Abstract
We aimed to investigate the utility of peritumoral edema-derived radiomic features from
magnetic resonance imaging (MRI) image weights and fused MRI sequences for enhancing
the performance of machine learning-based glioma grading. The present study utilized the
Multimodal Brain Tumor Segmentation Challenge 2023 (BraTS 2023) dataset. Laplacian Redecomposition
(LRD) was employed to fuse multimodal MRI sequences. The fused image
quality was evaluated using the Entropy, standard deviation (STD), peak signal-to-noise
ratio (PSNR), and structural similarity index measure (SSIM) metrics. A comprehensive set
of radiomic features was subsequently extracted from peritumoral edema regions using
PyRadiomics. The Boruta algorithm was applied for feature selection, and an optimized
classification pipeline was developed using the Tree-based Pipeline Optimization Tool
(TPOT). Model performance for glioma grade classification was evaluated based on accuracy,
precision, recall, F1-score, and area under the curve (AUC) parameters. Analysis
of fused image quality metrics confirmed that the LRD method produces high-quality
fused images. From 851 radiomic features extracted from peritumoral edema regions, the
Boruta algorithm selected different sets of informative features in both standard MRI and
fused images. Subsequent TPOT automated machine learning optimization analysis identified
a fine-tuned Stochastic Gradient Descent (SGD) classifier, trained on features from
T1Gd+FLAIR fused images, as the top-performing model. This model achieved superior
performance in glioma grade classification (Accuracy = 0.96, Precision = 1.0, Recall = 0.94,
F1-Score = 0.96, AUC = 1.0). Radiomic features derived from peritumoral edema in fused
MRI images using the LRD method demonstrated distinct, grade-specific patterns and can
be utilized as a non-invasive, accurate, and rapid glioma grade classification method.
Keywords: radiomic; machine learning; magnetic resonance imaging; image fusion; glioma
دسته بندی