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An adaptive finite element method to cope with a large scale lung deformation in magnetic resonance images

机译:适应磁共振图像中大范围肺部变形的自适应有限元方法

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The purpose of this study is to present an adaptive deformable image registration method to improve the performance of a multi-resolution “demons” registration algorithm in handling large scale lung deformation observed in 4D-MR images. Specifically, a finite element method (FEM) was integrated with MR tagging information to correct registration errors in the lung region. The displacements of 349 tagged grids were calculated with an average of 3.5 cm. The mean error of the demons registration over the tags was 2.5 cm which was reduced to 0.7 cm by the FEM registration. The FEM-generated transformation was merged to the demons deformation map without introducing any discontinuity. This method can help correct deformable registration errors identified in the clinical setting.
机译:这项研究的目的是提出一种自适应可变形图像配准方法,以改善多分辨率“恶魔”配准算法在处理4D-MR图像中观察到的大规模肺部变形时的性能。具体而言,将有限元方法(FEM)与MR标签信息集成在一起,以纠正肺区域中的配准错误。计算了349个带标签的网格的位移,平均位移为3.5厘米。恶魔在标签上的平均注册错误为2.5 cm,通过FEM注册减少到0.7 cm。 FEM生成的变换被合并到恶魔变形图中,而不会引入任何不连续性。这种方法可以帮助纠正在临床环境中发现的可变形配准错误。

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