Paul Perrine, Morandi Xavier, Jannin Pierre
Institut National de la Santé et de la Recherche Médicale (INSERM), U746, Rennes F-35042, France.
IEEE Trans Inf Technol Biomed. 2009 Nov;13(6):976-83. doi: 10.1109/TITB.2009.2025373. Epub 2009 Jun 19.
Intraoperative brain deformations decrease accuracy in image-guided neurosurgery. Approaches to quantify these deformations based on 3-D reconstruction of cortectomy surfaces have been described and have shown promising results regarding the extrapolation to the whole brain volume using additional prior knowledge or sparse volume modalities. Quantification of brain deformations from surface measurement requires the registration of surfaces at different times along the surgical procedure, with different challenges according to the patient and surgical step. In this paper, we propose a new flexible surface registration approach for any textured point cloud computed by stereoscopic or laser range approach. This method includes three terms: the first term is related to image intensities, the second to Euclidean distance, and the third to anatomical landmarks automatically extracted and continuously tracked in the 2-D video flow. Performance evaluation was performed on both phantom and clinical cases. The global method, including textured point cloud reconstruction, had accuracy within 2 mm, which is the usual rigid registration error of neuronavigation systems before deformations. Its main advantage is to consider all the available data, including the microscope video flow with higher temporal resolution than previously published methods.
术中脑形变会降低图像引导神经外科手术的准确性。基于皮质切除术表面的三维重建来量化这些形变的方法已被描述,并且在使用额外的先验知识或稀疏体积模态外推至全脑体积方面已显示出有前景的结果。从表面测量来量化脑形变需要在手术过程中的不同时间点对表面进行配准,根据患者和手术步骤会面临不同挑战。在本文中,我们针对通过立体视觉或激光测距方法计算得到的任何带纹理的点云,提出了一种新的灵活表面配准方法。该方法包含三个项:第一项与图像强度有关,第二项与欧几里得距离有关,第三项与在二维视频流中自动提取并持续跟踪的解剖标志有关。在体模和临床病例上均进行了性能评估。包括带纹理点云重建在内的整体方法,其精度在2毫米以内,这是形变前神经导航系统通常的刚性配准误差。其主要优势在于考虑了所有可用数据,包括具有比先前发表的方法更高时间分辨率的显微镜视频流。