ARTORG Center for Biomedical Engineering Research, University of Bern, 3012 Bern, Switzerland.
IEEE Trans Biomed Eng. 2013 Apr;60(4):960-8. doi: 10.1109/TBME.2013.2241063. Epub 2013 Jan 18.
Image-guided microsurgery requires accuracies an order of magnitude higher than today's navigation systems provide. A critical step toward the achievement of such low-error requirements is a highly accurate and verified patient-to-image registration. With the aim of reducing target registration error to a level that would facilitate the use of image-guided robotic microsurgery on the rigid anatomy of the head, we have developed a semiautomatic fiducial detection technique. Automatic force-controlled localization of fiducials on the patient is achieved through the implementation of a robotic-controlled tactile search within the head of a standard surgical screw. Precise detection of the corresponding fiducials in the image data is realized using an automated model-based matching algorithm on high-resolution, isometric cone beam CT images. Verification of the registration technique on phantoms demonstrated that through the elimination of user variability, clinically relevant target registration errors of approximately 0.1 mm could be achieved.
图像引导微创手术需要比当前导航系统提供的精度高出一个数量级。实现如此低误差要求的关键步骤是进行高度准确和经过验证的患者到图像的配准。为了将目标注册误差降低到足以促进刚性头部的图像引导机器人微创手术的水平,我们开发了一种半自动基准点检测技术。通过在标准手术螺钉的头部实施机器人控制的触觉搜索,实现了对患者上基准点的自动力控制定位。使用高分辨率等距锥形束 CT 图像上的自动基于模型的匹配算法,实现了对图像数据中相应基准点的精确检测。在体模上对注册技术进行验证的结果表明,通过消除用户的可变性,可以实现大约 0.1 毫米的临床相关目标注册误差。