Pappas Ion P, Puja Malik, Styner Martin, Liu Jubei, Caversaccio Marco
M.E. Müller Research Center, University of Bern, 3001 Bern, Switzerland.
Injury. 2004 Jun;35 Suppl 1:S-A105-12. doi: 10.1016/j.injury.2004.05.018.
Due to their complementary information content, both x-ray computed tomography (CT) and magnetic resonance (MR) imaging are employed in certain clinical cases to improve the understanding of pathology involved. o spatially relate the two datasets, image registration and image fusion are employed. However, registration errors, either global or local, are common and are nonuniform within the image volume. In this paper, we propose a new algorithm that assesses the quality of the registration locally within the CT-MR volume and provides visual, color-coded feedback to the user about the location and extent of good and bad correspondence between the two images. The proposed registration assessment algorithm is based on a correspondence analysis of bone structures in the CT and MR images. For that purpose, a custom segmentation algorithm for bone in MR images has been developed that is based on a stochastic threshold computation method. This segmentation method for MR images and the CT-MR registration assessment algorithm were validated on simulated MR datasets and real CT-MR image pairs of the head. Some partial-volume effects occur at the borders of the bone structures and at the bone interfaces with air, which cannot be separated from bone in the MR image. The presented assessment method of CT-MR image registration offers the user a new tool to evaluate the overall and local quality of the registration. With this information, the user does not have to blindly trust the fused CT-MR datasets but can easily identify areas of inaccurate correspondence. The application of the algorithm is so far limited to T1-weighted MR and CT images of the head area.
由于X射线计算机断层扫描(CT)和磁共振(MR)成像所提供的信息具有互补性,因此在某些临床病例中会同时使用这两种成像技术,以加深对所涉及病理情况的理解。为了在空间上关联这两个数据集,会采用图像配准和图像融合技术。然而,配准误差,无论是全局的还是局部的,都很常见,并且在图像体积内是不均匀的。在本文中,我们提出了一种新算法,该算法可在CT-MR体积内局部评估配准质量,并向用户提供视觉上的、颜色编码的反馈,告知其两幅图像之间良好和不良对应关系的位置和范围。所提出的配准评估算法基于对CT和MR图像中骨骼结构的对应分析。为此,开发了一种基于随机阈值计算方法的MR图像中骨骼的自定义分割算法。该MR图像分割方法和CT-MR配准评估算法在模拟MR数据集以及头部的真实CT-MR图像对上进行了验证。在骨骼结构的边界以及与空气的骨界面处会出现一些部分容积效应,这些在MR图像中无法与骨骼分离。所提出的CT-MR图像配准评估方法为用户提供了一种评估配准整体和局部质量的新工具。有了这些信息,用户不必盲目信任融合后的CT-MR数据集,而是可以轻松识别对应不准确的区域。到目前为止,该算法的应用仅限于头部区域的T1加权MR和CT图像。