Plantefève Rosalie, Peterlik Igor, Haouchine Nazim, Cotin Stéphane
Altran and Inria (Mimesis Team), Strasbourg, France.
Institute of Computer Science, Masaryk University, Brno, Czech Republic.
Ann Biomed Eng. 2016 Jan;44(1):139-53. doi: 10.1007/s10439-015-1419-z. Epub 2015 Aug 22.
During the minimally-invasive liver surgery, only the partial surface view of the liver is usually provided to the surgeon via the laparoscopic camera. Therefore, it is necessary to estimate the actual position of the internal structures such as tumors and vessels from the pre-operative images. Nevertheless, such task can be highly challenging since during the intervention, the abdominal organs undergo important deformations due to the pneumoperitoneum, respiratory and cardiac motion and the interaction with the surgical tools. Therefore, a reliable automatic system for intra-operative guidance requires fast and reliable registration of the pre- and intra-operative data. In this paper we present a complete pipeline for the registration of pre-operative patient-specific image data to the sparse and incomplete intra-operative data. While the intra-operative data is represented by a point cloud extracted from the stereo-endoscopic images, the pre-operative data is used to reconstruct a biomechanical model which is necessary for accurate estimation of the position of the internal structures, considering the actual deformations. This model takes into account the patient-specific liver anatomy composed of parenchyma, vascularization and capsule, and is enriched with anatomical boundary conditions transferred from an atlas. The registration process employs the iterative closest point technique together with a penalty-based method. We perform a quantitative assessment based on the evaluation of the target registration error on synthetic data as well as a qualitative assessment on real patient data. We demonstrate that the proposed registration method provides good results in terms of both accuracy and robustness w.r.t. the quality of the intra-operative data.
在微创肝脏手术中,通常仅通过腹腔镜摄像头向外科医生提供肝脏的部分表面视图。因此,有必要从术前图像估计肿瘤和血管等内部结构的实际位置。然而,这项任务极具挑战性,因为在手术过程中,腹部器官会因气腹、呼吸和心脏运动以及与手术工具的相互作用而发生显著变形。因此,一个可靠的术中引导自动系统需要对术前和术中数据进行快速可靠的配准。在本文中,我们提出了一个完整的流程,用于将术前患者特异性图像数据配准到稀疏且不完整的术中数据。术中数据由从立体内镜图像中提取的点云表示,而术前数据用于重建生物力学模型,考虑到实际变形,这对于准确估计内部结构的位置是必要的。该模型考虑了由实质、血管化和包膜组成的患者特异性肝脏解剖结构,并通过从图谱转移的解剖边界条件进行了充实。配准过程采用迭代最近点技术以及基于惩罚的方法。我们基于对合成数据上目标配准误差的评估进行定量评估,并对真实患者数据进行定性评估。我们证明,所提出的配准方法在准确性和鲁棒性方面相对于术中数据质量都取得了良好的结果。