CVMay 14, 2025

Recent Advances in Medical Imaging Segmentation: A Survey

arXiv:2505.09274v115 citationsh-index: 14Has Code
Originality Synthesis-oriented
AI Analysis

This is an incremental survey paper that synthesizes existing research for researchers and practitioners in medical imaging, without introducing novel methods or findings.

This survey paper examines recent advancements in medical image segmentation, focusing on methods like Generative AI and Foundation Models to address challenges such as data accessibility and domain adaptation, but does not present new experimental results or concrete performance numbers.

Medical imaging is a cornerstone of modern healthcare, driving advancements in diagnosis, treatment planning, and patient care. Among its various tasks, segmentation remains one of the most challenging problem due to factors such as data accessibility, annotation complexity, structural variability, variation in medical imaging modalities, and privacy constraints. Despite recent progress, achieving robust generalization and domain adaptation remains a significant hurdle, particularly given the resource-intensive nature of some proposed models and their reliance on domain expertise. This survey explores cutting-edge advancements in medical image segmentation, focusing on methodologies such as Generative AI, Few-Shot Learning, Foundation Models, and Universal Models. These approaches offer promising solutions to longstanding challenges. We provide a comprehensive overview of the theoretical foundations, state-of-the-art techniques, and recent applications of these methods. Finally, we discuss inherent limitations, unresolved issues, and future research directions aimed at enhancing the practicality and accessibility of segmentation models in medical imaging. We are maintaining a \href{https://github.com/faresbougourzi/Awesome-DL-for-Medical-Imaging-Segmentation}{GitHub Repository} to continue tracking and updating innovations in this field.

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