4.5 Article

MRI radiomics to differentiate between low grade glioma and glioblastoma peritumoral region

Journal

JOURNAL OF NEURO-ONCOLOGY
Volume 155, Issue 2, Pages 181-191

Publisher

SPRINGER
DOI: 10.1007/s11060-021-03866-9

Keywords

Radiomics; Magnetic resonance imaging (MRI); Glioblastoma multiforme (GBM); Low grade glioma; Peritumoral region

Funding

  1. Hecht Foundation [1083]

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This study investigated the use of radiomics-based approach to distinguish between GBM PTR and LGG, showing that quantitative analysis of conventional MRI sequences can effectively differentiate between the two types of tumors.
Background The peritumoral region (PTR) of glioblastoma (GBM) appears as a T2W-hyperintensity and is composed of microscopic tumor and edema. Infiltrative low grade glioma (LGG) comprises tumor cells that seem similar to GBM PTR on MRI. The work here explored if a radiomics-based approach can distinguish between the two groups (tumor and edema versus tumor alone). Methods Patients with GBM and LGG imaged using a 1.5 T MRI were included in the study. Image data from cases of GBM PTR, and LGG were manually segmented guided by T2W hyperintensity. A set of 91 first-order and texture features were determined from each of T1W-contrast, and T2W-FLAIR, diffusion-weighted imaging sequences. Applying filtration techniques, a total of 3822 features were obtained. Different feature reduction techniques were employed, and a subsequent model was constructed using four machine learning classifiers. Leave-one-out cross-validation was used to assess classifier performance. Results The analysis included 42 GBM and 36 LGG. The best performance was obtained using AdaBoost classifier using all the features with a sensitivity, specificity, accuracy, and area of curve (AUC) of 91%, 86%, 89%, and 0.96, respectively. Amongst the feature selection techniques, the recursive feature elimination technique had the best results, with an AUC ranging from 0.87 to 0.92. Evaluation with the F-test resulted in the most consistent feature selection with 3 T1W-contrast texture features chosen in over 90% of instances. Conclusions Quantitative analysis of conventional MRI sequences can effectively demarcate GBM PTR from LGG, which is otherwise indistinguishable on visual estimation.

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