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Quantitative evaluation of CT scan images to determinate the prognosis of COVID-19 patient using deep learning

The purpose of this research is to evaluate the accuracy of AI-assisted quantification in comparison to conventional CT parameters reviewed by a radiologist in predicting the severity, progression, and clinical outcome of disease. The current study is a cross-sectional study that was conducted on pa...

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Autores principales: Joni, Saeid Sadeghi, Gerami, Reza, Pashaei, Fakhereh, Ebrahiminik, Hojat, Karimi, Mahmood
Formato: Online Artículo Texto
Lenguaje:English
Publicado: PAGEPress Publications, Pavia, Italy 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10583151/
https://www.ncbi.nlm.nih.gov/pubmed/37491956
http://dx.doi.org/10.4081/ejtm.2023.11571
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author Joni, Saeid Sadeghi
Gerami, Reza
Pashaei, Fakhereh
Ebrahiminik, Hojat
Karimi, Mahmood
author_facet Joni, Saeid Sadeghi
Gerami, Reza
Pashaei, Fakhereh
Ebrahiminik, Hojat
Karimi, Mahmood
author_sort Joni, Saeid Sadeghi
collection PubMed
description The purpose of this research is to evaluate the accuracy of AI-assisted quantification in comparison to conventional CT parameters reviewed by a radiologist in predicting the severity, progression, and clinical outcome of disease. The current study is a cross-sectional study that was conducted on patients with the diagnosis of COVID-19 and underwent a pulmonary CT scan between August 23(th), 2021 to December 21(th), 2022. The initial CT scan on admission was used for imaging analysis. The presence of ground glass opacity (GGO), and consolidation were visually evaluated. CT severity score was calculated according to a semi-quantitative method. In addition, AI based quantification of GGO and consolidation volume were also performed. 291 patients (mean age: 64.7 ± 7; 129 males) were included. GGO + consolidation was more frequently revealed in progress-to-severe group whereas pure GGO was more likely to be found in non-severe group. Compared to non-severe group, patients in progress-to-severe group had larger GGO volume percentage (40.6%± 11.9%versus 21.7%± 8.8%, p ˂0.001) as well as consolidation volume percentage (4.8% ± 2% versus 1.9% ± 1%, p < 0.001). Among imaging parameters, consolidation volume percentage and the largest area under curve (AUC) in discriminating non-severe from progress-to-severe group (AUC = 0.91, p < 0.001). According to multivariate regression, consolidation volume was the strongest predictor for disease progression. In conclusion, the consolidation volume measured on the initial chest CT was the most accurate predictor of disease progression, and a larger consolidation volume was associated with a poor clinical outcome. In patients with COVID-19, AI-assisted lesion quantification was useful for risk stratification and prognosis evaluation.
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spelling pubmed-105831512023-10-19 Quantitative evaluation of CT scan images to determinate the prognosis of COVID-19 patient using deep learning Joni, Saeid Sadeghi Gerami, Reza Pashaei, Fakhereh Ebrahiminik, Hojat Karimi, Mahmood Eur J Transl Myol Article The purpose of this research is to evaluate the accuracy of AI-assisted quantification in comparison to conventional CT parameters reviewed by a radiologist in predicting the severity, progression, and clinical outcome of disease. The current study is a cross-sectional study that was conducted on patients with the diagnosis of COVID-19 and underwent a pulmonary CT scan between August 23(th), 2021 to December 21(th), 2022. The initial CT scan on admission was used for imaging analysis. The presence of ground glass opacity (GGO), and consolidation were visually evaluated. CT severity score was calculated according to a semi-quantitative method. In addition, AI based quantification of GGO and consolidation volume were also performed. 291 patients (mean age: 64.7 ± 7; 129 males) were included. GGO + consolidation was more frequently revealed in progress-to-severe group whereas pure GGO was more likely to be found in non-severe group. Compared to non-severe group, patients in progress-to-severe group had larger GGO volume percentage (40.6%± 11.9%versus 21.7%± 8.8%, p ˂0.001) as well as consolidation volume percentage (4.8% ± 2% versus 1.9% ± 1%, p < 0.001). Among imaging parameters, consolidation volume percentage and the largest area under curve (AUC) in discriminating non-severe from progress-to-severe group (AUC = 0.91, p < 0.001). According to multivariate regression, consolidation volume was the strongest predictor for disease progression. In conclusion, the consolidation volume measured on the initial chest CT was the most accurate predictor of disease progression, and a larger consolidation volume was associated with a poor clinical outcome. In patients with COVID-19, AI-assisted lesion quantification was useful for risk stratification and prognosis evaluation. PAGEPress Publications, Pavia, Italy 2023-07-25 /pmc/articles/PMC10583151/ /pubmed/37491956 http://dx.doi.org/10.4081/ejtm.2023.11571 Text en Copyright © 2023, the Author(s) https://creativecommons.org/licenses/by-nc/4.0/This work is licensed under a Creative Commons Attribution NonCommercial 4.0 License (CC BY-NC 4.0).
spellingShingle Article
Joni, Saeid Sadeghi
Gerami, Reza
Pashaei, Fakhereh
Ebrahiminik, Hojat
Karimi, Mahmood
Quantitative evaluation of CT scan images to determinate the prognosis of COVID-19 patient using deep learning
title Quantitative evaluation of CT scan images to determinate the prognosis of COVID-19 patient using deep learning
title_full Quantitative evaluation of CT scan images to determinate the prognosis of COVID-19 patient using deep learning
title_fullStr Quantitative evaluation of CT scan images to determinate the prognosis of COVID-19 patient using deep learning
title_full_unstemmed Quantitative evaluation of CT scan images to determinate the prognosis of COVID-19 patient using deep learning
title_short Quantitative evaluation of CT scan images to determinate the prognosis of COVID-19 patient using deep learning
title_sort quantitative evaluation of ct scan images to determinate the prognosis of covid-19 patient using deep learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10583151/
https://www.ncbi.nlm.nih.gov/pubmed/37491956
http://dx.doi.org/10.4081/ejtm.2023.11571
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