CVNov 19, 2023

A Survey of Emerging Applications of Diffusion Probabilistic Models in MRI

arXiv:2311.11383v336 citationsh-index: 4
Originality Synthesis-oriented
AI Analysis

It addresses the need for a comprehensive review to help MRI researchers understand DPM advances, but is incremental as it synthesizes existing studies without novel contributions.

This paper provides a survey of diffusion probabilistic models (DPMs) applied to MRI, covering applications like reconstruction and image generation, but does not present new experimental results or concrete numbers.

Diffusion probabilistic models (DPMs) which employ explicit likelihood characterization and a gradual sampling process to synthesize data, have gained increasing research interest. Despite their huge computational burdens due to the large number of steps involved during sampling, DPMs are widely appreciated in various medical imaging tasks for their high-quality and diversity of generation. Magnetic resonance imaging (MRI) is an important medical imaging modality with excellent soft tissue contrast and superb spatial resolution, which possesses unique opportunities for DPMs. Although there is a recent surge of studies exploring DPMs in MRI, a survey paper of DPMs specifically designed for MRI applications is still lacking. This review article aims to help researchers in the MRI community to grasp the advances of DPMs in different applications. We first introduce the theory of two dominant kinds of DPMs, categorized according to whether the diffusion time step is discrete or continuous, and then provide a comprehensive review of emerging DPMs in MRI, including reconstruction, image generation, image translation, segmentation, anomaly detection, and further research topics. Finally, we discuss the general limitations as well as limitations specific to the MRI tasks of DPMs and point out potential areas that are worth further exploration.

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