使用三维周期一致生成对抗网络的MRI超分辨率

Huy-Khoi Do, D. Helbert, P. Bourdon, Mathieu Naudin, C. Guillevin, R. Guillevin
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引用次数: 3

摘要

高分辨率磁共振成像(MRI)为临床应用诊断提供了详细的解剖信息。然而,由于物理、技术和经济考虑的限制,目前的mri是在临床分辨率下获得的。另一方面,现有的方法需要配对的MRI图像作为训练数据,当高分辨率和低分辨率图像之间的对齐需要手动实现时,很难在现有的数据集上获得训练数据。在项目范围内,我们的目标是提供一个端到端的系统来解决3D MRI的超分辨率方法。我们提出的方法源于最近的神经网络发展,并且不需要配对数据来进行有效的训练。通过整合不同的模型和分离的功能,我们的3D超分辨率CycleGAN (SRCycleGAN)在MRI体积上取得了令人信服的结果。输出与真值接近,在不同的比例因子下显示出较低的失真。此外,我们还将我们的方法与该领域的其他基于gan的方法进行了比较,以突出性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MRI super-resolution using 3D cycle-consistent generative adversarial network
High-resolution magnetic resonance imaging (MRI) provides detailed anatomical information critical for clinical application diagnosis. However, current MRIs are acquired at clinical resolutions due to the limit of physical, technological, and economic considerations. On the other hand, existing approaches require paired MRI images as training data, which are difficult to obtain on existing datasets when the alignment between high and low-resolution images has to be implemented manually.Within the scope of project, we aim to provide an end-to-end system to solve the super-resolution method on 3D MRI. Our proposed method derives from recent neural network developments and does not require paired data for efficient training. By integrating different models with separated functions, our 3D super-resolution CycleGAN (SRCycleGAN) achieved compelling results on MRI volumes. The output is close with ground-truth, showing a low distortion on different scaling factors. Besides, we also compare our method against different GAN-based methods in this field to highlight the performance.
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