Markelj Primo, Tomazevic Dejan, Pernus Franjo, Likar Bo Tjan
University of Ljubljana, Faculty of Electrical Engineering, 1000 Ljubljana, Slovenia.
IEEE Trans Med Imaging. 2008 Dec;27(12):1704-14. doi: 10.1109/TMI.2008.923984.
One of the most important technical challenges in image-guided intervention is to obtain a precise transformation between the intrainterventional patient's anatomy and corresponding preinterventional 3-D image on which the intervention was planned. This goal can be achieved by acquiring intrainterventional 2-D images and matching them to the preinterventional 3-D image via 3-D/2-D image registration. A novel 3-D/2-D registration method is proposed in this paper. The method is based on robustly matching 3-D preinterventional image gradients and coarsely reconstructed 3-D gradients from the intrainterventional 2-D images. To improve the robustness of finding the correspondences between the two sets of gradients, hypothetical correspondences are searched for along normals to anatomical structures in 3-D images, while the final correspondences are established in an iterative process, combining the robust random sample consensus algorithm (RANSAC) and a special gradient matching criterion function. The proposed method was evaluated using the publicly available standardized evaluation methodology for 3-D/2-D registration, consisting of 3-D rotational X-ray, computed tomography, magnetic resonance (MR), and 2-D X-ray images of two spine segments, and standardized evaluation criteria. In this way, the proposed method could be objectively compared to the intensity, gradient, and reconstruction-based registration methods. The obtained results indicate that the proposed method performs favorably both in terms of registration accuracy and robustness. The method is especially superior when just a few X-ray images and when MR preinterventional images are used for registration, which are important advantages for many clinical applications.
图像引导介入中最重要的技术挑战之一是在介入过程中患者的解剖结构与介入前计划干预所依据的相应三维图像之间获得精确的变换。通过获取介入过程中的二维图像并通过三维/二维图像配准将它们与介入前的三维图像进行匹配,可以实现这一目标。本文提出了一种新颖的三维/二维配准方法。该方法基于稳健地匹配三维介入前图像梯度和从介入过程中的二维图像粗略重建的三维梯度。为了提高找到两组梯度之间对应关系的稳健性,在三维图像中沿着解剖结构的法线搜索假设对应关系,而最终对应关系在一个迭代过程中建立,该过程结合了稳健的随机抽样一致性算法(RANSAC)和一个特殊的梯度匹配准则函数。使用公开可用的三维/二维配准标准化评估方法对所提出的方法进行评估,该方法由两个脊柱节段的三维旋转X射线、计算机断层扫描、磁共振(MR)和二维X射线图像以及标准化评估标准组成。通过这种方式,可以将所提出的方法与基于强度、梯度和重建的配准方法进行客观比较。获得的结果表明,所提出的方法在配准精度和稳健性方面都表现良好。当仅使用少量X射线图像以及使用MR介入前图像进行配准时,该方法尤其优越,这对于许多临床应用来说是重要的优势。