Machine Learning Based Radiomics for Glial Tumor Classification and Comparison with Volumetric Analysis
Sevcan Turk, Kaya Oguz, Mehmet Orman, Emre Caliskan, Yesim Ertan,, Erkin Ozgiray, Taner Akalin, Ashok Srinivasan, Omer Kitis

TL;DR
This study demonstrates that machine learning applied to multi-modal MRI features can accurately classify glial tumor grades noninvasively, outperforming traditional volumetric analysis in distinguishing tumor grades.
Contribution
The paper introduces a machine learning approach using SVM and ANN to classify glioma tumor grades based on MRI features, showing high accuracy and improved differentiation over volumetric analysis.
Findings
Machine learning classifiers achieved up to 98% accuracy.
Volume ratios differed significantly between grade IV and lower grades.
Volumetric analysis alone could not reliably distinguish grade II and III tumors.
Abstract
Purpose; The purpose of this study is to classify glial tumors into grade II, III and IV categories noninvasively by application of machine learning to multi-modal MRI features in comparison with volumetric analysis. Methods; We retrospectively studied 57 glioma patients with pre and postcontrast T1 weighted, T2 weighted, FLAIR images, and ADC maps acquired on a 3T MRI. The tumors were segmented into enhancing and nonenhancing portions, tumor necrosis, cyst and edema using semiautomated segmentation of ITK-SNAP open source tool. We measured total tumor volume, enhancing-nonenhancing tumor, edema, necrosis volume and the ratios to the total tumor volume. Training of a support vector machine (SVM) classifier and artificial neural network (ANN) was performed with labeled data designed to answer the question of interest. Specificity, sensitivity, and AUC of the predictions were computed by…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Glioma Diagnosis and Treatment · Brain Tumor Detection and Classification
MethodsHigh-Order Consensuses · Support Vector Machine
