On the Complementarity of Quantum and Classical Features: Adaptive Hybrid Quantum-Classical Feature Fusion for Breast Cancer Classification

arXiv cs.CV / 4/28/2026

📰 NewsModels & Research

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.

Abstract

The integration of quantum machine learning with classical deep learning offers promising avenues for medical image analysis by mapping data into high-dimensional Hilbert spaces. However, effectively unifying these distinct paradigms remains challenging due to common optimization asymmetries. In this paper, a novel hybrid quantum-classical architecture for breast cancer diagnosis based on a dual-branch feature-extraction pipeline is proposed. Our framework extracts and unifies complementary representations from classical models and quantum circuits, exploring both trainable and deterministic (non-trainable) quantum paradigms. To integrate these embeddings, three progressive feature fusion strategies are introduced: Static Hybrid Fusion (SHF) for offline extraction, Dynamic Hybrid Fusion (DHF) for end-to-end co-adaptation, and a novel Temperature-Scaled Hybrid Fusion (TSHF). The TSHF strategy incorporates a learnable scalar, inspired by multimodal learning, that dynamically balances hybrid gradient dynamics and resolves optimization bottlenecks. Empirical validation on the BreastMNIST dataset confirms our hypothesis that unifying diverse feature representations creates a richer data context. The TSHF strategy, specifically when pairing a ResNet backbone with a trainable quantum circuit, achieved a peak accuracy of 87.82%, F1-score of 91.77%, and an AUC-ROC of 89.08%, outperforming purely classical baselines. These results demonstrate that the proposed hybrid framework improves classification accuracy and threshold reliability, providing a stable, high-performance architecture for the clinical deployment of quantum-enhanced diagnostic tools.