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Incompressible Phase Registration for Motion Estimation from Tagged Magnetic Resonance Images

机译:来自标记磁共振图像的运动估计的不可压缩相位注册

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Tagged magnetic resonance imaging has been used for decades to observe and quantify motion and strain of deforming tissue. Three-dimensional (3D) motion estimation has been challenging due to a tradeoff between slice density and acquisition time. Typically, sparse collections of tagged slices are processed to obtain two-dimensional motion, which are then combined into 3D motion using interpolation methods. This paper proposes a new method by reversing this process: first interpolating tagged slices and then directly estimating motion in 3D. We propose a novel image registration framework that uses the concept of diffeomorphic registration with a key novelty that defines a similarity metric involving the simultaneous use of three harmonic phase volumes. The other novel aspect is the use of the harmonic magnitude to enforce incompressibility in the tissue region. The final motion estimates are dense, incompressible, diffeomorphic, and invertible at a 3D voxel level. The approach was evaluated using simulated phantoms and human tongue motion data in speech. Compared with an existing method, it shows major advantages in reducing processing complexity, improving computation speed, allowing running motion calculations, and increasing noise robustness, while maintaining a good accuracy.
机译:标记的磁共振成像已用于几十年来观察和量化变形组织的运动和菌株。由于切片密度和采集时间之间的权衡,三维(3D)运动估计是挑战。通常,处理标记切片的稀疏集合以获得二维运动,然后使用插值方法将其组合成3D运动。本文通过反转此过程提出了一种新方法:首先插入标记的切片,然后直接估计3D的运动。我们提出了一种新颖的图像登记框架,该框架利用扩散的概念与微大晶体登记的概念,其密钥新颖性定义涉及同时使用三个谐波相体积的相似度量。另一个新颖方面是使用谐波大小来强制组织区域中的不可压缩性。最终的运动估计是致密的,不可压缩的,扩散晶体,在3D体素水平下可逆。使用模拟的幽灵和人舌运动数据在语音中评估该方法。与现有方法相比,它表明了降低加工复杂性,提高计算速度,允许运行运动计算的主要优点,并增加噪音鲁棒性,同时保持良好的准确性。

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