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Rapid quantification of COVID-19 pneumonia burden from computed tomography with convolutional LSTM networks

Quantitative lung measures derived from computed tomography (CT) have been demonstrated to improve prognostication in Coronavirus disease 2019 (COVID-19) patients, but are not part of the clinical routine since required manual segmentation of lung lesions is prohibitively time-consuming. We propose...

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Autores principales: Grodecki, Kajetan, Killekar, Aditya, Lin, Andrew, Cadet, Sebastien, McElhinney, Priscilla, Razipour, Aryabod, Chan, Cato, Pressman, Barry D., Julien, Peter, Simon, Judit, Maurovich-Horvat, Pal, Gaibazzi, Nicola, Thakur, Udit, Mancini, Elisabetta, Agalbato, Cecilia, Munechika, Jiro, Matsumoto, Hidenari, Menè, Roberto, Parati, Gianfranco, Cernigliaro, Franco, Nerlekar, Nitesh, Torlasco, Camilla, Pontone, Gianluca, Dey, Damini, Slomka, Piotr J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cornell University 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8020980/
https://www.ncbi.nlm.nih.gov/pubmed/33821209
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author Grodecki, Kajetan
Killekar, Aditya
Lin, Andrew
Cadet, Sebastien
McElhinney, Priscilla
Razipour, Aryabod
Chan, Cato
Pressman, Barry D.
Julien, Peter
Simon, Judit
Maurovich-Horvat, Pal
Gaibazzi, Nicola
Thakur, Udit
Mancini, Elisabetta
Agalbato, Cecilia
Munechika, Jiro
Matsumoto, Hidenari
Menè, Roberto
Parati, Gianfranco
Cernigliaro, Franco
Nerlekar, Nitesh
Torlasco, Camilla
Pontone, Gianluca
Dey, Damini
Slomka, Piotr J.
author_facet Grodecki, Kajetan
Killekar, Aditya
Lin, Andrew
Cadet, Sebastien
McElhinney, Priscilla
Razipour, Aryabod
Chan, Cato
Pressman, Barry D.
Julien, Peter
Simon, Judit
Maurovich-Horvat, Pal
Gaibazzi, Nicola
Thakur, Udit
Mancini, Elisabetta
Agalbato, Cecilia
Munechika, Jiro
Matsumoto, Hidenari
Menè, Roberto
Parati, Gianfranco
Cernigliaro, Franco
Nerlekar, Nitesh
Torlasco, Camilla
Pontone, Gianluca
Dey, Damini
Slomka, Piotr J.
author_sort Grodecki, Kajetan
collection PubMed
description Quantitative lung measures derived from computed tomography (CT) have been demonstrated to improve prognostication in Coronavirus disease 2019 (COVID-19) patients, but are not part of the clinical routine since required manual segmentation of lung lesions is prohibitively time-consuming. We propose a new fully automated deep learning framework for quantification and differentiation between lung lesions in COVID-19 pneumonia from both contrast and non-contrast CT images using convolutional Long Short-Term Memory (LSTM) networks. Utilizing the expert annotations, model training was performed using 5-fold cross-validation to segment ground-glass opacity and high opacity (including consolidation and pleural effusion). The performance of the method was evaluated on CT data sets from 197 patients with positive reverse transcription polymerase chain reaction test result for SARS-CoV-2. Strong agreement between expert manual and automatic segmentation was obtained for lung lesions with a Dice score coefficient of 0.876 ± 0.005; excellent correlations of 0.978 and 0.981 for ground-glass opacity and high opacity volumes. In the external validation set of 67 patients, there was dice score coefficient of 0.767 ± 0.009 as well as excellent correlations of 0.989 and 0.996 for ground-glass opacity and high opacity volumes. Computations for a CT scan comprising 120 slices were performed under 2 seconds on a personal computer equipped with NVIDIA Titan RTX graphics processing unit. Therefore, our deep learning-based method allows rapid fully-automated quantitative measurement of pneumonia burden from CT and may generate the big data with an accuracy similar to the expert readers.
