Clements Logan W, Chapman William C, Dawant Benoit M, Galloway Robert L, Miga Michael I
Department of Biomedical Engineering, Vanderbilt University, Box 351631, Station B, Nashville, Tennessee 37215, USA.
Med Phys. 2008 Jun;35(6):2528-40. doi: 10.1118/1.2911920.
A successful surface-based image-to-physical space registration in image-guided liver surgery (IGLS) is critical to provide reliable guidance information to surgeons 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 (ICP) algorithm between the preoperative liver surface, segmented from the tomographic image set, and an intraoperatively acquired point cloud of the liver surface provided by a laser range scanner. Using this more conventional method, the registration accuracy can be compromised by poor initial pose estimation as well as tissue deformation due to the laparotomy and liver mobilization 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 intraoperative 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. Examples of such salient anatomical features are the falciform groove region as well as the inferior ridge of the liver surface. In order to validate the proposed weighted patch registration method, the alignment results provided by the proposed algorithm using both single and multiple patch regions were compared with the traditional ICP method using six clinical datasets. Robustness studies were also performed using both phantom and clinical data to compare the resulting registrations provided by the proposed algorithm and the traditional method under conditions of varying initial pose. The results provided by the robustness trials and clinical registration comparisons suggest that the proposed weighted patch registration algorithm provides a more robust method with which to perform the image-to-physical space registration in IGLS. Furthermore, the implementation of the proposed algorithm during surgical procedures does not impose significant increases in computation or data acquisition times.
在图像引导肝脏手术(IGLS)中,成功实现基于表面的图像到物理空间配准对于为外科医生提供可靠的引导信息以及为变形校正算法提供相关表面位移数据至关重要。当前用于执行图像到物理空间配准的协议涉及通过基于术前断层扫描和术中呈现中均可识别的解剖标志点的配准来提供初始位姿估计。然后,通过传统的迭代最近点(ICP)算法在从断层图像集分割出的术前肝脏表面与激光测距扫描仪提供的术中获取的肝脏表面点云之间进行基于表面的配准。使用这种更传统的方法,配准精度可能会因初始位姿估计不佳以及肿瘤切除前进行的剖腹术和肝脏游离导致的组织变形而受到影响。为了提高IGLS中当前基于表面的配准方法的鲁棒性,我们建议纳入术前图像集和术中肝脏表面数据中均可识别的显著解剖特征,以辅助初始位姿估计,并通过一种新颖的加权方案在基于表面的配准中发挥更重要的作用。此类显著解剖特征的示例包括镰状沟区域以及肝脏表面的下嵴。为了验证所提出的加权面片配准方法,使用六个临床数据集将所提出算法使用单个和多个面片区域提供的对齐结果与传统ICP方法进行了比较。还使用体模和临床数据进行了鲁棒性研究,以比较所提出算法和传统方法在不同初始位姿条件下提供的配准结果。鲁棒性试验和临床配准比较提供的结果表明,所提出的加权面片配准算法为在IGLS中执行图像到物理空间配准提供了一种更鲁棒的方法。此外,在手术过程中实施所提出的算法不会显著增加计算或数据采集时间。