IVAICVMED-PHApr 28, 2025

Physical foundations for trustworthy medical imaging: a review for artificial intelligence researchers

arXiv:2505.02843v11 citationsh-index: 3
Originality Synthesis-oriented
AI Analysis

It addresses the lack of physics knowledge among AI researchers in medical imaging, which is an incremental review aimed at improving algorithm reliability.

The paper reviews the physical principles underlying medical image acquisition and their integration into AI algorithms to enhance trustworthiness and robustness, particularly in data-limited scenarios.

Artificial intelligence in medical imaging has seen unprecedented growth in the last years, due to rapid advances in deep learning and computing resources. Applications cover the full range of existing medical imaging modalities, with unique characteristics driven by the physics of each technique. Yet, artificial intelligence professionals entering the field, and even experienced developers, often lack a comprehensive understanding of the physical principles underlying medical image acquisition, which hinders their ability to fully leverage its potential. The integration of physics knowledge into artificial intelligence algorithms enhances their trustworthiness and robustness in medical imaging, especially in scenarios with limited data availability. In this work, we review the fundamentals of physics in medical images and their impact on the latest advances in artificial intelligence, particularly, in generative models and reconstruction algorithms. Finally, we explore the integration of physics knowledge into physics-inspired machine learning models, which leverage physics-based constraints to enhance the learning of medical imaging features.

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