Determination of disease severity in COVID-19 patients using deep learning in chest X-ray images.
Adult
Age Factors
Aged
COVID-19
/ diagnosis
Comorbidity
Deep Learning
/ statistics & numerical data
Feasibility Studies
Female
Humans
Italy
/ epidemiology
Male
Middle Aged
Radiography, Thoracic
/ classification
Radiologists
Retrospective Studies
SARS-CoV-2
/ genetics
Severity of Illness Index
Thorax
/ diagnostic imaging
Journal
Diagnostic and interventional radiology (Ankara, Turkey)
ISSN: 1305-3612
Titre abrégé: Diagn Interv Radiol
Pays: Turkey
ID NLM: 101241152
Informations de publication
Date de publication:
Jan 2021
Jan 2021
Historique:
pubmed:
21
8
2020
medline:
2
2
2021
entrez:
21
8
2020
Statut:
ppublish
Résumé
Chest X-ray plays a key role in diagnosis and management of COVID-19 patients and imaging features associated with clinical elements may assist with the development or validation of automated image analysis tools. We aimed to identify associations between clinical and radiographic features as well as to assess the feasibility of deep learning applied to chest X-rays in the setting of an acute COVID-19 outbreak. A retrospective study of X-rays, clinical, and laboratory data was performed from 48 SARS-CoV-2 RT-PCR positive patients (age 60±17 years, 15 women) between February 22 and March 6, 2020 from a tertiary care hospital in Milan, Italy. Sixty-five chest X-rays were reviewed by two radiologists for alveolar and interstitial opacities and classified by severity on a scale from 0 to 3. Clinical factors (age, symptoms, comorbidities) were investigated for association with opacity severity and also with placement of central line or endotracheal tube. Deep learning models were then trained for two tasks: lung segmentation and opacity detection. Imaging characteristics were compared to clinical datapoints using the unpaired student's t-test or Mann-Whitney U test. Cohen's kappa analysis was used to evaluate the concordance of deep learning to conventional radiologist interpretation. Fifty-six percent of patients presented with alveolar opacities, 73% had interstitial opacities, and 23% had normal X-rays. The presence of alveolar or interstitial opacities was statistically correlated with age (P = 0.008) and comorbidities (P = 0.005). The extent of alveolar or interstitial opacities on baseline X-ray was significantly associated with the presence of endotracheal tube (P = 0.0008 and P = 0.049) or central line (P = 0.003 and P = 0.007). In comparison to human interpretation, the deep learning model achieved a kappa concordance of 0.51 for alveolar opacities and 0.71 for interstitial opacities. Chest X-ray analysis in an acute COVID-19 outbreak showed that the severity of opacities was associated with advanced age, comorbidities, as well as acuity of care. Artificial intelligence tools based upon deep learning of COVID-19 chest X-rays are feasible in the acute outbreak setting.
Identifiants
pubmed: 32815519
doi: 10.5152/dir.2020.20205
pmc: PMC7837735
doi:
Types de publication
Journal Article
Langues
eng
Sous-ensembles de citation
IM
Pagination
20-27Subventions
Organisme : NCI NIH HHS
ID : 75N91019D00024
Pays : United States
Organisme : Intramural NIH HHS
ID : ZID BC011242
Pays : United States
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