Metrics and textural features of MRI diffusion to improve classification of pediatric posterior fossa tumors

BACKGROUND AND PURPOSE: Qualitative radiologic MR imaging review affords limited differentiation among types of pediatric posterior fossa brain tumors and cannot detect histologic or molecular subtypes, which could help to stratify treatment. This study aimed to improve current posterior fossa discr...

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Main Authors: Rodriguez Gutierrez, D., Awwad, A., Meijer, Lisethe, Manita, M., Jaspan, T., Dineen, Robert A., Grundy, Richard G., Auer, Dorothee P.
Format: Article
Published: American Society of Neuroradiology 2013
Online Access:https://eprints.nottingham.ac.uk/38881/
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author Rodriguez Gutierrez, D.
Awwad, A.
Meijer, Lisethe
Manita, M.
Jaspan, T.
Dineen, Robert A.
Grundy, Richard G.
Auer, Dorothee P.
author_facet Rodriguez Gutierrez, D.
Awwad, A.
Meijer, Lisethe
Manita, M.
Jaspan, T.
Dineen, Robert A.
Grundy, Richard G.
Auer, Dorothee P.
author_sort Rodriguez Gutierrez, D.
building Nottingham Research Data Repository
collection Online Access
description BACKGROUND AND PURPOSE: Qualitative radiologic MR imaging review affords limited differentiation among types of pediatric posterior fossa brain tumors and cannot detect histologic or molecular subtypes, which could help to stratify treatment. This study aimed to improve current posterior fossa discrimination of histologic tumor type by using support vector machine classifiers on quantitative MR imaging features. MATERIALS AND METHODS: This retrospective study included preoperative MRI in 40 children with posterior fossa tumors (17 medulloblastomas, 16 pilocytic astrocytomas, and 7 ependymomas). Shape, histogram, and textural features were computed from contrast-enhanced T2WI and T1WI and diffusivity (ADC) maps. Combinations of features were used to train tumor-type-specific classifiers for medulloblastoma, pilocytic astrocytoma, and ependymoma types in separation and as a joint posterior fossa classifier. A tumor-subtype classifier was also produced for classic medulloblastoma. The performance of different classifiers was assessed and compared by using randomly selected subsets of training and test data. RESULTS: ADC histogram features (25th and 75th percentiles and skewness) yielded the best classification of tumor type (on average >95.8% of medulloblastomas, >96.9% of pilocytic astrocytomas, and >94.3% of ependymomas by using 8 training samples). The resulting joint posterior fossa classifier correctly assigned >91.4% of the posterior fossa tumors. For subtype classification, 89.4% of classic medulloblastomas were correctly classified on the basis of ADC texture features extracted from the Gray-Level Co-Occurence Matrix. CONCLUSIONS: Support vector machine–based classifiers using ADC histogram features yielded very good discrimination among pediatric posterior fossa tumor types, and ADC textural features show promise for further subtype discrimination. These findings suggest an added diagnostic value of quantitative feature analysis of diffusion MR imaging in pediatric neuro-oncology.
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spelling nottingham-388812020-05-04T16:40:45Z https://eprints.nottingham.ac.uk/38881/ Metrics and textural features of MRI diffusion to improve classification of pediatric posterior fossa tumors Rodriguez Gutierrez, D. Awwad, A. Meijer, Lisethe Manita, M. Jaspan, T. Dineen, Robert A. Grundy, Richard G. Auer, Dorothee P. BACKGROUND AND PURPOSE: Qualitative radiologic MR imaging review affords limited differentiation among types of pediatric posterior fossa brain tumors and cannot detect histologic or molecular subtypes, which could help to stratify treatment. This study aimed to improve current posterior fossa discrimination of histologic tumor type by using support vector machine classifiers on quantitative MR imaging features. MATERIALS AND METHODS: This retrospective study included preoperative MRI in 40 children with posterior fossa tumors (17 medulloblastomas, 16 pilocytic astrocytomas, and 7 ependymomas). Shape, histogram, and textural features were computed from contrast-enhanced T2WI and T1WI and diffusivity (ADC) maps. Combinations of features were used to train tumor-type-specific classifiers for medulloblastoma, pilocytic astrocytoma, and ependymoma types in separation and as a joint posterior fossa classifier. A tumor-subtype classifier was also produced for classic medulloblastoma. The performance of different classifiers was assessed and compared by using randomly selected subsets of training and test data. RESULTS: ADC histogram features (25th and 75th percentiles and skewness) yielded the best classification of tumor type (on average >95.8% of medulloblastomas, >96.9% of pilocytic astrocytomas, and >94.3% of ependymomas by using 8 training samples). The resulting joint posterior fossa classifier correctly assigned >91.4% of the posterior fossa tumors. For subtype classification, 89.4% of classic medulloblastomas were correctly classified on the basis of ADC texture features extracted from the Gray-Level Co-Occurence Matrix. CONCLUSIONS: Support vector machine–based classifiers using ADC histogram features yielded very good discrimination among pediatric posterior fossa tumor types, and ADC textural features show promise for further subtype discrimination. These findings suggest an added diagnostic value of quantitative feature analysis of diffusion MR imaging in pediatric neuro-oncology. American Society of Neuroradiology 2013-12-05 Article PeerReviewed Rodriguez Gutierrez, D., Awwad, A., Meijer, Lisethe, Manita, M., Jaspan, T., Dineen, Robert A., Grundy, Richard G. and Auer, Dorothee P. (2013) Metrics and textural features of MRI diffusion to improve classification of pediatric posterior fossa tumors. American Journal of Neuroradiology, 35 (5). pp. 1009-1015. ISSN 1460-2431 http://www.ajnr.org/content/35/5/1009 doi:10.3174/ajnr.A3784 doi:10.3174/ajnr.A3784
spellingShingle Rodriguez Gutierrez, D.
Awwad, A.
Meijer, Lisethe
Manita, M.
Jaspan, T.
Dineen, Robert A.
Grundy, Richard G.
Auer, Dorothee P.
Metrics and textural features of MRI diffusion to improve classification of pediatric posterior fossa tumors
title Metrics and textural features of MRI diffusion to improve classification of pediatric posterior fossa tumors
title_full Metrics and textural features of MRI diffusion to improve classification of pediatric posterior fossa tumors
title_fullStr Metrics and textural features of MRI diffusion to improve classification of pediatric posterior fossa tumors
title_full_unstemmed Metrics and textural features of MRI diffusion to improve classification of pediatric posterior fossa tumors
title_short Metrics and textural features of MRI diffusion to improve classification of pediatric posterior fossa tumors
title_sort metrics and textural features of mri diffusion to improve classification of pediatric posterior fossa tumors
url https://eprints.nottingham.ac.uk/38881/
https://eprints.nottingham.ac.uk/38881/
https://eprints.nottingham.ac.uk/38881/