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Preoperative Brain Tumor Imaging: Models and Software for Segmentation and Standardized Reporting

For patients suffering from brain tumor, prognosis estimation and treatment decisions are made by a multidisciplinary team based on a set of preoperative MR scans. Currently, the lack of standardized and automatic methods for tumor detection and generation of clinical reports, incorporating a wide r...

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Autores principales: Bouget, David, Pedersen, André, Jakola, Asgeir S., Kavouridis, Vasileios, Emblem, Kyrre E., Eijgelaar, Roelant S., Kommers, Ivar, Ardon, Hilko, Barkhof, Frederik, Bello, Lorenzo, Berger, Mitchel S., Conti Nibali, Marco, Furtner, Julia, Hervey-Jumper, Shawn, Idema, Albert J. S., Kiesel, Barbara, Kloet, Alfred, Mandonnet, Emmanuel, Müller, Domenique M. J., Robe, Pierre A., Rossi, Marco, Sciortino, Tommaso, Van den Brink, Wimar A., Wagemakers, Michiel, Widhalm, Georg, Witte, Marnix G., Zwinderman, Aeilko H., De Witt Hamer, Philip C., Solheim, Ole, Reinertsen, Ingerid
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9364874/
https://www.ncbi.nlm.nih.gov/pubmed/35968292
http://dx.doi.org/10.3389/fneur.2022.932219
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author Bouget, David
Pedersen, André
Jakola, Asgeir S.
Kavouridis, Vasileios
Emblem, Kyrre E.
Eijgelaar, Roelant S.
Kommers, Ivar
Ardon, Hilko
Barkhof, Frederik
Bello, Lorenzo
Berger, Mitchel S.
Conti Nibali, Marco
Furtner, Julia
Hervey-Jumper, Shawn
Idema, Albert J. S.
Kiesel, Barbara
Kloet, Alfred
Mandonnet, Emmanuel
Müller, Domenique M. J.
Robe, Pierre A.
Rossi, Marco
Sciortino, Tommaso
Van den Brink, Wimar A.
Wagemakers, Michiel
Widhalm, Georg
Witte, Marnix G.
Zwinderman, Aeilko H.
De Witt Hamer, Philip C.
Solheim, Ole
Reinertsen, Ingerid
author_facet Bouget, David
Pedersen, André
Jakola, Asgeir S.
Kavouridis, Vasileios
Emblem, Kyrre E.
Eijgelaar, Roelant S.
Kommers, Ivar
Ardon, Hilko
Barkhof, Frederik
Bello, Lorenzo
Berger, Mitchel S.
Conti Nibali, Marco
Furtner, Julia
Hervey-Jumper, Shawn
Idema, Albert J. S.
Kiesel, Barbara
Kloet, Alfred
Mandonnet, Emmanuel
Müller, Domenique M. J.
Robe, Pierre A.
Rossi, Marco
Sciortino, Tommaso
Van den Brink, Wimar A.
Wagemakers, Michiel
Widhalm, Georg
Witte, Marnix G.
Zwinderman, Aeilko H.
De Witt Hamer, Philip C.
Solheim, Ole
Reinertsen, Ingerid
author_sort Bouget, David
collection PubMed
description For patients suffering from brain tumor, prognosis estimation and treatment decisions are made by a multidisciplinary team based on a set of preoperative MR scans. Currently, the lack of standardized and automatic methods for tumor detection and generation of clinical reports, incorporating a wide range of tumor characteristics, represents a major hurdle. In this study, we investigate the most occurring brain tumor types: glioblastomas, lower grade gliomas, meningiomas, and metastases, through four cohorts of up to 4,000 patients. Tumor segmentation models were trained using the AGU-Net architecture with different preprocessing steps and protocols. Segmentation performances were assessed in-depth using a wide-range of voxel and patient-wise metrics covering volume, distance, and probabilistic aspects. Finally, two software solutions have been developed, enabling an easy use of the trained models and standardized generation of clinical reports: Raidionics and Raidionics-Slicer. Segmentation performances were quite homogeneous across the four different brain tumor types, with an average true positive Dice ranging between 80 and 90%, patient-wise recall between 88 and 98%, and patient-wise precision around 95%. In conjunction to Dice, the identified most relevant other metrics were the relative absolute volume difference, the variation of information, and the Hausdorff, Mahalanobis, and object average symmetric surface distances. With our Raidionics software, running on a desktop computer with CPU support, tumor segmentation can be performed in 16–54 s depending on the dimensions of the MRI volume. For the generation of a standardized clinical report, including the tumor segmentation and features computation, 5–15 min are necessary. All trained models have been made open-access together with the source code for both software solutions and validation metrics computation. In the future, a method to convert results from a set of metrics into a final single score would be highly desirable for easier ranking across trained models. In addition, an automatic classification of the brain tumor type would be necessary to replace manual user input. Finally, the inclusion of post-operative segmentation in both software solutions will be key for generating complete post-operative standardized clinical reports.
