Subclass Classification of Gliomas Using MRI Fusion Technique
Kiranmayee Janardhan, Christy Bobby Thomas

TL;DR
This paper presents a novel MRI fusion technique combining multimodal images and deep learning to accurately classify glioma subtypes, significantly improving diagnostic precision.
Contribution
The study introduces a fusion algorithm integrating 2D and 3D MRI segmentations with a ResNet50 classifier, achieving high accuracy in glioma subclassification.
Findings
Achieved 99.25% classification accuracy.
Enhanced feature capture through multimodal image fusion.
Outperformed existing classification methods.
Abstract
Glioma, the prevalent primary brain tumor, exhibits diverse aggressiveness levels and prognoses. Precise classification of glioma is paramount for treatment planning and predicting prognosis. This study aims to develop an algorithm to fuse the MRI images from T1, T2, T1ce, and fluid-attenuated inversion recovery (FLAIR) sequences to enhance the efficacy of glioma subclass classification as no tumor, necrotic core, peritumoral edema, and enhancing tumor. The MRI images from BraTS datasets were used in this work. The images were pre-processed using max-min normalization to ensure consistency in pixel intensity values across different images. The segmentation of the necrotic core, peritumoral edema, and enhancing tumor was performed on 2D and 3D images separately using UNET architecture. Further, the segmented regions from multimodal MRI images were fused using the weighted averaging…
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