Improved Robustness in Water-Fat Separation in MRI using Conditional Adversarial Networks

Chen Shen, H. She, Yiping P. Du
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引用次数: 1

Abstract

Water-fat separation is a post-processing method to obtain water/fat only images and parametric maps from multi-echo magnetic resonance (MR) images. Due to multi-parametric analytic models and optimization algorithm, the water-fat separation problem is complicated and time-consuming to solve. Traditional model-based techniques require a known field map to make the problem becomes “almost linear”, which results in the dependence on the accuracy of field map estimation and the decrease of computing efficiency. In this study, we proposed a deep learning based method to solve the inverse problem and simultaneously obtain the water/fat images, field map and R2* map without iteration process and field map estimation in advance. Conditional GAN was utilized in this work to preserve the structural details and ground truth was obtained using a graph cut method. The results showed that our method had a more robust performance and higher structural similarity in water-fat separation compared to U-Net based method. The proposed deep learning method is field map free and effective to separate fat/water.
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基于条件对抗网络的MRI水脂分离鲁棒性改进
水脂分离是一种从多回波磁共振(MR)图像中获得仅水/脂肪图像和参数图的后处理方法。由于采用多参数分析模型和优化算法,水脂分离问题求解复杂且耗时长。传统的基于模型的技术需要已知的场图才能使问题变得“几乎线性”,这导致了对场图估计精度的依赖和计算效率的降低。在本研究中,我们提出了一种基于深度学习的方法来解决逆问题,同时获得水/脂肪图像、场图和R2*图,而无需迭代过程和预先进行场图估计。本研究利用条件GAN来保留结构细节,并利用图切方法获得地面真值。结果表明,与基于U-Net的方法相比,该方法在水脂分离中具有更强的鲁棒性和更高的结构相似性。所提出的深度学习方法不需要现场图,可以有效地分离脂肪/水。
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