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多对比度 MRI 图像合成的条件生成对抗网络。

Image Synthesis in Multi-Contrast MRI With Conditional Generative Adversarial Networks.

出版信息

IEEE Trans Med Imaging. 2019 Oct;38(10):2375-2388. doi: 10.1109/TMI.2019.2901750. Epub 2019 Feb 26.

DOI:10.1109/TMI.2019.2901750
PMID:30835216
Abstract

Acquiring images of the same anatomy with multiple different contrasts increases the diversity of diagnostic information available in an MR exam. Yet, the scan time limitations may prohibit the acquisition of certain contrasts, and some contrasts may be corrupted by noise and artifacts. In such cases, the ability to synthesize unacquired or corrupted contrasts can improve diagnostic utility. For multi-contrast synthesis, the current methods learn a nonlinear intensity transformation between the source and target images, either via nonlinear regression or deterministic neural networks. These methods can, in turn, suffer from the loss of structural details in synthesized images. Here, in this paper, we propose a new approach for multi-contrast MRI synthesis based on conditional generative adversarial networks. The proposed approach preserves intermediate-to-high frequency details via an adversarial loss, and it offers enhanced synthesis performance via pixel-wise and perceptual losses for registered multi-contrast images and a cycle-consistency loss for unregistered images. Information from neighboring cross-sections are utilized to further improve synthesis quality. Demonstrations on T- and T- weighted images from healthy subjects and patients clearly indicate the superior performance of the proposed approach compared to the previous state-of-the-art methods. Our synthesis approach can help improve the quality and versatility of the multi-contrast MRI exams without the need for prolonged or repeated examinations.

摘要

获取同一解剖结构的多种不同对比图像可以增加磁共振检查中可用的诊断信息量。然而,扫描时间的限制可能会阻止某些对比的采集,并且某些对比可能会受到噪声和伪影的干扰。在这种情况下,能够合成未采集或受干扰的对比可以提高诊断效用。对于多对比度合成,当前的方法通过非线性回归或确定性神经网络学习源图像和目标图像之间的非线性强度变换。这些方法反过来可能会导致合成图像中结构细节的丢失。在本文中,我们提出了一种新的基于条件生成对抗网络的多对比度 MRI 合成方法。所提出的方法通过对抗损失保留中频到高频细节,并通过像素级和感知损失以及未注册图像的循环一致性损失来提高合成性能,用于注册的多对比度图像。利用相邻横截面的信息进一步提高合成质量。来自健康受试者和患者的 T 加权和 T 加权图像的演示清楚地表明,与之前的最先进方法相比,所提出的方法具有更好的性能。我们的合成方法可以帮助提高多对比度 MRI 检查的质量和多功能性,而无需进行长时间或重复的检查。

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