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Enhancing 4d Cardiac Mri Registration Network With A Motion Prior Learned From Coronary Cta

机译:增强4D心脏MRI登记网络,其动议从冠状动脉CTA学习之前

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Registration between phases in 4D cardiac MRI is essential for reconstructing high-quality anatomy and appreciating the dynamics. Complex sequential compartmental motion and heterogeneous image quality make it challenging to design regularization functionals in classic optimization settings. In this study, we propose to introduce a novel motion representation model (MRM) into an image registration network to impose spatially variant prior for cardiac motion. A set of highly representative deformation vector fields (DVFs) were generated from high-contrast CTA images. In the form of a convolutional auto-encoder, the MRM was trained to capture the spatial variant pattern of the DVF Jacobian. The CT-derived MRM was then incorporated into an unsupervised network to facilitate 4D MRI registration. Our method was evaluated on ten 4D MRI scans with multi-compartment manual segmentations and achieved 2.25 mm target registration errors (TRE) on left ventricle. Compared to networks without MRM, introduction of the MRM reduced TREs on two ventricles and pulmonary artery with statistical significance. Compared to the tuned SimpleElastix, our method achieved comparable results on all compartments without statistical significance, but with a much shorter registration time of 0.02 s.
机译:4D心脏MRI中的阶段之间的登记对于重建高质量解剖和欣赏动态至关重要。复杂的顺序隔间间运动和异构图像质量使其在经典优化设置中设计正则化功能挑战。在本研究中,我们建议将新颖运动表示模型(MRM)引入图像配准网络以在心动运动之前施加空间变体。从高对比度CTA图像生成一组高度代表性的变形矢量字段(DVF)。以卷积自动编码器的形式,MRM培训以捕获DVF雅可比的空间变体模式。然后将CT衍生的MRM掺入无监督的网络中以促进4D MRI注册。我们的方法是在十四的MRI扫描上评估了多室手动分割,并在左心室达到了2.25毫米的目标登记误差(TRE)。与没有MRM的网络相比,引入MRM在两个心室和肺动脉的统计学意义上的肺动脉减少。与调谐的单面速率相比,我们的方法在没有统计显着性的情况下实现了所有隔室的可比结果,但注册时间较短为0.02秒。

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