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COVID-19 CT Scan Lung Segmentation: How We Do It

The National Health Systems have been severely stressed out by the COVID-19 pandemic because 14% of patients require hospitalization and oxygen support, and 5% require admission to an Intensive Care Unit (ICU). Relationship between COVID-19 prognosis and the extent of alterations on chest CT obtaine...

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Autores principales: Negroni, Davide, Zagaria, Domenico, Paladini, Andrea, Falaschi, Zeno, Arcoraci, Anna, Barini, Michela, Carriero, Alessandro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8796745/
https://www.ncbi.nlm.nih.gov/pubmed/35091874
http://dx.doi.org/10.1007/s10278-022-00593-z
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author Negroni, Davide
Zagaria, Domenico
Paladini, Andrea
Falaschi, Zeno
Arcoraci, Anna
Barini, Michela
Carriero, Alessandro
author_facet Negroni, Davide
Zagaria, Domenico
Paladini, Andrea
Falaschi, Zeno
Arcoraci, Anna
Barini, Michela
Carriero, Alessandro
author_sort Negroni, Davide
collection PubMed
description The National Health Systems have been severely stressed out by the COVID-19 pandemic because 14% of patients require hospitalization and oxygen support, and 5% require admission to an Intensive Care Unit (ICU). Relationship between COVID-19 prognosis and the extent of alterations on chest CT obtained by both visual and software-based quantification that expresses objective evaluations of the percentage of ventilated lung parenchyma compared to the affected one has been proven. While commercial applications for automatic medical image computing and visualization are expensive and limited in their spread, the open-source systems are characterized by not enough standardization and time-consuming troubles. We analyzed chest CT exams on 246 patients suspected of COVID-19 performed in the Emergency Department CT room. The lung parenchyma segmentation was obtained by a threshold-based method using the open-source 3D Slicer software and software tools called “Segment Editor” and “Segment Quantification.” For the three main characteristics analyzed on lungs affected by COVID-19 pneumonia, a specifical densitometry value range was defined: from − 950 to − 700 HU for well-aerated parenchyma; from − 700 to − 250 HU for interstitial lung disease; from − 250 to 250 HU for parenchymal consolidation. For the well-aerated parenchyma and the interstitial alterations, the procedure was semi-automatic with low time consumption, whereas consolidations’ analysis needed manual interventions by the operator. After the chest CT, 13% of the sample was admitted to intensive care, while 34% of them to the sub-intensive care. In patients moved to intensive care, the parenchyma analysis reported a higher crazy paving presentation. The quantitative analysis of the alterations affecting the lung parenchyma of patients with COVID-19 pneumonia can be performed by threshold method segmentation on 3D Slicer. The segmentation could have an important role in the quantification in different COVID-19 pneumonia presentations, allowing to help the clinician in the correct management of patients.
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spelling pubmed-87967452022-01-31 COVID-19 CT Scan Lung Segmentation: How We Do It Negroni, Davide Zagaria, Domenico Paladini, Andrea Falaschi, Zeno Arcoraci, Anna Barini, Michela Carriero, Alessandro J Digit Imaging Article The National Health Systems have been severely stressed out by the COVID-19 pandemic because 14% of patients require hospitalization and oxygen support, and 5% require admission to an Intensive Care Unit (ICU). Relationship between COVID-19 prognosis and the extent of alterations on chest CT obtained by both visual and software-based quantification that expresses objective evaluations of the percentage of ventilated lung parenchyma compared to the affected one has been proven. While commercial applications for automatic medical image computing and visualization are expensive and limited in their spread, the open-source systems are characterized by not enough standardization and time-consuming troubles. We analyzed chest CT exams on 246 patients suspected of COVID-19 performed in the Emergency Department CT room. The lung parenchyma segmentation was obtained by a threshold-based method using the open-source 3D Slicer software and software tools called “Segment Editor” and “Segment Quantification.” For the three main characteristics analyzed on lungs affected by COVID-19 pneumonia, a specifical densitometry value range was defined: from − 950 to − 700 HU for well-aerated parenchyma; from − 700 to − 250 HU for interstitial lung disease; from − 250 to 250 HU for parenchymal consolidation. For the well-aerated parenchyma and the interstitial alterations, the procedure was semi-automatic with low time consumption, whereas consolidations’ analysis needed manual interventions by the operator. After the chest CT, 13% of the sample was admitted to intensive care, while 34% of them to the sub-intensive care. In patients moved to intensive care, the parenchyma analysis reported a higher crazy paving presentation. The quantitative analysis of the alterations affecting the lung parenchyma of patients with COVID-19 pneumonia can be performed by threshold method segmentation on 3D Slicer. The segmentation could have an important role in the quantification in different COVID-19 pneumonia presentations, allowing to help the clinician in the correct management of patients. Springer International Publishing 2022-01-28 2022-06 /pmc/articles/PMC8796745/ /pubmed/35091874 http://dx.doi.org/10.1007/s10278-022-00593-z Text en © The Author(s) under exclusive licence to Society for Imaging Informatics in Medicine 2022
spellingShingle Article
Negroni, Davide
Zagaria, Domenico
Paladini, Andrea
Falaschi, Zeno
Arcoraci, Anna
Barini, Michela
Carriero, Alessandro
COVID-19 CT Scan Lung Segmentation: How We Do It
title COVID-19 CT Scan Lung Segmentation: How We Do It
title_full COVID-19 CT Scan Lung Segmentation: How We Do It
title_fullStr COVID-19 CT Scan Lung Segmentation: How We Do It
title_full_unstemmed COVID-19 CT Scan Lung Segmentation: How We Do It
title_short COVID-19 CT Scan Lung Segmentation: How We Do It
title_sort covid-19 ct scan lung segmentation: how we do it
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8796745/
https://www.ncbi.nlm.nih.gov/pubmed/35091874
http://dx.doi.org/10.1007/s10278-022-00593-z
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