Enhancing HARDI Reconstruction from Undersampled Data Via Multi-Context and Feature Inter-Dependency GAN

Ranjeet Ranjan Jha, Hritik Gupta, S. Pathak, W. Schneider, B. V. R. Kumar, A. Bhavsar, A. Nigam
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引用次数: 7

Abstract

In addition to the more traditional diffusion tensor imaging (DTI), over time, reconstruction techniques like HARDI have been proposed, which have a comparatively higher scanning time due to increased measurements, but are significantly better in the estimation of fiber structures. In order to make HARDI-based analysis faster, we propose an approach to reconstruct more HARDI volumes in q-space. The proposed GAN-based architecture leverages several modules, including a multi-context module, feature inter-dependencies module along-with numerous losses such as L1, adversarial, and total variation loss, to learn the transformation. The method is backed by some encouraging quantitative and visual results.
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基于多上下文和特征互依赖GAN的欠采样数据HARDI重构
除了更传统的扩散张量成像(DTI),随着时间的推移,已经提出了像HARDI这样的重建技术,由于测量量的增加,扫描时间相对较长,但在估计纤维结构方面明显更好。为了使基于HARDI的分析更快,我们提出了一种在q空间中重构更多HARDI体积的方法。提出的基于gan的体系结构利用多个模块,包括多上下文模块、特征相互依赖模块以及大量损失(如L1、对抗性和总变异损失)来学习转换。该方法得到了一些令人鼓舞的定量和可视化结果的支持。
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