欠采样
插值(计算机图形学)
先验概率
平滑度
人工智能
算法
迭代重建
计算机科学
人工神经网络
数学
图像(数学)
数学分析
贝叶斯概率
作者
Zhuo‐Xu Cui,Sen Jia,Chentao Cao,Qingyong Zhu,Congcong Liu,Zhilang Qiu,Yuanyuan Liu,Jing Cheng,Haifeng Wang,Yanjie Zhu,Dong Liang
标识
DOI:10.1016/j.media.2023.102877
摘要
Recently, untrained neural networks (UNNs) have shown satisfactory performances for MR image reconstruction on random sampling trajectories without using additional full-sampled training data. However, the existing UNN-based approaches lack the modeling of physical priors, resulting in poor performance in some common scenarios (e.g., partial Fourier (PF), regular sampling, etc.) and the lack of theoretical guarantees for reconstruction accuracy. To bridge this gap, we propose a safeguarded k-space interpolation method for MRI using a specially designed UNN with a tripled architecture driven by three physical priors of the MR images (or k-space data), including transform sparsity, coil sensitivity smoothness, and phase smoothness. We also prove that the proposed method guarantees tight bounds for interpolated k-space data accuracy. Finally, ablation experiments show that the proposed method can characterize the physical priors of MR images well. Additionally, experiments show that the proposed method consistently outperforms traditional parallel imaging methods and existing UNNs, and is even competitive against supervised-trained deep learning methods in PF and regular undersampling reconstruction.
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