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Robust surface registration using salient anatomical features in image-guided liver surgery

机译:使用突出的图像引导肝脏手术中的突出的解剖学特征的鲁棒表面注册

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A successful surface based image-to-physical space registration in image-guided liver surgery (IGLS) is critical to provide reliable guidance information and pertinent surface displacement data for use in deformation correction algorithms. The current protocol used to perform the image-to-physical space registration involves an initial pose estimation provided by a point based registration of anatomical landmarks identifiable in both the preoperative tomograms and the intraoperative presentation. The surface based registration is then performed via a traditional iterative closest point algorithm between the preoperative liver surface, segmented from the tomographic image set, and an intra-operatively acquired point cloud of the liver surface provided by a laser range scanner. Using the aforementioned method, the registration accuracy in IGLS can be compromised by poor initial pose estimation as well as tissue deformation due to the liver mobilization and packing procedure performed prior to tumor resection. In order to increase the robustness of the current surface-based registration method used in IGLS, we propose the incorporation of salient anatomical features, identifiable in both the preoperative image sets and intra-operative liver surface data, to aid in the initial pose estimation and play a more significant role in the surface based registration via a novel weighting scheme. The proposed surface registration method will be compared with the traditional technique using both phantom and clinically acquired data. Additionally, robustness studies will be performed to demonstrate the ability of the proposed method to converge to reasonable solutions even under conditions of large deformation and poor initial alignment.
机译:图像引导肝脏手术(IGLS)中的基于成功的表面图像到物理空间注册对于提供用于变形校正算法的可靠的引导信息和相关表面位移数据至关重要。用于执行图像到物理空间登记的当前协议涉及由术前折断层标准和术中呈现的基于解剖标记的点登记提供的初始姿势估计。然后通过从断层图像集分段的术前肝脏表面之间的传统迭代最接近点算法和由激光范围扫描仪提供的肝脏表面的可操作地获取的点云进行表面基于迭代的最接近点算法。使用上述方法,IGL中的登记精度可以通过较差的初始姿势估计以及由于肝脏切除前之前进行的肝脏动员和包装程序而受到组织变形。为了增加IGL中使用的基于表面的配准法的鲁棒性,我们提出掺入突出的解剖学特征,在术前图像集和术中肝脏表面数据中识别,以帮助初始姿势估计和通过新颖的加权方案在表面注册中发挥更大的作用。使用幻像和临床获取数据将所提出的表面配准法与传统技术进行比较。此外,将进行鲁棒性研究,以证明所提出的方法在大变形和初始对准差的条件下将其融合到合理解决方案的能力。

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