Grading of glioma based on T1 perfusion MRI parameters is well reported but it has certain challenges specially in differentiating intermediate glioma grades (Grade II vs. III and Grade III vs. IV). In this study, we have differentiated intermediate as well as multiclass glioma grades (Grade II vs. III vs. IV) using an optimized machine learning framework which uses quantitative T1 perfusion MRI parameters in combination with volume of different components of tumor as a feature set. The results show that it is feasible to obtain low error in glioma grading using the proposed methodology. The results also emphasizes the utility of using volume of tumor subparts in conjunction with T1 perfusion MRI parameters for glioma grading.
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