Abstract:
Medical image classification plays a crucial role in healthcare, enabling accurate
disease diagnosis and treatment planning. Traditional deep learning models,
such as Convolutional Neural Networks (CNNs), have demonstrated remarkable
success in this domain but are often constrained by high computational costs,
data inefficiencies, and challenges in generalization, particularly for small and
imbalanced medical datasets. Quantum computing has emerged as a promising
alternative, offering computational advantages through quantum parallelism
and high-dimensional feature representations. This project explores the integration
of quantum computing with classical deep learning to develop a Hybrid
Quantum-Classical Neural Network (HQCNN) for binary medical image classification.
The proposed model leverages a classical CNN for feature extraction
and a quantum circuit for enhanced feature transformation, optimizing classification
performance while reducing computational overhead. The model is
evaluated on four benchmark medical datasets: BloodMNIST, OrganAMNIST,
and PathMNIST. Experimental results demonstrate that the HQCNN model
achieves 99.12% accuracy and 99.91% AUC on BloodMNIST, 98.84% accuracy
and 99.00% AUC on OrganAMNIST, and 97.83% accuracy with 100.00% AUC
on PathMNIST, outperforming traditional CNNs in most cases. While the
proposed HQCNN model enhances classification accuracy and robustness, challenges
such as quantum noise, limited qubit scalability, and training convergence
issues remain significant obstacles. Future research will focus on optimizing quantum circuit architectures, improving hybrid training strategies, and scaling the model for high-resolution medical imaging applications. This study highlights the potential of quantum-assisted deep learning in medical imaging and paves the way for future advancements in quantum-based healthcare solutions