Cargando…
IMG-22. A DEEP LEARNING MODEL FOR AUTOMATIC POSTERIOR FOSSA PEDIATRIC BRAIN TUMOR SEGMENTATION: A MULTI-INSTITUTIONAL STUDY
BACKGROUND: Brain tumors are the most common solid malignancies in childhood, many of which develop in the posterior fossa (PF). Manual tumor measurements are frequently required to optimize registration into surgical navigation systems or for surveillance of nonresectable tumors after therapy. With...
Autores principales: | , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Oxford University Press
2020
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7715226/ http://dx.doi.org/10.1093/neuonc/noaa222.357 |
_version_ | 1783618905190694912 |
---|---|
author | Tam, Lydia Lee, Edward Han, Michelle Wright, Jason Chen, Leo Quon, Jenn Lober, Robert Poussaint, Tina Grant, Gerald Taylor, Michael Ramaswamy, Vijay Ho, Chang Cheshier, Samuel Said, Mourad Vitanza, Nick Edwards, Michael Yeom, Kristen |
author_facet | Tam, Lydia Lee, Edward Han, Michelle Wright, Jason Chen, Leo Quon, Jenn Lober, Robert Poussaint, Tina Grant, Gerald Taylor, Michael Ramaswamy, Vijay Ho, Chang Cheshier, Samuel Said, Mourad Vitanza, Nick Edwards, Michael Yeom, Kristen |
author_sort | Tam, Lydia |
collection | PubMed |
description | BACKGROUND: Brain tumors are the most common solid malignancies in childhood, many of which develop in the posterior fossa (PF). Manual tumor measurements are frequently required to optimize registration into surgical navigation systems or for surveillance of nonresectable tumors after therapy. With recent advances in artificial intelligence (AI), automated MRI-based tumor segmentation is now feasible without requiring manual measurements. Our goal was to create a deep learning model for automated PF tumor segmentation that can register into navigation systems and provide volume output. METHODS: 720 pre-surgical MRI scans from five pediatric centers were divided into training, validation, and testing datasets. The study cohort comprised of four PF tumor types: medulloblastoma, diffuse midline glioma, ependymoma, and brainstem or cerebellar pilocytic astrocytoma. Manual segmentation of the tumors by an attending neuroradiologist served as “ground truth” labels for model training and evaluation. We used 2D Unet, an encoder-decoder convolutional neural network architecture, with a pre-trained ResNet50 encoder. We assessed ventricle segmentation accuracy on a held-out test set using Dice similarity coefficient (0–1) and compared ventricular volume calculation between manual and model-derived segmentations using linear regression. RESULTS: Compared to the ground truth expert human segmentation, overall Dice score for model performance accuracy was 0.83 for automatic delineation of the 4 tumor types. CONCLUSIONS: In this multi-institutional study, we present a deep learning algorithm that automatically delineates PF tumors and outputs volumetric information. Our results demonstrate applied AI that is clinically applicable, potentially augmenting radiologists, neuro-oncologists, and neurosurgeons for tumor evaluation, surveillance, and surgical planning. |
format | Online Article Text |
id | pubmed-7715226 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | Oxford University Press |
record_format | MEDLINE/PubMed |
spelling | pubmed-77152262020-12-09 IMG-22. A DEEP LEARNING MODEL FOR AUTOMATIC POSTERIOR FOSSA PEDIATRIC BRAIN TUMOR SEGMENTATION: A MULTI-INSTITUTIONAL STUDY Tam, Lydia Lee, Edward Han, Michelle Wright, Jason Chen, Leo Quon, Jenn Lober, Robert Poussaint, Tina Grant, Gerald Taylor, Michael Ramaswamy, Vijay Ho, Chang Cheshier, Samuel Said, Mourad Vitanza, Nick Edwards, Michael Yeom, Kristen Neuro Oncol Imaging BACKGROUND: Brain tumors are the most common solid malignancies in childhood, many of which develop in the posterior fossa (PF). Manual tumor measurements are frequently required to optimize registration into surgical navigation systems or for surveillance of nonresectable tumors after therapy. With recent advances in artificial intelligence (AI), automated MRI-based tumor segmentation is now feasible without requiring manual measurements. Our goal was to create a deep learning model for automated PF tumor segmentation that can register into