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Post-COVID-19 interstitial lung disease: Insights from a machine learning radiographic model

INTRODUCTION: Post-acute sequelae of COVID-19 seem to be an emerging global crisis. Machine learning radiographic models have great potential for meticulous evaluation of post-COVID-19 interstitial lung disease (ILD). METHODS: In this multicenter, retrospective study, we included consecutive patient...

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Autores principales: Karampitsakos, Theodoros, Sotiropoulou, Vasilina, Katsaras, Matthaios, Tsiri, Panagiota, Georgakopoulou, Vasiliki E., Papanikolaou, Ilias C., Bibaki, Eleni, Tomos, Ioannis, Lambiri, Irini, Papaioannou, Ourania, Zarkadi, Eirini, Antonakis, Emmanouil, Pandi, Aggeliki, Malakounidou, Elli, Sampsonas, Fotios, Makrodimitri, Sotiria, Chrysikos, Serafeim, Hillas, Georgios, Dimakou, Katerina, Tzanakis, Nikolaos, Sipsas, Nikolaos V., Antoniou, Katerina, Tzouvelekis, Argyris
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9886681/
https://www.ncbi.nlm.nih.gov/pubmed/36733935
http://dx.doi.org/10.3389/fmed.2022.1083264
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author Karampitsakos, Theodoros
Sotiropoulou, Vasilina
Katsaras, Matthaios
Tsiri, Panagiota
Georgakopoulou, Vasiliki E.
Papanikolaou, Ilias C.
Bibaki, Eleni
Tomos, Ioannis
Lambiri, Irini
Papaioannou, Ourania
Zarkadi, Eirini
Antonakis, Emmanouil
Pandi, Aggeliki
Malakounidou, Elli
Sampsonas, Fotios
Makrodimitri, Sotiria
Chrysikos, Serafeim
Hillas, Georgios
Dimakou, Katerina
Tzanakis, Nikolaos
Sipsas, Nikolaos V.
Antoniou, Katerina
Tzouvelekis, Argyris
author_facet Karampitsakos, Theodoros
Sotiropoulou, Vasilina
Katsaras, Matthaios
Tsiri, Panagiota
Georgakopoulou, Vasiliki E.
Papanikolaou, Ilias C.
Bibaki, Eleni
Tomos, Ioannis
Lambiri, Irini
Papaioannou, Ourania
Zarkadi, Eirini
Antonakis, Emmanouil
Pandi, Aggeliki
Malakounidou, Elli
Sampsonas, Fotios
Makrodimitri, Sotiria
Chrysikos, Serafeim
Hillas, Georgios
Dimakou, Katerina
Tzanakis, Nikolaos
Sipsas, Nikolaos V.
Antoniou, Katerina
Tzouvelekis, Argyris
author_sort Karampitsakos, Theodoros
collection PubMed
description INTRODUCTION: Post-acute sequelae of COVID-19 seem to be an emerging global crisis. Machine learning radiographic models have great potential for meticulous evaluation of post-COVID-19 interstitial lung disease (ILD). METHODS: In this multicenter, retrospective study, we included consecutive patients that had been evaluated 3 months following severe acute respiratory syndrome coronavirus 2 infection between 01/02/2021 and 12/5/2022. High-resolution computed tomography was evaluated through Imbio Lung Texture Analysis 2.1. RESULTS: Two hundred thirty-two (n = 232) patients were analyzed. FVC% predicted was ≥80, between 60 and 79 and <60 in 74.2% (n = 172), 21.1% (n = 49), and 4.7% (n = 11) of the cohort, respectively. DLCO% predicted was ≥80, between 60 and 79 and <60 in 69.4% (n = 161), 15.5% (n = 36), and 15.1% (n = 35), respectively. Extent of ground glass opacities was ≥30% in 4.3% of patients (n = 10), between 5 and 29% in 48.7% of patients (n = 113) and <5% in 47.0% of patients (n = 109). The extent of reticulation was ≥30%, 5–29% and <5% in 1.3% (n = 3), 24.1% (n = 56), and 74.6% (n = 173) of the cohort, respectively. Patients (n = 13, 5.6%) with fibrotic lung disease and persistent functional impairment at the 6-month follow-up received antifibrotics and presented with an absolute change of +10.3 (p = 0.01) and +14.6 (p = 0.01) in FVC% predicted at 3 and 6 months after the initiation of antifibrotic. CONCLUSION: Post-COVID-19-ILD represents an emerging entity. A substantial minority of patients presents with fibrotic lung disease and might experience benefit from antifibrotic initiation at the time point that fibrotic-like changes are “immature.” Machine learning radiographic models could be of major significance for accurate radiographic evaluation and subsequently for the guidance of therapeutic approaches.
