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DFUSNN:用于并行磁共振成像重建的零-shot 双域融合无监督神经网络。

DFUSNN: zero-shot dual-domain fusion unsupervised neural network for parallel MRI reconstruction.

机构信息

Faculty of Information Engineering and Automation, Kunming University of Science and Technology, Kunming 650500, People's Republic of China.

Department of Hepatobiliary Surgery, First People's Hospital of Yunnan Province, Kunming 650030, People's Republic of China.

出版信息

Phys Med Biol. 2024 May 10;69(10). doi: 10.1088/1361-6560/ad3dbc.

DOI:10.1088/1361-6560/ad3dbc
PMID:38604186
Abstract

. Recently, deep learning models have been used to reconstruct parallel magnetic resonance (MR) images from undersampled k-space data. However, most existing approaches depend on large databases of fully sampled MR data for training, which can be challenging or sometimes infeasible to acquire in certain scenarios. The goal is to develop an effective alternative for improved reconstruction quality that does not rely on external training datasets.. We introduce a novel zero-shot dual-domain fusion unsupervised neural network (DFUSNN) for parallel MR imaging reconstruction without any external training datasets. We employ the Noise2Noise (N2N) network for the reconstruction in the k-space domain, integrate phase and coil sensitivity smoothness priors into the k-space N2N network, and use an early stopping criterion to prevent overfitting. Additionally, we propose a dual-domain fusion method based on Bayesian optimization to enhance reconstruction quality efficiently.. Simulation experiments conducted on three datasets with different undersampling patterns showed that the DFUSNN outperforms all other competing unsupervised methods and the one-shot Hankel-k-space generative model (HKGM). The DFUSNN also achieves comparable results to the supervised Deep-SLR method.. The novel DFUSNN model offers a viable solution for reconstructing high-quality MR images without the need for external training datasets, thereby overcoming a major hurdle in scenarios where acquiring fully sampled MR data is difficult.

摘要

最近,深度学习模型已被用于从欠采样 k 空间数据重建并行磁共振(MR)图像。然而,大多数现有的方法都依赖于大量完全采样的 MR 数据的数据库进行训练,这在某些情况下可能具有挑战性,甚至有时是不可行的。目标是开发一种有效的替代方法,以提高重建质量,而不依赖外部训练数据集。

我们提出了一种新颖的零样本双域融合无监督神经网络(DFUSNN),用于在没有任何外部训练数据集的情况下进行并行 MR 成像重建。我们在 k 空间域中使用 Noise2Noise(N2N)网络进行重建,将相位和线圈灵敏度平滑先验集成到 k 空间 N2N 网络中,并使用提前停止准则来防止过拟合。此外,我们提出了一种基于贝叶斯优化的双域融合方法,以有效地提高重建质量。

在三个具有不同欠采样模式的数据集上进行的仿真实验表明,DFUSNN 优于所有其他竞争的无监督方法和单次汉克尔 k 空间生成模型(HKGM)。DFUSNN 的结果也与监督的 Deep-SLR 方法相当。

新型 DFUSNN 模型提供了一种可行的解决方案,可在无需外部训练数据集的情况下重建高质量的 MR 图像,从而克服了在获取完全采样的 MR 数据困难的情况下的一个主要障碍。

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