Institute of Computer Graphics and Vision, Graz University of Technology, Graz, Austria.
Center for Biomedical Imaging, Department of Radiology, NYU School of Medicine, New York, New York, USA.
Magn Reson Med. 2018 Jun;79(6):3055-3071. doi: 10.1002/mrm.26977. Epub 2017 Nov 8.
To allow fast and high-quality reconstruction of clinical accelerated multi-coil MR data by learning a variational network that combines the mathematical structure of variational models with deep learning.
Generalized compressed sensing reconstruction formulated as a variational model is embedded in an unrolled gradient descent scheme. All parameters of this formulation, including the prior model defined by filter kernels and activation functions as well as the data term weights, are learned during an offline training procedure. The learned model can then be applied online to previously unseen data.
The variational network approach is evaluated on a clinical knee imaging protocol for different acceleration factors and sampling patterns using retrospectively and prospectively undersampled data. The variational network reconstructions outperform standard reconstruction algorithms, verified by quantitative error measures and a clinical reader study for regular sampling and acceleration factor 4.
Variational network reconstructions preserve the natural appearance of MR images as well as pathologies that were not included in the training data set. Due to its high computational performance, that is, reconstruction time of 193 ms on a single graphics card, and the omission of parameter tuning once the network is trained, this new approach to image reconstruction can easily be integrated into clinical workflow. Magn Reson Med 79:3055-3071, 2018. © 2017 International Society for Magnetic Resonance in Medicine.
通过学习一种变分网络,将变分模型的数学结构与深度学习相结合,实现临床加速多线圈 MR 数据的快速高质量重建。
广义压缩感知重建被表述为变分模型,被嵌入到一个展开的梯度下降方案中。该公式的所有参数,包括由滤波器核和激活函数定义的先验模型以及数据项权重,都在离线训练过程中学习。然后可以将学习到的模型应用于以前未见过的数据。
变分网络方法在使用回顾性和前瞻性欠采样数据的不同加速因子和采样模式下,对临床膝关节成像方案进行了评估。变分网络重建的表现优于标准重建算法,通过定量误差测量和常规采样和加速因子 4 的临床读者研究进行了验证。
变分网络重建保留了磁共振图像的自然外观以及训练数据集未包含的病变。由于其具有较高的计算性能,即单个图形卡上的重建时间为 193ms,并且一旦训练完网络就可以省略参数调整,因此这种新的图像重建方法可以轻松集成到临床工作流程中。磁共振医学 79:3055-3071,2018。©2017 国际磁共振学会。