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Measurement-conditioned Denoising Diffusion Probabilistic Model for Under-sampled Medical Image Reconstruction

About

We propose a novel and unified method, measurement-conditioned denoising diffusion probabilistic model (MC-DDPM), for under-sampled medical image reconstruction based on DDPM. Different from previous works, MC-DDPM is defined in measurement domain (e.g. k-space in MRI reconstruction) and conditioned on under-sampling mask. We apply this method to accelerate MRI reconstruction and the experimental results show excellent performance, outperforming full supervision baseline and the state-of-the-art score-based reconstruction method. Due to its generative nature, MC-DDPM can also quantify the uncertainty of reconstruction. Our code is available on github.

Yutong Xie, Quanzheng Li• 2022

Related benchmarks

TaskDatasetResultRank
MRI ReconstructionFastMRI single-coil knee (test)
PSNR29.16
12
MRI ReconstructionFastMRI knee single-coil (test)
PSNR27.35
10
MRI ReconstructionIXI T1 4x 0.08c (middle 10 slices)
PSNR28.21
9
MRI ReconstructionIXI T1 8x 0.04c (middle 10 slices)
PSNR23.97
9
Astronomical Image ReconstructionMG (train)
PSNR18.126
8
Astronomical Image ReconstructionIRSG (train)
PSNR19.77
8
Astronomical Image ReconstructionUTSG (train)
PSNR14.877
8
Astronomical Image ReconstructionEGB full (train)
PSNR19.232
8
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