Integrating Quantum Computing for Enhanced Image Reconstruction in Medical Diagnostics
R. Anuradha, C P Vandana, S. Vikram Singh, Navdeep Singh, Rafal Emad, Vemuri Nitin
Abstract
The ever-growing field of medical diagnostics is witnessing a paradigm shift with the integration of quantum computing and deep neural networks (DNN). This paper presents a novel approach that harnesses the computational prowess of quantum algorithms combined with the capabilities of DNNs. The core of this research lies in the development of a novel quantum-enhanced neural network model, for the complex task of reconstructing high-resolution medical images from limited or noisy data sets. The proposed model leverages quantum parallelism to significantly improve the training process of deep networks, while maintaining high fidelity in image reconstruction. Extensive experiments demonstrate that this integrated approach outperforms conventional methods in terms of both speed and accuracy. The quantum-DNN framework exhibits remarkable proficiency in handling large-scale medical images, showing substantial improvements in detecting fine-grained features critical for accurate diagnosis. This paper also delves into the optimization of quantum circuits and layer architectures, ensuring minimal qubit requirements while maximizing computational efficiency.