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spelling pubmed-93648742022-08-11 Preoperative Brain Tumor Imaging: Models and Software for Segmentation and Standardized Reporting Bouget, David Pedersen, André Jakola, Asgeir S. Kavouridis, Vasileios Emblem, Kyrre E. Eijgelaar, Roelant S. Kommers, Ivar Ardon, Hilko Barkhof, Frederik Bello, Lorenzo Berger, Mitchel S. Conti Nibali, Marco Furtner, Julia Hervey-Jumper, Shawn Idema, Albert J. S. Kiesel, Barbara Kloet, Alfred Mandonnet, Emmanuel Müller, Domenique M. J. Robe, Pierre A. Rossi, Marco Sciortino, Tommaso Van den Brink, Wimar A. Wagemakers, Michiel Widhalm, Georg Witte, Marnix G. Zwinderman, Aeilko H. De Witt Hamer, Philip C. Solheim, Ole Reinertsen, Ingerid Front Neurol Neurology For patients suffering from brain tumor, prognosis estimation and treatment decisions are made by a multidisciplinary team based on a set of preoperative MR scans. Currently, the lack of standardized and automatic methods for tumor detection and generation of clinical reports, incorporating a wide range of tumor characteristics, represents a major hurdle. In this study, we investigate the most occurring brain tumor types: glioblastomas, lower grade gliomas, meningiomas, and metastases, through four cohorts of up to 4,000 patients. Tumor segmentation models were trained using the AGU-Net architecture with different preprocessing steps and protocols. Segmentation performances were assessed in-depth using a wide-range of voxel and patient-wise metrics covering volume, distance, and probabilistic aspects. Finally, two software solutions have been developed, enabling an easy use of the trained models and standardized generation of clinical reports: Raidionics and Raidionics-Slicer. Segmentation performances were quite homogeneous across the four different brain tumor types, with an average true positive Dice ranging between 80 and 90%, patient-wise recall between 88 and 98%, and patient-wise precision around 95%. In conjunction to Dice, the identified most relevant other metrics were the relative absolute volume difference, the variation of information, and the Hausdorff, Mahalanobis, and object average symmetric surface distances. With our Raidionics software, running on a desktop computer with CPU support, tumor segmentation can be performed in 16–54 s depending on the dimensions of the MRI volume. For the generation of a standardized clinical report, including the tumor segmentation and features computation, 5–15 min are necessary. All trained models have been made open-access together with the source code for both software solutions and validation metrics computation. In the future, a method to convert results from a set of metrics into a final single score would be highly desirable for easier ranking across trained models. In addition, an automatic classification of the brain tumor type would be necessary to replace manual user input. Finally, the inclusion of post-operative segmentation in both software solutions will be key for generating complete post-operative standardized clinical reports. Frontiers Media S.A. 2022-07-27 /pmc/articles/PMC9364874/ /pubmed/35968292 http://dx.doi.org/10.3389/fneur.2022.932219 Text en Copyright © 2022 Bouget, Pedersen, Jakola, Kavouridis, Emblem, Eijgelaar, Kommers, Ardon, Barkhof, Bello, Berger, Conti Nibali, Furtner, Hervey-Jumper, Idema, Kiesel, Kloet, Mandonnet, Müller, Robe, Rossi, Sciortino, Van den Brink, Wagemakers, Widhalm, Witte, Zwinderman, De Witt Hamer, Solheim and Reinertsen. 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 Neurology
Bouget, David
Pedersen, André
Jakola, Asgeir S.
Kavouridis, Vasileios
Emblem, Kyrre E.
Eijgelaar, Roelant S.
Kommers, Ivar
Ardon, Hilko
Barkhof, Frederik
Bello, Lorenzo
Berger, Mitchel S.
Conti Nibali, Marco
Furtner, Julia
Hervey-Jumper, Shawn
Idema, Albert J. S.
Kiesel, Barbara
Kloet, Alfred
Mandonnet, Emmanuel
Müller, Domenique M. J.
Robe, Pierre A.
Rossi, Marco
Sciortino, Tommaso
Van den Brink, Wimar A.
Wagemakers, Michiel
Widhalm, Georg
Witte, Marnix G.
Zwinderman, Aeilko H.
De Witt Hamer, Philip C.
Solheim, Ole
Reinertsen, Ingerid
Preoperative Brain Tumor Imaging: Models and Software for Segmentation and Standardized Reporting
title Preoperative Brain Tumor Imaging: Models and Software for Segmentation and Standardized Reporting
title_full Preoperative Brain Tumor Imaging: Models and Software for Segmentation and Standardized Reporting
title_fullStr Preoperative Brain Tumor Imaging: Models and Software for Segmentation and Standardized Reporting
title_full_unstemmed Preoperative Brain Tumor Imaging: Models and Software for Segmentation and Standardized Reporting
title_short Preoperative Brain Tumor Imaging: Models and Software for Segmentation and Standardized Reporting
title_sort preoperative brain tumor imaging: models and software for segmentation and standardized reporting
topic Neurology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9364874/
https://www.ncbi.nlm.nih.gov/pubmed/35968292
http://dx.doi.org/10.3389/fneur.2022.932219
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