Parallel Multi-Circuit Quantum Feature Fusion in Hybrid Quantum-Classical Convolutional Neural Networks for Breast Tumor Classification
Ece Yurtseven

TL;DR
This paper introduces a hybrid quantum-classical CNN for breast tumor classification that fuses quantum and classical features, demonstrating statistically significant accuracy improvements over classical models.
Contribution
The work presents a novel hybrid QCNN architecture with quantum feature fusion, validated through rigorous statistical testing on a breast tumor dataset.
Findings
Hybrid QCNN outperforms classical CNN in accuracy (p=0.03125).
Quantum feature fusion enhances classification performance.
Statistical validation confirms significance of results.
Abstract
Quantum machine learning has emerged as a promising approach to improve feature extraction and classification tasks in high-dimensional data domains such as medical imaging. In this work, we present a hybrid Quantum-Classical Convolutional Neural Network (QCNN) architecture designed for the binary classification of the BreastMNIST dataset, a standardized benchmark for distinguishing between benign and malignant breast tumors. Our architecture integrates classical convolutional feature extraction with two distinct quantum circuits: an amplitude-encoding variational quantum circuit (VQC) and an angle-encoding VQC circuit with circular entanglement, both implemented on four qubits. These circuits generate quantum feature embeddings that are fused with classical features to form a joint feature space, which is subsequently processed by a fully connected classifier. To ensure fairness, the…
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