A UNIFIED CONDITIONAL DISENTANGLEMENT FRAMEWORK FOR MULTIMODAL BRAIN MR IMAGE TRANSLATION.

Xiaofeng Liu, Fangxu Xing, Georges El Fakhri, Jonghye Woo
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引用次数: 24

Abstract

Multimodal MRI provides complementary and clinically relevant information to probe tissue condition and to characterize various diseases. However, it is often difficult to acquire sufficiently many modalities from the same subject due to limitations in study plans, while quantitative analysis is still demanded. In this work, we propose a unified conditional disentanglement framework to synthesize any arbitrary modality from an input modality. Our framework hinges on a cycle-constrained conditional adversarial training approach, where it can extract a modality-invariant anatomical feature with a modality-agnostic encoder and generate a target modality with a conditioned decoder. We validate our framework on four MRI modalities, including T1-weighted, T1 contrast enhanced, T2-weighted, and FLAIR MRI, from the BraTS'18 database, showing superior performance on synthesis quality over the comparison methods. In addition, we report results from experiments on a tumor segmentation task carried out with synthesized data.

多模态脑磁共振图像翻译的统一条件解纠缠框架。
多模态MRI提供了互补和临床相关的信息来探测组织状况和表征各种疾病。然而,由于研究计划的限制,往往很难从同一学科获得足够多的模式,而定量分析仍然是必要的。在这项工作中,我们提出了一个统一的条件解纠缠框架,从输入模态合成任意模态。我们的框架依赖于循环约束条件对抗训练方法,其中它可以使用模态不可知编码器提取模态不变的解剖特征,并使用条件解码器生成目标模态。我们在BraTS’18数据库中的四种MRI模式上验证了我们的框架,包括T1加权、T1对比度增强、t2加权和FLAIR MRI,显示出比比较方法更优越的合成质量。此外,我们报告了用合成数据进行肿瘤分割任务的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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