Cargando…
Clinical Evaluation of a Multiparametric Deep Learning Model for Glioblastoma Segmentation Using Heterogeneous Magnetic Resonance Imaging Data From Clinical Routine
OBJECTIVES: The aims of this study were, first, to evaluate a deep learning–based, automatic glioblastoma (GB) tumor segmentation algorithm on clinical routine data from multiple centers and compare the results to a ground truth, manual expert segmentation, and second, to evaluate the quality of the...
Autores principales: | , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Lippincott Williams & Wilkins
2018
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7598095/ https://www.ncbi.nlm.nih.gov/pubmed/29863600 http://dx.doi.org/10.1097/RLI.0000000000000484 |
_version_ | 1783602506212835328 |
---|---|
author | Perkuhn, Michael Stavrinou, Pantelis Thiele, Frank Shakirin, Georgy Mohan, Manoj Garmpis, Dionysios Kabbasch, Christoph Borggrefe, Jan |
author_facet | Perkuhn, Michael Stavrinou, Pantelis Thiele, Frank Shakirin, Georgy Mohan, Manoj Garmpis, Dionysios Kabbasch, Christoph Borggrefe, Jan |
author_sort | Perkuhn, Michael |
collection | PubMed |
description | OBJECTIVES: The aims of this study were, first, to evaluate a deep learning–based, automatic glioblastoma (GB) tumor segmentation algorithm on clinical routine data from multiple centers and compare the results to a ground truth, manual expert segmentation, and second, to evaluate the quality of the segmentation results across heterogeneous acquisition protocols of routinely acquired clinical magnetic resonance imaging (MRI) examinations from multiple centers. MATERIALS AND METHODS: The data consisted of preoperative MRI scans (T1, T2, FLAIR, and contrast-enhanced [CE] T1) of 64 patients with an initial diagnosis of primary GB, which were acquired in 15 institutions with varying protocols. All images underwent preprocessing (coregistration, skull stripping, resampling to isotropic resolution, normalization) and were fed into an independently trained deep learning model based on DeepMedic, a multilayer, multiscale convolutional neural network for detection and segmentation of tumor compartments. Automatic segmentation results for the whole tumor, necrosis, and CE tumor were compared with manual segmentations. RESULTS: Whole tumor and CE tumor compartments were correctly detected in 100% of the cases; necrosis was correctly detected in 91% of the cases. A high segmentation accuracy comparable to interrater variability was achieved for the whole tumor (mean dice similarity coefficient [DSC], 0.86 ± 0.09) and CE tumor (DSC, 0.78 ± 0.15). The DSC for tumor necrosis was 0.62 ± 0.30. We have observed robust segmentation quality over heterogeneous image acquisition protocols, for example, there were no correlations between resolution and segmentation accuracy of the single tumor compartments. Furthermore, no relevant correlation was found between quality of automatic segmentation and volume of interest properties (surface-to-volume ratio and volume). CONCLUSIONS: The proposed approach for automatic segmentation of GB proved to be robust on routine clinical data and showed on all tumor compartments a high automatic detection rate and a high accuracy, comparable to interrater variability. Further work on improvements of the segmentation accuracy for the necrosis compartments should be guided by the evaluation of the clinical relevance. Therefore, we propose this approach as a suitable building block for automatic tumor segmentation to support radiologists or neurosurgeons in the preoperative reading of GB MRI images and characterization of primary GB. |
format | Online Article Text |
id | pubmed-7598095 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2018 |
publisher | Lippincott Williams & Wilkins |
record_format | MEDLINE/PubMed |
spelling | pubmed-75980952020-11-03 Clinical Evaluation of a Multiparametric Deep Learning Model for Glioblastoma Segmentation Using Heterogeneous Magnetic Resonance Imaging Data From Clinical Routine Perkuhn, Michael Stavrinou, Pantelis Thiele, Frank Shakirin, Georgy Mohan, Manoj Garmpis, Dionysios Kabbasch, Christoph Borggrefe, Jan Invest Radiol Original Articles OBJECTIVES: The aims of this study were, first, to evaluate a deep learning–based, automatic glioblastoma (GB) tumor segmentation algorithm on clinical routine data from multiple centers and compare the results to a ground truth, manual expert segmentation, and second, to evaluate the quality of the segmentation results across heterogeneous acquisition protocols of routinely acquired clinical magnetic resonance imaging (MRI) examinations from multiple centers. MATERIALS AND METHODS: The data consisted of preoperative MRI scans (T1, T2, FLAIR, and contrast-enhanced [CE] T1) of 64 patients with an initial diagnosis of primary GB, which were acquired in 15 institutions with varying protocols. All images underwent preprocessing (coregistration, skull stripping, resampling to isotropic resolution, normalization) and were fed into an independently trained deep learning model based on DeepMedic, a multilayer, multiscale