Morphometric model for discrimination between glioblastoma multiforme and solitary metastasis using three-dimensional shape analysis
OA Location
Author(s)
Yang, G
Jones, TL
Howe, FA
Barrick, TR
Type
Journal Article
Abstract
Purpose:
Glioblastoma multiforme (GBM) and brain metastasis (MET) are the most common intra-axial brain neoplasms in adults and often pose a diagnostic dilemma using standard clinical MRI. These tumor types require different oncological and surgical management, which subsequently influence prognosis and clinical outcome.
Methods:
Here, we hypothesize that GBM and MET possess different three-dimensional (3D) morphological attributes based on their physical characteristics. A 3D morphological analysis was applied on the tumor surface defined by our diffusion tensor imaging (DTI) segmentation technique. It segments the DTI data into clusters representing different isotropic and anisotropic water diffusion characteristics, from which a distinct surface boundary between healthy and pathological tissue was identified. Morphometric features of shape index and curvedness were then computed for each tumor surface and used to build a morphometric model of GBM and MET pathology with the goal of developing a tumor classification method based on shape characteristics.
Results:
Our 3D morphometric method was applied on 48 untreated brain tumor patients. Cross-validation resulted in a 95.8% accuracy classification with only two shape features needed and that can be objectively derived from quantitative imaging methods.
Conclusion:
The proposed 3D morphometric analysis framework can be applied to distinguish GBMs from solitary METs.
Glioblastoma multiforme (GBM) and brain metastasis (MET) are the most common intra-axial brain neoplasms in adults and often pose a diagnostic dilemma using standard clinical MRI. These tumor types require different oncological and surgical management, which subsequently influence prognosis and clinical outcome.
Methods:
Here, we hypothesize that GBM and MET possess different three-dimensional (3D) morphological attributes based on their physical characteristics. A 3D morphological analysis was applied on the tumor surface defined by our diffusion tensor imaging (DTI) segmentation technique. It segments the DTI data into clusters representing different isotropic and anisotropic water diffusion characteristics, from which a distinct surface boundary between healthy and pathological tissue was identified. Morphometric features of shape index and curvedness were then computed for each tumor surface and used to build a morphometric model of GBM and MET pathology with the goal of developing a tumor classification method based on shape characteristics.
Results:
Our 3D morphometric method was applied on 48 untreated brain tumor patients. Cross-validation resulted in a 95.8% accuracy classification with only two shape features needed and that can be objectively derived from quantitative imaging methods.
Conclusion:
The proposed 3D morphometric analysis framework can be applied to distinguish GBMs from solitary METs.
Date Issued
2015-07-14
Date Acceptance
2015-06-23
Citation
Magnetic Resonance in Medicine, 2015, 75 (6), pp.2505-2516
ISSN
0740-3194
Publisher
Wiley
Start Page
2505
End Page
2516
Journal / Book Title
Magnetic Resonance in Medicine
Volume
75
Issue
6
Copyright Statement
© 2015 Wiley Periodicals, Inc. This is the accepted version of the following article: ang, G., Jones, T. L., Howe, F. A. and Barrick, T. R. (2016), Morphometric model for discrimination between glioblastoma multiforme and solitary metastasis using three-dimensional shape analysis. Magn. Reson. Med, 75: 2505–2516. doi:10.1002/mrm.25845, which has been published in final form at https://dx.doi.org/10.1002/mrm.25845
Subjects
Nuclear Medicine & Medical Imaging
0903 Biomedical Engineering
Publication Status
Published