Brain Tumor Classification from 3D MRI Using Persistent Homology and Betti Features: A Topological Data Analysis Approach on BraTS2020
arXiv cs.CV / 3/17/2026
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Key Points
- The paper introduces a topology-driven framework that applies Topological Data Analysis, specifically persistent homology, directly to 3D BraTS2020 MRI volumes for brain tumor classification.
- It derives 100 Betti-based topological features that summarize 3D tumor morphology and reduce data dimensionality.
- Unlike deep learning, the framework uses classical classifiers (Random Forest and XGBoost) to perform binary HGG vs LGG classification, achieving 89.19% accuracy on BraTS 2020.
- The approach emphasizes interpretability and computational efficiency of topological features, suggesting a promising direction for medical image analysis beyond conventional DL methods.
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