Cargando…

Automated detection and quantification of COVID-19 pneumonia: CT imaging analysis by a deep learning-based software

BACKGROUND: The novel coronavirus disease 2019 (COVID-19) is an emerging worldwide threat to public health. While chest computed tomography (CT) plays an indispensable role in its diagnosis, the quantification and localization of lesions cannot be accurately assessed manually. We employed deep learn...

Descripción completa

Detalles Bibliográficos
Autores principales: Zhang, Hai-tao, Zhang, Jin-song, Zhang, Hai-hua, Nan, Yan-dong, Zhao, Ying, Fu, En-qing, Xie, Yong-hong, Liu, Wei, Li, Wang-ping, Zhang, Hong-jun, Jiang, Hua, Li, Chun-mei, Li, Yan-yan, Ma, Rui-na, Dang, Shao-kang, Gao, Bo-bo, Zhang, Xi-jing, Zhang, Tao
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Berlin Heidelberg 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7358997/
https://www.ncbi.nlm.nih.gov/pubmed/32666395
http://dx.doi.org/10.1007/s00259-020-04953-1
_version_ 1783558955218239488
author Zhang, Hai-tao
Zhang, Jin-song
Zhang, Hai-hua
Nan, Yan-dong
Zhao, Ying
Fu, En-qing
Xie, Yong-hong
Liu, Wei
Li, Wang-ping
Zhang, Hong-jun
Jiang, Hua
Li, Chun-mei
Li, Yan-yan
Ma, Rui-na
Dang, Shao-kang
Gao, Bo-bo
Zhang, Xi-jing
Zhang, Tao
author_facet Zhang, Hai-tao
Zhang, Jin-song
Zhang, Hai-hua
Nan, Yan-dong
Zhao, Ying
Fu, En-qing
Xie, Yong-hong
Liu, Wei
Li, Wang-ping
Zhang, Hong-jun
Jiang, Hua
Li, Chun-mei
Li, Yan-yan
Ma, Rui-na
Dang, Shao-kang
Gao, Bo-bo
Zhang, Xi-jing
Zhang, Tao
author_sort Zhang, Hai-tao
collection PubMed
description BACKGROUND: The novel coronavirus disease 2019 (COVID-19) is an emerging worldwide threat to public health. While chest computed tomography (CT) plays an indispensable role in its diagnosis, the quantification and localization of lesions cannot be accurately assessed manually. We employed deep learning-based software to aid in detection, localization and quantification of COVID-19 pneumonia. METHODS: A total of 2460 RT-PCR tested SARS-CoV-2-positive patients (1250 men and 1210 women; mean age, 57.7 ± 14.0 years (age range, 11–93 years) were retrospectively identified from Huoshenshan Hospital in Wuhan from February 11 to March 16, 2020. Basic clinical characteristics were reviewed. The uAI Intelligent Assistant Analysis System was used to assess the CT scans. RESULTS: CT scans of 2215 patients (90%) showed multiple lesions of which 36 (1%) and 50 patients (2%) had left and right lung infections, respectively (> 50% of each affected lung’s volume), while 27 (1%) had total lung infection (> 50% of the total volume of both lungs). Overall, 298 (12%), 778 (32%) and 1300 (53%) patients exhibited pure ground glass opacities (GGOs), GGOs with sub-solid lesions and GGOs with both sub-solid and solid lesions, respectively. Moreover, 2305 (94%) and 71 (3%) patients presented primarily with GGOs and sub-solid lesions, respectively. Elderly patients (≥ 60 years) were more likely to exhibit sub-solid lesions. The generalized linear mixed model showed that the dorsal segment of the right lower lobe was the favoured site of COVID-19 pneumonia. CONCLUSION: Chest CT combined with analysis by the uAI Intelligent Assistant Analysis System can accurately evaluate pneumonia in COVID-19 patients.
format Online
Article
Text
id pubmed-7358997
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher Springer Berlin Heidelberg
record_format MEDLINE/PubMed
spelling pubmed-73589972020-07-14 Automated detection and quantification of COVID-19 pneumonia: CT imaging analysis by a deep learning-based software Zhang, Hai-tao Zhang, Jin-song Zhang, Hai-hua Nan, Yan-dong Zhao, Ying Fu, En-qing Xie, Yong-hong Liu, Wei Li, Wang-ping Zhang, Hong-jun Jiang, Hua Li, Chun-mei Li, Yan-yan Ma, Rui-na Dang, Shao-kang Gao, Bo-bo Zhang, Xi-jing Zhang, Tao Eur J Nucl Med Mol Imaging Original Article BACKGROUND: The novel coronavirus disease 2019 (COVID-19) is an emerging worldwide threat to public health. While chest computed tomography (CT) plays an indispensable role in its diagnosis, the quantification and localization of lesions cannot be accurately assessed manually. We employed deep learning-based software to aid in detection, localization and quantification