DUAL-CYCLE CONSTRAINED BIJECTIVE VAE-GAN FOR TAGGED-TO-CINE MAGNETIC RESONANCE IMAGE SYNTHESIS.

Xiaofeng Liu, Fangxu Xing, Jerry L Prince, Aaron Carass, Maureen Stone, Georges El Fakhri, Jonghye Woo
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Abstract

Tagged magnetic resonance imaging (MRI) is a widely used imaging technique for measuring tissue deformation in moving organs. Due to tagged MRI's intrinsic low anatomical resolution, another matching set of cine MRI with higher resolution is sometimes acquired in the same scanning session to facilitate tissue segmentation, thus adding extra time and cost. To mitigate this, in this work, we propose a novel dual-cycle constrained bijective VAE-GAN approach to carry out tagged-to-cine MR image synthesis. Our method is based on a variational autoencoder backbone with cycle reconstruction constrained adversarial training to yield accurate and realistic cine MR images given tagged MR images. Our framework has been trained, validated, and tested using 1,768, 416, and 1,560 subject-independent paired slices of tagged and cine MRI from twenty healthy subjects, respectively, demonstrating superior performance over the comparison methods. Our method can potentially be used to reduce the extra acquisition time and cost, while maintaining the same workflow for further motion analyses.

用于标记到线性磁共振图像合成的双周期受限投射式 vae-gan。
标记磁共振成像(MRI)是一种广泛应用的成像技术,用于测量移动器官的组织变形。由于标记磁共振成像本身的解剖分辨率较低,有时需要在同一扫描过程中获取另一套分辨率更高的匹配电影磁共振成像来进行组织分割,从而增加了额外的时间和成本。为了缓解这一问题,我们在这项工作中提出了一种新颖的双周期约束双目标 VAE-GAN 方法,用于进行标记到 cine MR 图像合成。我们的方法基于变异自动编码器骨干和周期重构约束对抗训练,可在给定标记 MR 图像的情况下生成准确、逼真的 cine MR 图像。我们的框架分别使用来自 20 名健康受试者的 1,768 张、416 张和 1,560 张与受试者无关的标记和 cine MRI 成对切片进行了训练、验证和测试,结果表明其性能优于比较方法。我们的方法可用于减少额外的采集时间和成本,同时保持进一步运动分析的工作流程不变。
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