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首页> 外文期刊>IEEE Transactions on Medical Imaging >Compensating for intraoperative soft-tissue deformations using incomplete surface data and finite elements
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Compensating for intraoperative soft-tissue deformations using incomplete surface data and finite elements

机译:使用不完整的表面数据和有限元补偿术中软组织变形

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摘要

Image-guided liver surgery requires the ability to identify and compensate for soft tissue deformation in the organ. The predeformed state is represented as a complete three-dimensional surface of the organ, while the intraoperative data is a range scan point cloud acquired from the exposed liver surface. The first step is to rigidly align the coordinate systems of the intraoperative and preoperative data. Most traditional rigid registration methods minimize an error metric over the entire data set. In this paper, a new deformation-identifying rigid registration (DIRR) is reported that identifies and aligns minimally deformed regions of the data using a modified closest point distance cost function. Once a rigid alignment has been established, deformation is accounted for using a linearly elastic finite element model (FEM) and implemented using an incremental framework to resolve geometric nonlinearities. Boundary conditions for the incremental formulation are generated from intraoperatively acquired range scan surfaces of the exposed liver surface. A series of phantom experiments is presented to assess the fidelity of the DIRR and the combined DIRR/FEM approaches separately. The DIRR approach identified deforming regions in 90% of cases under conditions of realistic surgical exposure. With respect to the DIRR/FEM algorithm, subsurface target errors were correctly located to within 4 mm in phantom experiments.
机译:图像引导的肝脏手术需要能够识别和补偿器官中软组织变形的能力。预先变形的状态表示为器官的完整三维表面,而术中数据是从暴露的肝脏表面获取的范围扫描点云。第一步是严格对齐术中和术前数据的坐标系。大多数传统的刚性套准方法都会使整个数据集的错误度量最小化。在本文中,报道了一种新的变形识别刚性配准(DIRR),它使用修正的最近点距离成本函数来识别和对齐数据的最小变形区域。一旦建立了刚性对齐,就可以使用线性弹性有限元模型(FEM)来解决变形问题,并使用增量框架来解决几何非线性问题。从术中采集的暴露肝脏表面的范围扫描表面产生增量制剂的边界条件。提出了一系列的幻象实验来分别评估DIRR的保真度和组合的DIRR / FEM方法。 DIRR方法在实际的手术暴露条件下确定了90%的病例中的变形区域。关于DIRR / FEM算法,在幻像实验中,将地下目标误差正确地定位在4 mm以内。

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