On the Complementarity of Quantum and Classical Features: Adaptive Hybrid Quantum-Classical Feature Fusion for Breast Cancer Classification
arXiv cs.CV / 4/28/2026
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Key Points
- The paper proposes a hybrid quantum-classical feature-fusion architecture for breast cancer diagnosis that combines complementary representations from classical deep models and quantum circuits.
- It introduces three fusion strategies—Static Hybrid Fusion (offline), Dynamic Hybrid Fusion (end-to-end), and Temperature-Scaled Hybrid Fusion (TSHF)—to address optimization asymmetries between quantum and classical components.
- TSHF adds a learnable scalar to dynamically balance hybrid gradient dynamics, aiming to resolve optimization bottlenecks and improve training stability.
- Experiments on the BreastMNIST dataset show that the hybrid approach outperforms purely classical baselines, with the best configuration (ResNet + trainable quantum circuit) reaching 87.82% accuracy, 91.77% F1, and 89.08% AUC-ROC.
- The authors argue that the resulting architecture yields more reliable decision thresholds and provides a stable, high-performing foundation for potentially deploying quantum-enhanced diagnostic tools in clinical settings.
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