convolutional neural network for detection and segmentation of tumor compartments. Automatic segmentation results for the whole tumor, necrosis, and CE tumor were compared with manual segmentations. RESULTS: Whole tumor and CE tumor compartments were correctly detected in 100% of the cases; necrosis was correctly detected in 91% of the cases. A high segmentation accuracy comparable to interrater variability was achieved for the whole tumor (mean dice similarity coefficient [DSC], 0.86 ± 0.09) and CE tumor (DSC, 0.78 ± 0.15). The DSC for tumor necrosis was 0.62 ± 0.30. We have observed robust segmentation quality over heterogeneous image acquisition protocols, for example, there were no correlations between resolution and segmentation accuracy of the single tumor compartments. Furthermore, no relevant correlation was found between quality of automatic segmentation and volume of interest properties (surface-to-volume ratio and volume). CONCLUSIONS: The proposed approach for automatic segmentation of GB proved to be robust on routine clinical data and showed on all tumor compartments a high automatic detection rate and a high accuracy, comparable to interrater variability. Further work on improvements of the segmentation accuracy for the necrosis compartments should be guided by the evaluation of the clinical relevance. Therefore, we propose this approach as a suitable building block for automatic tumor segmentation to support radiologists or neurosurgeons in the preoperative reading of GB MRI images and characterization of primary GB. Lippincott Williams & Wilkins 2018-11 2018-10-10 /pmc/articles/PMC7598095/ /pubmed/29863600 http://dx.doi.org/10.1097/RLI.0000000000000484 Text en Copyright © 2018 The Author(s). Published by Wolters Kluwer Health, Inc. This is an open-access article distributed under the terms of the Creative Commons Attribution-Non Commercial-No Derivatives License 4.0 (CCBY-NC-ND) (http://creativecommons.org/licenses/by-nc-nd/4.0/) , where it is permissible to download and share the work provided it is properly cited. The work cannot be changed in any way or used commercially without permission from the journal. |
spellingShingle | Original Articles Perkuhn, Michael Stavrinou, Pantelis Thiele, Frank Shakirin, Georgy Mohan, Manoj Garmpis, Dionysios Kabbasch, Christoph Borggrefe, Jan Clinical Evaluation of a Multiparametric Deep Learning Model for Glioblastoma Segmentation Using Heterogeneous Magnetic Resonance Imaging Data From Clinical Routine |
title | Clinical Evaluation of a Multiparametric Deep Learning Model for Glioblastoma Segmentation Using Heterogeneous Magnetic Resonance Imaging Data From Clinical Routine |
title_full | Clinical Evaluation of a Multiparametric Deep Learning Model for Glioblastoma Segmentation Using Heterogeneous Magnetic Resonance Imaging Data From Clinical Routine |
title_fullStr | Clinical Evaluation of a Multiparametric Deep Learning Model for Glioblastoma Segmentation Using Heterogeneous Magnetic Resonance Imaging Data From Clinical Routine |
title_full_unstemmed | Clinical Evaluation of a Multiparametric Deep Learning Model for Glioblastoma Segmentation Using Heterogeneous Magnetic Resonance Imaging Data From Clinical Routine |
title_short | Clinical Evaluation of a Multiparametric Deep Learning Model for Glioblastoma Segmentation Using Heterogeneous Magnetic Resonance Imaging Data From Clinical Routine |
title_sort | clinical evaluation of a multiparametric deep learning model for glioblastoma segmentation using heterogeneous magnetic resonance imaging data from clinical routine |
topic | Original Articles |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7598095/ https://www.ncbi.nlm.nih.gov/pubmed/29863600 http://dx.doi.org/10.1097/RLI.0000000000000484 |
work_keys_str_mv | AT perkuhnmichael clinicalevaluationofamultiparametricdeeplearningmodelforglioblastomasegmentationusingheterogeneousmagneticresonanceimagingdatafromclinicalroutine AT stavrinoupantelis clinicalevaluationofamultiparametricdeeplearningmodelforglioblastomasegmentationusingheterogeneousmagneticresonanceimagingdatafromclinicalroutine AT thielefrank clinicalevaluationofamultiparametricdeeplearningmodelforglioblastomasegmentationusingheterogeneousmagneticresonanceimagingdatafromclinicalroutine AT shakiringeorgy clinicalevaluationofamultiparametricdeeplearningmodelforglioblastomasegmentationusingheterogeneousmagneticresonanceimagingdatafromclinicalroutine AT mohanmanoj clinicalevaluationofamultiparametricdeeplearningmodelforglioblastomasegmentationusingheterogeneousmagneticresonanceimagingdatafromclinicalroutine AT garmpisdionysios clinicalevaluationofamultiparametricdeeplearningmodelforglioblastomasegmentationusingheterogeneousmagneticresonanceimagingdatafromclinicalroutine AT kabbaschchristoph clinicalevaluationofamultiparametricdeeplearningmodelforglioblastomasegmentationusingheterogeneousmagneticresonanceimagingdatafromclinicalroutine AT borggrefejan clinicalevaluationofamultiparametricdeeplearningmodelforglioblastomasegmentationusingheterogeneousmagneticresonanceimagingdatafromclinicalroutine |