navigation systems and provide volume output. METHODS: 720 pre-surgical MRI scans from five pediatric centers were divided into training, validation, and testing datasets. The study cohort comprised of four PF tumor types: medulloblastoma, diffuse midline glioma, ependymoma, and brainstem or cerebellar pilocytic astrocytoma. Manual segmentation of the tumors by an attending neuroradiologist served as “ground truth” labels for model training and evaluation. We used 2D Unet, an encoder-decoder convolutional neural network architecture, with a pre-trained ResNet50 encoder. We assessed ventricle segmentation accuracy on a held-out test set using Dice similarity coefficient (0–1) and compared ventricular volume calculation between manual and model-derived segmentations using linear regression. RESULTS: Compared to the ground truth expert human segmentation, overall Dice score for model performance accuracy was 0.83 for automatic delineation of the 4 tumor types. CONCLUSIONS: In this multi-institutional study, we present a deep learning algorithm that automatically delineates PF tumors and outputs volumetric information. Our results demonstrate applied AI that is clinically applicable, potentially augmenting radiologists, neuro-oncologists, and neurosurgeons for tumor evaluation, surveillance, and surgical planning. Oxford University Press 2020-12-04 /pmc/articles/PMC7715226/ http://dx.doi.org/10.1093/neuonc/noaa222.357 Text en © The Author(s) 2020. Published by Oxford University Press on behalf of the Society for Neuro-Oncology. http://creativecommons.org/licenses/by-nc/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com |
spellingShingle | Imaging Tam, Lydia Lee, Edward Han, Michelle Wright, Jason Chen, Leo Quon, Jenn Lober, Robert Poussaint, Tina Grant, Gerald Taylor, Michael Ramaswamy, Vijay Ho, Chang Cheshier, Samuel Said, Mourad Vitanza, Nick Edwards, Michael Yeom, Kristen IMG-22. A DEEP LEARNING MODEL FOR AUTOMATIC POSTERIOR FOSSA PEDIATRIC BRAIN TUMOR SEGMENTATION: A MULTI-INSTITUTIONAL STUDY |
title | IMG-22. A DEEP LEARNING MODEL FOR AUTOMATIC POSTERIOR FOSSA PEDIATRIC BRAIN TUMOR SEGMENTATION: A MULTI-INSTITUTIONAL STUDY |
title_full | IMG-22. A DEEP LEARNING MODEL FOR AUTOMATIC POSTERIOR FOSSA PEDIATRIC BRAIN TUMOR SEGMENTATION: A MULTI-INSTITUTIONAL STUDY |
title_fullStr | IMG-22. A DEEP LEARNING MODEL FOR AUTOMATIC POSTERIOR FOSSA PEDIATRIC BRAIN TUMOR SEGMENTATION: A MULTI-INSTITUTIONAL STUDY |
title_full_unstemmed | IMG-22. A DEEP LEARNING MODEL FOR AUTOMATIC POSTERIOR FOSSA PEDIATRIC BRAIN TUMOR SEGMENTATION: A MULTI-INSTITUTIONAL STUDY |
title_short | IMG-22. A DEEP LEARNING MODEL FOR AUTOMATIC POSTERIOR FOSSA PEDIATRIC BRAIN TUMOR SEGMENTATION: A MULTI-INSTITUTIONAL STUDY |
title_sort | img-22. a deep learning model for automatic posterior fossa pediatric brain tumor segmentation: a multi-institutional study |
topic | Imaging |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7715226/ http://dx.doi.org/10.1093/neuonc/noaa222.357 |
work_keys_str_mv | AT tamlydia img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT leeedward img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT hanmichelle img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT wrightjason img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT chenleo img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT quonjenn img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT loberrobert img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT poussainttina img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT grantgerald img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT taylormichael img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT ramaswamyvijay img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT hochang img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT cheshiersamuel img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT saidmourad img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT vitanzanick img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT edwardsmichael img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy AT yeomkristen img22adeeplearningmodelforautomaticposteriorfossapediatricbraintumorsegmentationamultiinstitutionalstudy |