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Phase Vector Incompressible Registration Algorithm for Motion Estimation From Tagged Magnetic Resonance Images

机译:用于标记磁共振图像的运动估计的相位矢量不可压缩配准算法

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摘要

Tagged magnetic resonance imaging has been used for decades to observe and quantify motion and strain of deforming tissue. It is challenging to obtain 3-D motion estimates due to a tradeoff between image slice density and acquisition time. Typically, interpolation methods are used either to combine 2-D motion extracted from sparse slice acquisitions into 3-D motion or to construct a dense volume from sparse acquisitions before image registration methods are applied. This paper proposes a new phase-based 3-D motion estimation technique that first computes harmonic phase volumes from interpolated tagged slices and then matches them using an image registration framework. The approach uses several concepts from diffeomorphic image registration with a key novelty that defines a symmetric similarity metric on harmonic phase volumes from multiple orientations. The material property of harmonic phase solves the aperture problem of optical flow and intensity-based methods and is robust to tag fading. A harmonic magnitude volume is used in enforcing incompressibility in the tissue regions. The estimated motion fields are dense, incompressible, diffeomorphic, and inverse-consistent at a 3-D voxel level. The method was evaluated using simulated phantoms, human brain data in mild head accelerations, human tongue data during speech, and an open cardiac data set. The method shows comparable accuracy to three existing methods while demonstrating low computation time and robustness to tag fading and noise.
机译:标记磁共振成像已经使用了几十年,以观察和量化变形组织的运动和应变。由于图像切片密度和采集时间之间需要权衡,因此获得3D运动估计值具有挑战性。通常,使用插值方法将从稀疏切片采集中提取的2D运动组合为3D运动,或者在应用图像配准方法之前从稀疏采集中构造密集体积。本文提出了一种新的基于相位的3D运动估计技术,该技术首先从插值的标记切片中计算谐波相位量,然后使用图像配准框架对其进行匹配。该方法使用了来自微分图像配准的几个概念,并具有一个关键的新颖性,该新颖性定义了来自多个方向的谐波相体积的对称相似性度量。谐波相的材料特性解决了光流和基于强度的方法的孔径问题,并且对标签衰落具有鲁棒性。谐波量用于增强组织区域的不可压缩性。估计的运动场是密集的,不可压缩的,微晶的,并且在3-D体素水平上是反一致的。使用模拟体模,轻微头部加速时的人脑数据,语音过程中的人舌数据以及开放的心脏数据集对方法进行了评估。该方法显示出与三种现有方法相当的精度,同时证明了较低的计算时间以及对标签衰落和噪声的鲁棒性。

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