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Iterative deformable finite element model for nonrigid 3D PET/MRI breast image registration.

机译:用于非刚性3D PET / MRI乳房图像配准的迭代可变形有限元模型。

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A new nonrigid 3D medical breast-image registration approach that relies on a finite element method (FEM) and a set of fiducial skin markers (FSMs) placed on the breast surface is presented. This method can be applied for both intra- and intermodal breast image registration. The registration model consists of two steps. In the first step, the locations and displacements of corresponding FSMs observed in both moving and target volumes are determined, and then FEM is used to distribute the FSM displacements linearly over the entire breast volume. The FEM model relies on the analogy between the Cartesian components of the displacement field, and a temperature field in steady state heat transfer (SSHT) in solids. This analogy is valid because the displacement field components in the x, y, and z directions and the temperature field in SSHT can both be modeled using Laplace's equation. The problem can thus be solved via standard heat-conduction FEM software, with arbitrary conductivity of surface elements set much higher than that of volume elements. After determining the displacements at all nodes, the moving breast volume is registered to the target breast volume using an image-warping algorithm. In the second step, to correct for any residual surface misregistration in areas away from FSMs, displacements are estimated for a large number of corresponding surface points on the moving and the target breast images, already aligned in 3D, and our SSHT FEM model and the warping algorithm are applied again.; Resulting registered images have been analyzed using both qualitative and quantitative methods. Three different qualitative similarity estimates named the isoprojected surface similarity (ISS), the normalized polar surface similarity (NPSS), and the z-axis surface similarity (ZSS) were implemented. Convergence and sensitivity analyses were performed via target registration error studies. The performance of our method was also evaluated quantitatively by applying intensity based similarity measures including: the normalized mutual information (NMI), the normalized correlation coefficient (NCC) and the sum of absolute valued differences (SAVD) before and after applications of the method. Our results indicate that the method yields excellent performance with target registration errors comparable with pertinent imaging system spatial resolution.
机译:提出了一种新的非刚性3D医学乳房图像配准方法,该方法依赖于有限元方法(FEM)和在乳房表面放置的一组基准皮肤标记(FSM)。该方法可以应用于模内和模态乳房图像配准。注册模型包括两个步骤。第一步,确定在移动和目标体积中观察到的相应FSM的位置和位移,然后使用FEM将FSM位移线性分布在整个乳房体积上。 FEM模型依赖于位移场的笛卡尔分量与固体中稳态传热(SSHT)的温度场之间的类比。这个类比是有效的,因为可以使用拉普拉斯方程对x,y和z方向上的位移场分量以及SSHT中的温度场进行建模。因此,可以通过标准的导热FEM软件解决该问题,将表面元素的任意电导率设置为远高于体积元素的电导率。确定所有节点的位移后,使用图像变形算法将移动的乳房体积与目标乳房体积对齐。在第二步中,要校正远离FSM的区域中任何残留的表面重合失调,请针对已经在3D模式下对齐的运动和目标乳房图像以及我们的SSHT FEM模型和再次应用翘曲算法。已使用定性和定量方法对所得的配准图像进行了分析。实现了三个不同的定性相似性估计,分别称为等投影表面相似性(ISS),归一化极性表面相似性(NPSS)和z轴表面相似性(ZSS)。通过目标配准误差研究进行了收敛性和敏感性分析。还通过应用基于强度的相似性度量对我们的方法的性能进行了定量评估,这些相似性度量包括:应用该方法前后的归一化互信息(NMI),归一化相关系数(NCC)和绝对值差总和(SAVD)。我们的结果表明,该方法具有与相关成像系统空间分辨率可比的目标配准误差,性能极佳。

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