Iterative Data Refinement for Self-Supervised MR Image Reconstruction
- URL: http://arxiv.org/abs/2211.13440v1
- Date: Thu, 24 Nov 2022 06:57:16 GMT
- Title: Iterative Data Refinement for Self-Supervised MR Image Reconstruction
- Authors: Xue Liu, Juan Zou, Xiawu Zheng, Cheng Li, Hairong Zheng, Shanshan Wang
- Abstract summary: We propose a data refinement framework for self-supervised MR image reconstruction.
We first analyze the reason of the performance gap between self-supervised and supervised methods.
Then, we design an effective self-supervised training data refinement method to reduce this data bias.
- Score: 18.02961646651716
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Magnetic Resonance Imaging (MRI) has become an important technique in the
clinic for the visualization, detection, and diagnosis of various diseases.
However, one bottleneck limitation of MRI is the relatively slow data
acquisition process. Fast MRI based on k-space undersampling and high-quality
image reconstruction has been widely utilized, and many deep learning-based
methods have been developed in recent years. Although promising results have
been achieved, most existing methods require fully-sampled reference data for
training the deep learning models. Unfortunately, fully-sampled MRI data are
difficult if not impossible to obtain in real-world applications. To address
this issue, we propose a data refinement framework for self-supervised MR image
reconstruction. Specifically, we first analyze the reason of the performance
gap between self-supervised and supervised methods and identify that the bias
in the training datasets between the two is one major factor. Then, we design
an effective self-supervised training data refinement method to reduce this
data bias. With the data refinement, an enhanced self-supervised MR image
reconstruction framework is developed to prompt accurate MR imaging. We
evaluate our method on an in-vivo MRI dataset. Experimental results show that
without utilizing any fully sampled MRI data, our self-supervised framework
possesses strong capabilities in capturing image details and structures at high
acceleration factors.
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