HQCM-EBTC: A Hybrid Quantum-Classical Model for Explainable Brain Tumor Classification
Journal:
arXiv
Published Date:
Jun 27, 2025
Abstract
We propose HQCM-EBTC, a hybrid quantum-classical model for automated brain
tumor classification using MRI images. Trained on a dataset of 7,576 scans
covering normal, meningioma, glioma, and pituitary classes, HQCM-EBTC
integrates a 5-qubit, depth-2 quantum layer with 5 parallel circuits, optimized
via AdamW and a composite loss blending cross-entropy and attention
consistency.
HQCM-EBTC achieves 96.48% accuracy, substantially outperforming the classical
baseline (86.72%). It delivers higher precision and F1-scores, especially for
glioma detection. t-SNE projections reveal enhanced feature separability in
quantum space, and confusion matrices show lower misclassification. Attention
map analysis (Jaccard Index) confirms more accurate and focused tumor
localization at high-confidence thresholds.
These results highlight the promise of quantum-enhanced models in medical
imaging, advancing both diagnostic accuracy and interpretability for clinical
brain tumor assessment.