Denoising diffusion probabilistic models (DDPMs) have been shown to have superior performances in MRI reconstruction. From the perspective of continuous stochastic differential equations (SDEs), the reverse process of DDPM can be seen as maximizing the energy of the reconstructed MR image, leading to SDE sequence divergence. For this reason, a modified high-frequency DDPM model is proposed for MRI reconstruction. From its continuous SDE viewpoint, termed high-frequency space SDE (HFS-SDE), the energy concentrated low-frequency part of the MR image is no longer amplified, and the diffusion process focuses more on acquiring high-frequency prior information. It not only improves the stability of the diffusion model but also provides the possibility of better recovery of high-frequency details. Experiments on the publicly fastMRI dataset show that our proposed HFS-SDE outperforms the DDPM-driven VP-SDE, supervised deep learning methods and traditional parallel imaging methods in terms of stability and reconstruction accuracy.
翻译:事实证明,从连续随机差分方程(SDEs)的角度来看,DDPM的反向过程可被视为最大限度地发挥重建的MM图像的能量,从而导致SDE序列差异。为此,为MRI的重建提议了一个经过修改的高频DDPM模型。从其连续的SDE观点来看,称为高频空间SDE(HFS-SDE),MR图像的能量集中低频部分不再扩大,扩散过程更侧重于获取高频先前信息。它不仅改善了扩散模型的稳定性,而且还提供了更好地恢复高频细节的可能性。对公开快速MRI数据集的实验表明,我们提议的HFS-SDE比DDPM驱动的VP-SDE、监督的深层学习方法和传统的平行成像方法在稳定性和重建精确性方面更优于DDPM-驱动的VP-SDE。