首页> 外文会议>Image Processing pt.1; Progress in Biomedical Optics and Imaging; vol.7 no.30 >Nonrigid Registration Using Regularization that Accommodates Local Tissue Rigidity
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Nonrigid Registration Using Regularization that Accommodates Local Tissue Rigidity

机译:使用适应本地组织刚性的正则化进行非刚性配准

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Regularized nonrigid medical image registration algorithms usually estimate the deformation by minimizing a cost function, consisting of a similarity measure and a penalty term that discourages "unreasonable" deformations. Conventional regularization methods enforce homogeneous smoothness properties of the deformation field; less work has been done to incorporate tissue-type-specific elasticity information. Yet ignoring the elasticity differences between tissue types can result in non-physical results, such as bone warping. Bone structures should move rigidly (locally), unlike the more elastic deformation of soft issues. Existing solutions for this problem either treat different regions of an image independently, which requires precise segmentation and incurs boundary issues; or use an empirical spatial varying "filter" to "correct" the deformation field, which requires the knowledge of a stiffness map and departs from the cost-function formulation. We propose a new approach to incorporate tissue rigidity information into the nonrigid registration problem, by developing a space variant regularization function that encourages the local Jacobian of the deformation to be a nearly orthogonal matrix in rigid image regions, while allowing more elastic deformations elsewhere. For the case of X-ray CT data, we use a simple monotonic increasing function of the CT numbers (in HU) as a "rigidity index" since bones typically have the highest CT numbers. Unlike segmentation-based methods, this approach is flexible enough to account for partial volume effects. Results using a B-spline deformation parameterization illustrate that the proposed approach improves registration accuracy in inhale-exhale CT scans with minimal computational penalty.
机译:正规化的非刚性医学图像配准算法通常通过最小化成本函数来估计变形,该成本函数由相似度和阻止“不合理”变形的惩罚项组成。常规的正则化方法强制变形场具有均匀的平滑性。纳入组织类型特定的弹性信息的工作较少。但是,忽略组织类型之间的弹性差异可能会导致非物理结果,例如骨骼变形。骨骼结构应刚性(局部)移动,这与软性问题的弹性变形不同。针对该问题的现有解决方案或者独立地处理图像的不同区域,这需要精确的分割并且引起边界问题。或使用经验空间变化的“过滤器”来“校正”变形场,这需要了解刚度图并偏离成本函数公式。我们提出了一种新的方法,通过开发空间变量正则化函数将组织刚度信息合并到非刚性配准问题中,该函数鼓励变形的局部雅可比矩阵在刚性图像区域中变为近似正交的矩阵,同时允许其他地方进行更多的弹性变形。对于X射线CT数据,由于骨骼通常具有最高的CT数,因此我们使用CT数(在HU中)的简单单调递增函数作为“刚性指标”。与基于分段的方法不同,此方法足够灵活以解决部分体积的影响。使用B样条变形参数化的结果表明,所提出的方法以最小的计算损失提高了呼气CT扫描中的配准精度。

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