of COVID-19 pneumonia. METHODS: A total of 2460 RT-PCR tested SARS-CoV-2-positive patients (1250 men and 1210 women; mean age, 57.7 ± 14.0 years (age range, 11–93 years) were retrospectively identified from Huoshenshan Hospital in Wuhan from February 11 to March 16, 2020. Basic clinical characteristics were reviewed. The uAI Intelligent Assistant Analysis System was used to assess the CT scans. RESULTS: CT scans of 2215 patients (90%) showed multiple lesions of which 36 (1%) and 50 patients (2%) had left and right lung infections, respectively (> 50% of each affected lung’s volume), while 27 (1%) had total lung infection (> 50% of the total volume of both lungs). Overall, 298 (12%), 778 (32%) and 1300 (53%) patients exhibited pure ground glass opacities (GGOs), GGOs with sub-solid lesions and GGOs with both sub-solid and solid lesions, respectively. Moreover, 2305 (94%) and 71 (3%) patients presented primarily with GGOs and sub-solid lesions, respectively. Elderly patients (≥ 60 years) were more likely to exhibit sub-solid lesions. The generalized linear mixed model showed that the dorsal segment of the right lower lobe was the favoured site of COVID-19 pneumonia. CONCLUSION: Chest CT combined with analysis by the uAI Intelligent Assistant Analysis System can accurately evaluate pneumonia in COVID-19 patients. Springer Berlin Heidelberg 2020-07-14 2020 /pmc/articles/PMC7358997/ /pubmed/32666395 http://dx.doi.org/10.1007/s00259-020-04953-1 Text en © Springer-Verlag GmbH Germany, part of Springer Nature 2020 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Original Article
Zhang, Hai-tao
Zhang, Jin-song
Zhang, Hai-hua
Nan, Yan-dong
Zhao, Ying
Fu, En-qing
Xie, Yong-hong
Liu, Wei
Li, Wang-ping
Zhang, Hong-jun
Jiang, Hua
Li, Chun-mei
Li, Yan-yan
Ma, Rui-na
Dang, Shao-kang
Gao, Bo-bo
Zhang, Xi-jing
Zhang, Tao
Automated detection and quantification of COVID-19 pneumonia: CT imaging analysis by a deep learning-based software
title Automated detection and quantification of COVID-19 pneumonia: CT imaging analysis by a deep learning-based software
title_full Automated detection and quantification of COVID-19 pneumonia: CT imaging analysis by a deep learning-based software
title_fullStr Automated detection and quantification of COVID-19 pneumonia: CT imaging analysis by a deep learning-based software
title_full_unstemmed Automated detection and quantification of COVID-19 pneumonia: CT imaging analysis by a deep learning-based software
title_short Automated detection and quantification of COVID-19 pneumonia: CT imaging analysis by a deep learning-based software
title_sort automated detection and quantification of covid-19 pneumonia: ct imaging analysis by a deep learning-based software
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7358997/
https://www.ncbi.nlm.nih.gov/pubmed/32666395
http://dx.doi.org/10.1007/s00259-020-04953-1
work_keys_str_mv AT zhanghaitao automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT zhangjinsong automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT zhanghaihua automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT nanyandong automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT zhaoying automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT fuenqing automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT xieyonghong automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT liuwei automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT liwangping automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT zhanghongjun automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT jianghua automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT lichunmei automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT liyanyan automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT maruina automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT dangshaokang automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT gaobobo automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT zhangxijing automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware
AT zhangtao automateddetectionandquantificationofcovid19pneumoniactimaginganalysisbyadeeplearningbasedsoftware