Quantum-enhanced Federated Learning for Ethical Medical Image Analysis

Haeder Talib Mahde Alahmar *

Department of Optometry Techniques, Technical College Al Mussaib, Al Furat Al Awsat Technical University, Iraq.

*Author to whom correspondence should be addressed.


Abstract

Quantum-Enhanced Federated Learning for Real-Time Medical Image Analysis with Ethical AI Governance is a nascent approach combining the principles of federated learning and quantum computing to transform the medical image analysis sector with due regard to the most critical ethical principles. Reflecting on the definition, federated learning is an approach that allows several institutions to jointly train machine learning models without the need to share any patient's data. Therefore, FL is the industry-institution strategic tool that allows for a higher level of privacy security in healthcare. On the other hand, by embracing quantum computing, the developed approach includes more sophisticated computational skills, permitting improved data performance and enhanced model accurateness, a pivotal factor for real-time medical diagnosis. Consequently, the significance of the approach lies in the potential to boost the medical image analysis sector. Quantum-enhanced FL will help comply with the most rigid ethical requirements by involving decentralized data performance and exploiting various datasets characteristic of healthcare providers. This will be particularly pivotal since the current state deems quick and precise medical decisions as of the essence, precisely when imaging tools are developed for early disease detection and recognition.

Additionally, the integration presents an opportunity to address the challenges naturally associated with FL, i.e., model accurateness and data heterogeneities. Therefore, quantum algorithms are incorporated to perform training in much more optimized ways than classical alternatives. However, ethical AI governance will remain challenging with the current FL-quantum integration. As the type continues developing, the issues will concern AI consideration, algorithmic perfidies, and accountable decision types so that proper directives are in line.

Research continues to advance, but stakeholders must address these ethical considerations to fully leverage the promise of quantum-enhanced federated learning to revolutionize medical image analysis.

Thus, a quantum-fed network of neural networks can lead the way in developing solutions that combine the efficiency of quantum computing and the importance of ethical approaches in data management. Responsible and effective utilizing this technology requires continued collaboration between researchers, healthcare providers, and policymakers.

"Simulations show our quantum FL model improves tumor segmentation accuracy by 12% (Dice score) over classical federated learning while maintaining stronger privacy guarantees."

Keywords: Quantum computing, federated learning, medical image analysis, ethical AI governance, data privacy


How to Cite

Alahmar, Haeder Talib Mahde. 2025. “Quantum-Enhanced Federated Learning for Ethical Medical Image Analysis”. Asian Journal of Research in Computer Science 18 (5):257-68. https://doi.org/10.9734/ajrcos/2025/v18i5653.

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