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spelling pubmed-98866812023-02-01 Post-COVID-19 interstitial lung disease: Insights from a machine learning radiographic model Karampitsakos, Theodoros Sotiropoulou, Vasilina Katsaras, Matthaios Tsiri, Panagiota Georgakopoulou, Vasiliki E. Papanikolaou, Ilias C. Bibaki, Eleni Tomos, Ioannis Lambiri, Irini Papaioannou, Ourania Zarkadi, Eirini Antonakis, Emmanouil Pandi, Aggeliki Malakounidou, Elli Sampsonas, Fotios Makrodimitri, Sotiria Chrysikos, Serafeim Hillas, Georgios Dimakou, Katerina Tzanakis, Nikolaos Sipsas, Nikolaos V. Antoniou, Katerina Tzouvelekis, Argyris Front Med (Lausanne) Medicine INTRODUCTION: Post-acute sequelae of COVID-19 seem to be an emerging global crisis. Machine learning radiographic models have great potential for meticulous evaluation of post-COVID-19 interstitial lung disease (ILD). METHODS: In this multicenter, retrospective study, we included consecutive patients that had been evaluated 3 months following severe acute respiratory syndrome coronavirus 2 infection between 01/02/2021 and 12/5/2022. High-resolution computed tomography was evaluated through Imbio Lung Texture Analysis 2.1. RESULTS: Two hundred thirty-two (n = 232) patients were analyzed. FVC% predicted was ≥80, between 60 and 79 and <60 in 74.2% (n = 172), 21.1% (n = 49), and 4.7% (n = 11) of the cohort, respectively. DLCO% predicted was ≥80, between 60 and 79 and <60 in 69.4% (n = 161), 15.5% (n = 36), and 15.1% (n = 35), respectively. Extent of ground glass opacities was ≥30% in 4.3% of patients (n = 10), between 5 and 29% in 48.7% of patients (n = 113) and <5% in 47.0% of patients (n = 109). The extent of reticulation was ≥30%, 5–29% and <5% in 1.3% (n = 3), 24.1% (n = 56), and 74.6% (n = 173) of the cohort, respectively. Patients (n = 13, 5.6%) with fibrotic lung disease and persistent functional impairment at the 6-month follow-up received antifibrotics and presented with an absolute change of +10.3 (p = 0.01) and +14.6 (p = 0.01) in FVC% predicted at 3 and 6 months after the initiation of antifibrotic. CONCLUSION: Post-COVID-19-ILD represents an emerging entity. A substantial minority of patients presents with fibrotic lung disease and might experience benefit from antifibrotic initiation at the time point that fibrotic-like changes are “immature.” Machine learning radiographic models could be of major significance for accurate radiographic evaluation and subsequently for the guidance of therapeutic approaches. Frontiers Media S.A. 2023-01-17 /pmc/articles/PMC9886681/ /pubmed/36733935 http://dx.doi.org/10.3389/fmed.2022.1083264 Text en Copyright © 2023 Karampitsakos, Sotiropoulou, Katsaras, Tsiri, Georgakopoulou, Papanikolaou, Bibaki, Tomos, Lambiri, Papaioannou, Zarkadi, Antonakis, Pandi, Malakounidou, Sampsonas, Makrodimitri, Chrysikos, Hillas, Dimakou, Tzanakis, Sipsas, Antoniou and Tzouvelekis. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Medicine
Karampitsakos, Theodoros
Sotiropoulou, Vasilina
Katsaras, Matthaios
Tsiri, Panagiota
Georgakopoulou, Vasiliki E.
Papanikolaou, Ilias C.
Bibaki, Eleni
Tomos, Ioannis
Lambiri, Irini
Papaioannou, Ourania
Zarkadi, Eirini
Antonakis, Emmanouil
Pandi, Aggeliki
Malakounidou, Elli
Sampsonas, Fotios
Makrodimitri, Sotiria
Chrysikos, Serafeim
Hillas, Georgios
Dimakou, Katerina
Tzanakis, Nikolaos
Sipsas, Nikolaos V.
Antoniou, Katerina
Tzouvelekis, Argyris
Post-COVID-19 interstitial lung disease: Insights from a machine learning radiographic model
title Post-COVID-19 interstitial lung disease: Insights from a machine learning radiographic model
title_full Post-COVID-19 interstitial lung disease: Insights from a machine learning radiographic model
title_fullStr Post-COVID-19 interstitial lung disease: Insights from a machine learning radiographic model
title_full_unstemmed Post-COVID-19 interstitial lung disease: Insights from a machine learning radiographic model
title_short Post-COVID-19 interstitial lung disease: Insights from a machine learning radiographic model
title_sort post-covid-19 interstitial lung disease: insights from a machine learning radiographic model
topic Medicine
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9886681/
https://www.ncbi.nlm.nih.gov/pubmed/36733935
http://dx.doi.org/10.3389/fmed.2022.1083264
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