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spelling pubmed-80209802021-04-06 Rapid quantification of COVID-19 pneumonia burden from computed tomography with convolutional LSTM networks Grodecki, Kajetan Killekar, Aditya Lin, Andrew Cadet, Sebastien McElhinney, Priscilla Razipour, Aryabod Chan, Cato Pressman, Barry D. Julien, Peter Simon, Judit Maurovich-Horvat, Pal Gaibazzi, Nicola Thakur, Udit Mancini, Elisabetta Agalbato, Cecilia Munechika, Jiro Matsumoto, Hidenari Menè, Roberto Parati, Gianfranco Cernigliaro, Franco Nerlekar, Nitesh Torlasco, Camilla Pontone, Gianluca Dey, Damini Slomka, Piotr J. ArXiv Article Quantitative lung measures derived from computed tomography (CT) have been demonstrated to improve prognostication in Coronavirus disease 2019 (COVID-19) patients, but are not part of the clinical routine since required manual segmentation of lung lesions is prohibitively time-consuming. We propose a new fully automated deep learning framework for quantification and differentiation between lung lesions in COVID-19 pneumonia from both contrast and non-contrast CT images using convolutional Long Short-Term Memory (LSTM) networks. Utilizing the expert annotations, model training was performed using 5-fold cross-validation to segment ground-glass opacity and high opacity (including consolidation and pleural effusion). The performance of the method was evaluated on CT data sets from 197 patients with positive reverse transcription polymerase chain reaction test result for SARS-CoV-2. Strong agreement between expert manual and automatic segmentation was obtained for lung lesions with a Dice score coefficient of 0.876 ± 0.005; excellent correlations of 0.978 and 0.981 for ground-glass opacity and high opacity volumes. In the external validation set of 67 patients, there was dice score coefficient of 0.767 ± 0.009 as well as excellent correlations of 0.989 and 0.996 for ground-glass opacity and high opacity volumes. Computations for a CT scan comprising 120 slices were performed under 2 seconds on a personal computer equipped with NVIDIA Titan RTX graphics processing unit. Therefore, our deep learning-based method allows rapid fully-automated quantitative measurement of pneumonia burden from CT and may generate the big data with an accuracy similar to the expert readers. Cornell University 2021-03-31 /pmc/articles/PMC8020980/ /pubmed/33821209 Text en https://creativecommons.org/licenses/by-nc-nd/4.0/This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License (https://creativecommons.org/licenses/by-nc-nd/4.0/) , which allows reusers to copy and distribute the material in any medium or format in unadapted form only, for noncommercial purposes only, and only so long as attribution is given to the creator.
spellingShingle Article
Grodecki, Kajetan
Killekar, Aditya
Lin, Andrew
Cadet, Sebastien
McElhinney, Priscilla
Razipour, Aryabod
Chan, Cato
Pressman, Barry D.
Julien, Peter
Simon, Judit
Maurovich-Horvat, Pal
Gaibazzi, Nicola
Thakur, Udit
Mancini, Elisabetta
Agalbato, Cecilia
Munechika, Jiro
Matsumoto, Hidenari
Menè, Roberto
Parati, Gianfranco
Cernigliaro, Franco
Nerlekar, Nitesh
Torlasco, Camilla
Pontone, Gianluca
Dey, Damini
Slomka, Piotr J.
Rapid quantification of COVID-19 pneumonia burden from computed tomography with convolutional LSTM networks
title Rapid quantification of COVID-19 pneumonia burden from computed tomography with convolutional LSTM networks
title_full Rapid quantification of COVID-19 pneumonia burden from computed tomography with convolutional LSTM networks
title_fullStr Rapid quantification of COVID-19 pneumonia burden from computed tomography with convolutional LSTM networks
title_full_unstemmed Rapid quantification of COVID-19 pneumonia burden from computed tomography with convolutional LSTM networks
title_short Rapid quantification of COVID-19 pneumonia burden from computed tomography with convolutional LSTM networks
title_sort rapid quantification of covid-19 pneumonia burden from computed tomography with convolutional lstm networks
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8020980/
https://www.ncbi.nlm.nih.gov/pubmed/33821209
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