinical staging based on . The CT imaging characteristics were analyzed among patients with different clinical types.@*RESULTS@#Among 67 patients, 3 (4.5%) were mild cases, 35 (52.2%) were ordinary cases, 22 (32.8%) were severe cases, and 7 (10.4%) were critically ill. There were no abnormal CT findings in mild cases. In 35 ordinary cases, there were single lesions in 3 cases (8.6%) and multiple lesions in 33 cases (91.4%), while in severe case 1 case had single lesion (4.5%) and 21 had multiple lesions (95.5%). CT images of ordinary patients were mainly manifested as solid plaque shadow and halo sign (18/35, 51.4%); while fibrous strip shadow with ground glass shadow was more frequent in severe cases (7/22, 31.8%). Consolidation shadow as the main lesion was observed in 7 cases, and all of them were severe or critical ill patients.@*CONCLUSIONS@#CT images in patients with different clinical types of COVID-19 have characteristic manifestations, and solid shadow may predict severe and critical illness.
Texte intégral:
Disponible
Indice:
WPRIM (Pacifique occidental)
Sujet Principal:
Anatomopathologie
/
Pneumopathie virale
/
Indice de gravité de la maladie
/
Imagerie diagnostique
/
Tomodensitométrie
/
Infections à coronavirus
/
Techniques de laboratoire clinique
/
Diagnostic
/
Betacoronavirus
/
Poumon
Type d'étude:
Etude diagnostique
/
Étude pronostique
Limites du sujet:
Humains
langue:
Chinois
Texte intégral:
Journal of Zhejiang University. Medical sciences
Année:
2020
Type:
Article
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