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Deep-Learning Assessed Muscular Hypodensity Independently Predicts Mortality in DLBCL Patients Younger Than 60 Years

SIMPLE SUMMARY: Cachexia is a major cause of mortality in cancer patients and is characterized by a continuous skeletal muscle loss. Muscle depletion assessed by computed tomography (CT) is a predictive marker in solid tumors but has never been assessed in non-Hodgkin’s lymphoma. Despite software im...

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Autores principales: Jullien, Maxime, Tessoulin, Benoit, Ghesquières, Hervé, Oberic, Lucie, Morschhauser, Franck, Tilly, Hervé, Ribrag, Vincent, Lamy, Thierry, Thieblemont, Catherine, Villemagne, Bruno, Gressin, Rémy, Bouabdallah, Kamal, Haioun, Corinne, Damaj, Gandhi, Fornecker, Luc-Matthieu, Schiano De Colella, Jean-Marc, Feugier, Pierre, Hermine, Olivier, Cartron, Guillaume, Bonnet, Christophe, André, Marc, Bailly, Clément, Casasnovas, René-Olivier, Le Gouill, Steven
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8466314/
https://www.ncbi.nlm.nih.gov/pubmed/34572728
http://dx.doi.org/10.3390/cancers13184503
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author Jullien, Maxime
Tessoulin, Benoit
Ghesquières, Hervé
Oberic, Lucie
Morschhauser, Franck
Tilly, Hervé
Ribrag, Vincent
Lamy, Thierry
Thieblemont, Catherine
Villemagne, Bruno
Gressin, Rémy
Bouabdallah, Kamal
Haioun, Corinne
Damaj, Gandhi
Fornecker, Luc-Matthieu
Schiano De Colella, Jean-Marc
Feugier, Pierre
Hermine, Olivier
Cartron, Guillaume
Bonnet, Christophe
André, Marc
Bailly, Clément
Casasnovas, René-Olivier
Le Gouill, Steven
author_facet Jullien, Maxime
Tessoulin, Benoit
Ghesquières, Hervé
Oberic, Lucie
Morschhauser, Franck
Tilly, Hervé
Ribrag, Vincent
Lamy, Thierry
Thieblemont, Catherine
Villemagne, Bruno
Gressin, Rémy
Bouabdallah, Kamal
Haioun, Corinne
Damaj, Gandhi
Fornecker, Luc-Matthieu
Schiano De Colella, Jean-Marc
Feugier, Pierre
Hermine, Olivier
Cartron, Guillaume
Bonnet, Christophe
André, Marc
Bailly, Clément
Casasnovas, René-Olivier
Le Gouill, Steven
author_sort Jullien, Maxime
collection PubMed
description SIMPLE SUMMARY: Cachexia is a major cause of mortality in cancer patients and is characterized by a continuous skeletal muscle loss. Muscle depletion assessed by computed tomography (CT) is a predictive marker in solid tumors but has never been assessed in non-Hodgkin’s lymphoma. Despite software improvements, its measurement remains highly time-consuming and cannot be performed in clinical practice. We report the development of a CT segmentation algorithm based on convolutional neural networks. It automates the extraction of anthropometric data from pretherapeutic CT to assess precise body composition of young diffuse large B cell lymphoma (DLBCL) patients at the time of diagnosis. In this population, muscle hypodensity appears to be an independent risk factor for mortality, and can be estimated at diagnosis with this new tool. ABSTRACT: Background. Muscle depletion (MD) assessed by computed tomography (CT) has been shown to be a predictive marker in solid tumors, but has not been assessed in non-Hodgkin’s lymphomas. Despite software improvements, MD measurement remains highly time-consuming and cannot be used in clinical practice. Methods. This study reports the development of a Deep-Learning automatic segmentation algorithm (DLASA) to measure MD, and investigate its predictive value in a cohort of 656 diffuse large B cell lymphoma (DLBCL) patients included in the GAINED phase III prospective trial (NCT01659099). Results. After training on a series of 190 patients, the DLASA achieved a Dice coefficient of 0.97 ± 0.03. In the cohort, the median skeletal muscle index was 50.2 cm(2)/m(2) and median muscle attenuation (MA) was 36.1 Hounsfield units (HU). No impact of sarcopenia was found on either progression free survival (PFS) or overall survival (OS). Muscular hypodensity, defined as MA below the tenth percentile according to sex, was associated with a lower OS and PFS, respectively (HR = 2.80 (95% CI 1.58–4.95), p < 0.001, and HR = 2.22 (95% CI 1.43–3.45), p < 0.001). Muscular hypodensity appears to be an independent risk factor for mortality in DLBCL and because of DLASA can be estimated in routine practice.
