核磁共振成像中扩散概率模型的新兴应用概览

Yuheng Fan , Hanxi Liao , Shiqi Huang , Yimin Luo , Huazhu Fu , Haikun Qi
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引用次数: 0

摘要

扩散概率模型(Diffusion probabilistic models,DPMs)采用明确的似然特征描述和渐进的采样过程来合成数据,其研究兴趣与日俱增。尽管由于采样过程中涉及大量步骤而产生了巨大的计算负担,但扩散概率模型因其生成的高质量和多样性而在各种医学成像任务中广受赞誉。磁共振成像(MRI)是一种重要的医学成像模式,具有出色的软组织对比度和超高的空间分辨率,这为 DPMs 提供了独特的机会。尽管最近出现了一股探索磁共振成像中 DPM 的研究热潮,但仍缺乏一篇专门针对磁共振成像应用设计的 DPM 的调查论文。这篇综述文章旨在帮助核磁共振成像领域的研究人员掌握 DPM 在不同应用中的进展。我们首先介绍了两种主流的 DPM 理论,并根据扩散时间步是离散还是连续进行了分类,然后全面综述了 MRI 中新兴的 DPM,包括重建、图像生成、图像转换、分割、异常检测以及进一步的研究课题。最后,我们讨论了 DPM 的一般局限性以及磁共振成像任务的特定局限性,并指出了值得进一步探索的潜在领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A survey of emerging applications of diffusion probabilistic models in MRI

A survey of emerging applications of diffusion probabilistic models in MRI

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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