CDiffMR:能否用k空间欠采样代替高斯噪声用于快速MRI?

Jiahao Huang, Angelica I. Avilés-Rivero, C. Schönlieb, Guang Yang
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引用次数: 1

摘要

深度学习已经显示出大大加快MRI重建的能力,同时获得更少的测量值。近年来,扩散模型作为一种新的基于深度学习的生成方法得到了广泛的关注。这些方法寻求从高斯分布中采样属于目标分布的数据点,这已经成功地扩展到MRI重建中。在这项工作中,我们提出了一种基于冷扩散的MRI重建方法,称为CDiffMR。与传统的扩散模型不同,CDiffMR的退化操作是基于\textit{k}空间欠采样而不是添加高斯噪声,并且恢复网络被训练成利用去混叠函数。我们还设计了起点和数据一致性调节策略来指导和加速反向过程。更有趣的是,预训练的CDiffMR模型可以重复用于不同欠采样率的重建任务。通过广泛的数值和视觉实验,我们证明了所提出的CDiffMR可以达到与最先进的模型相当甚至更好的重建结果。与基于扩散模型的对应模型相比,CDiffMR仅使用$1.6 \sim 3.4\%$进行推理时间就可以获得容易竞争的结果。该代码可在https://github.com/ayanglab/CDiffMR上公开获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CDiffMR: Can We Replace the Gaussian Noise with K-Space Undersampling for Fast MRI?
Deep learning has shown the capability to substantially accelerate MRI reconstruction while acquiring fewer measurements. Recently, diffusion models have gained burgeoning interests as a novel group of deep learning-based generative methods. These methods seek to sample data points that belong to a target distribution from a Gaussian distribution, which has been successfully extended to MRI reconstruction. In this work, we proposed a Cold Diffusion-based MRI reconstruction method called CDiffMR. Different from conventional diffusion models, the degradation operation of our CDiffMR is based on \textit{k}-space undersampling instead of adding Gaussian noise, and the restoration network is trained to harness a de-aliaseing function. We also design starting point and data consistency conditioning strategies to guide and accelerate the reverse process. More intriguingly, the pre-trained CDiffMR model can be reused for reconstruction tasks with different undersampling rates. We demonstrated, through extensive numerical and visual experiments, that the proposed CDiffMR can achieve comparable or even superior reconstruction results than state-of-the-art models. Compared to the diffusion model-based counterpart, CDiffMR reaches readily competing results using only $1.6 \sim 3.4\%$ for inference time. The code is publicly available at https://github.com/ayanglab/CDiffMR.
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