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spelling pubmed-84663142021-09-27 Deep-Learning Assessed Muscular Hypodensity Independently Predicts Mortality in DLBCL Patients Younger Than 60 Years Jullien, Maxime Tessoulin, Benoit Ghesquières, Hervé Oberic, Lucie Morschhauser, Franck Tilly, Hervé Ribrag, Vincent Lamy, Thierry Thieblemont, Catherine Villemagne, Bruno Gressin, Rémy Bouabdallah, Kamal Haioun, Corinne Damaj, Gandhi Fornecker, Luc-Matthieu Schiano De Colella, Jean-Marc Feugier, Pierre Hermine, Olivier Cartron, Guillaume Bonnet, Christophe André, Marc Bailly, Clément Casasnovas, René-Olivier Le Gouill, Steven Cancers (Basel) Article SIMPLE SUMMARY: Cachexia is a major cause of mortality in cancer patients and is characterized by a continuous skeletal muscle loss. Muscle depletion assessed by computed tomography (CT) is a predictive marker in solid tumors but has never been assessed in non-Hodgkin’s lymphoma. Despite software improvements, its measurement remains highly time-consuming and cannot be performed in clinical practice. We report the development of a CT segmentation algorithm based on convolutional neural networks. It automates the extraction of anthropometric data from pretherapeutic CT to assess precise body composition of young diffuse large B cell lymphoma (DLBCL) patients at the time of diagnosis. In this population, muscle hypodensity appears to be an independent risk factor for mortality, and can be estimated at diagnosis with this new tool. ABSTRACT: Background. Muscle depletion (MD) assessed by computed tomography (CT) has been shown to be a predictive marker in solid tumors, but has not been assessed in non-Hodgkin’s lymphomas. Despite software improvements, MD measurement remains highly time-consuming and cannot be used in clinical practice. Methods. This study reports the development of a Deep-Learning automatic segmentation algorithm (DLASA) to measure MD, and investigate its predictive value in a cohort of 656 diffuse large B cell lymphoma (DLBCL) patients included in the GAINED phase III prospective trial (NCT01659099). Results. After training on a series of 190 patients, the DLASA achieved a Dice coefficient of 0.97 ± 0.03. In the cohort, the median skeletal muscle index was 50.2 cm(2)/m(2) and median muscle attenuation (MA) was 36.1 Hounsfield units (HU). No impact of sarcopenia was found on either progression free survival (PFS) or overall survival (OS). Muscular hypodensity, defined as MA below the tenth percentile according to sex, was associated with a lower OS and PFS, respectively (HR = 2.80 (95% CI 1.58–4.95), p < 0.001, and HR = 2.22 (95% CI 1.43–3.45), p < 0.001). Muscular hypodensity appears to be an independent risk factor for mortality in DLBCL and because of DLASA can be estimated in routine practice. MDPI 2021-09-07 /pmc/articles/PMC8466314/ /pubmed/34572728 http://dx.doi.org/10.3390/cancers13184503 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Jullien, Maxime
Tessoulin, Benoit
Ghesquières, Hervé
Oberic, Lucie
Morschhauser, Franck
Tilly, Hervé
Ribrag, Vincent
Lamy, Thierry
Thieblemont, Catherine
Villemagne, Bruno
Gressin, Rémy
Bouabdallah, Kamal
Haioun, Corinne
Damaj, Gandhi
Fornecker, Luc-Matthieu
Schiano De Colella, Jean-Marc
Feugier, Pierre
Hermine, Olivier
Cartron, Guillaume
Bonnet, Christophe
André, Marc
Bailly, Clément
Casasnovas, René-Olivier
Le Gouill, Steven
Deep-Learning Assessed Muscular Hypodensity Independently Predicts Mortality in DLBCL Patients Younger Than 60 Years
title Deep-Learning Assessed Muscular Hypodensity Independently Predicts Mortality in DLBCL Patients Younger Than 60 Years
title_full Deep-Learning Assessed Muscular Hypodensity Independently Predicts Mortality in DLBCL Patients Younger Than 60 Years
title_fullStr Deep-Learning Assessed Muscular Hypodensity Independently Predicts Mortality in DLBCL Patients Younger Than 60 Years
title_full_unstemmed Deep-Learning Assessed Muscular Hypodensity Independently Predicts Mortality in DLBCL Patients Younger Than 60 Years
title_short Deep-Learning Assessed Muscular Hypodensity Independently Predicts Mortality in DLBCL Patients Younger Than 60 Years
title_sort deep-learning assessed muscular hypodensity independently predicts mortality in dlbcl patients younger than 60 years
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8466314/
https://www.ncbi.nlm.nih.gov/pubmed/34572728
http://dx.doi.org/10.3390/cancers13184503
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