Implicit Neural Representation in Medical Imaging: A Comparative Survey
Amirali Molaei, Amirhossein Aminimehr, Armin Tavakoli and, Amirhossein Kazerouni, Bobby Azad, Reza Azad, Dorit Merhof

TL;DR
This survey reviews the application of implicit neural representations in medical imaging, highlighting their advantages, challenges, and future research directions for improved clinical analysis.
Contribution
It provides a comprehensive overview of INR models in medical imaging, including applications, benefits, limitations, and future opportunities, with a curated resource list.
Findings
INRs are resolution-agnostic and memory-efficient.
They effectively handle ill-posed medical imaging problems.
Future directions include multi-modal integration and real-time systems.
Abstract
Implicit neural representations (INRs) have gained prominence as a powerful paradigm in scene reconstruction and computer graphics, demonstrating remarkable results. By utilizing neural networks to parameterize data through implicit continuous functions, INRs offer several benefits. Recognizing the potential of INRs beyond these domains, this survey aims to provide a comprehensive overview of INR models in the field of medical imaging. In medical settings, numerous challenging and ill-posed problems exist, making INRs an attractive solution. The survey explores the application of INRs in various medical imaging tasks, such as image reconstruction, segmentation, registration, novel view synthesis, and compression. It discusses the advantages and limitations of INRs, highlighting their resolution-agnostic nature, memory efficiency, ability to avoid locality biases, and differentiability,…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Radiomics and Machine Learning in Medical Imaging · Medical Image Segmentation Techniques
