Multimodal classification of Radiation-Induced Contrast Enhancements and tumor recurrence using deep learning
arXiv cs.CV / 3/13/2026
📰 NewsModels & Research
Key Points
- RICE-NET is a multimodal 3D deep learning model that fuses longitudinal MRI data with radiotherapy dose distributions to automatically classify lesions as tumor recurrence or radiation-induced contrast enhancements in post-treatment glioblastoma patients.
- In a cohort of 92 patients, the model achieved an F1 score of 0.92 on an independent test set, indicating strong performance.
- Ablation experiments show reliable classification largely depends on the radiation map and the contributions from different timepoints and modalities, underscoring the value of multimodal data.
- Occlusion-based interpretability analyses indicate the model focuses on clinically relevant brain regions, supporting its potential to aid diagnostic decisions in neuro-oncology.
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