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同步3D-2D图像配准与C型臂校准:在血管内图像引导介入中的应用。

Simultaneous 3D-2D image registration and C-arm calibration: Application to endovascular image-guided interventions.

作者信息

Mitrović Uroš, Pernuš Franjo, Likar Boštjan, Špiclin Žiga

机构信息

Faculty of Electrical Engineering, University of Ljubljana, Tržaška 25, Ljubljana 1000, Slovenia and Cosylab, Control System Laboratory, Teslova ulica 30, Ljubljana 1000, Slovenia.

Faculty of Electrical Engineering, University of Ljubljana, Tržaška 25, Ljubljana 1000, Slovenia.

出版信息

Med Phys. 2015 Nov;42(11):6433-47. doi: 10.1118/1.4932626.

Abstract

PURPOSE

Three-dimensional to two-dimensional (3D-2D) image registration is a key to fusion and simultaneous visualization of valuable information contained in 3D pre-interventional and 2D intra-interventional images with the final goal of image guidance of a procedure. In this paper, the authors focus on 3D-2D image registration within the context of intracranial endovascular image-guided interventions (EIGIs), where the 3D and 2D images are generally acquired with the same C-arm system. The accuracy and robustness of any 3D-2D registration method, to be used in a clinical setting, is influenced by (1) the method itself, (2) uncertainty of initial pose of the 3D image from which registration starts, (3) uncertainty of C-arm's geometry and pose, and (4) the number of 2D intra-interventional images used for registration, which is generally one and at most two. The study of these influences requires rigorous and objective validation of any 3D-2D registration method against a highly accurate reference or "gold standard" registration, performed on clinical image datasets acquired in the context of the intervention.

METHODS

The registration process is split into two sequential, i.e., initial and final, registration stages. The initial stage is either machine-based or template matching. The latter aims to reduce possibly large in-plane translation errors by matching a projection of the 3D vessel model and 2D image. In the final registration stage, four state-of-the-art intrinsic image-based 3D-2D registration methods, which involve simultaneous refinement of rigid-body and C-arm parameters, are evaluated. For objective validation, the authors acquired an image database of 15 patients undergoing cerebral EIGI, for which accurate gold standard registrations were established by fiducial marker coregistration.

RESULTS

Based on target registration error, the obtained success rates of 3D to a single 2D image registration after initial machine-based and template matching and final registration involving C-arm calibration were 36%, 73%, and 93%, respectively, while registration accuracy of 0.59 mm was the best after final registration. By compensating in-plane translation errors by initial template matching, the success rates achieved after the final stage improved consistently for all methods, especially if C-arm calibration was performed simultaneously with the 3D-2D image registration.

CONCLUSIONS

Because the tested methods perform simultaneous C-arm calibration and 3D-2D registration based solely on anatomical information, they have a high potential for automation and thus for an immediate integration into current interventional workflow. One of the authors' main contributions is also comprehensive and representative validation performed under realistic conditions as encountered during cerebral EIGI.

摘要

目的

三维到二维(3D-2D)图像配准是融合和同时可视化3D介入前图像和2D介入中图像所包含的有价值信息的关键,最终目标是为手术提供图像引导。在本文中,作者聚焦于颅内血管内图像引导介入(EIGI)背景下的3D-2D图像配准,其中3D和2D图像通常由同一C型臂系统采集。任何用于临床的3D-2D配准方法的准确性和鲁棒性受以下因素影响:(1)方法本身;(2)配准起始的3D图像初始位姿的不确定性;(3)C型臂的几何形状和位姿的不确定性;(4)用于配准的2D介入中图像的数量,通常为一张,最多两张。对这些影响因素的研究需要针对在介入背景下采集的临床图像数据集,以高度准确的参考或“金标准”配准对任何3D-2D配准方法进行严格且客观的验证。

方法

配准过程分为两个连续的阶段,即初始配准阶段和最终配准阶段。初始阶段要么基于机器,要么进行模板匹配。后者旨在通过匹配3D血管模型的投影和2D图像来减少可能较大的平面内平移误差。在最终配准阶段,评估了四种基于最新内在图像的3D-2D配准方法,这些方法涉及刚体和C型臂参数的同时优化。为了进行客观验证,作者获取了一个包含15例接受脑EIGI患者的图像数据库,并通过基准标记配准建立了准确的金标准配准。

结果

基于目标配准误差,在初始基于机器和模板匹配以及涉及C型臂校准的最终配准后,3D到单张2D图像配准的成功率分别为36%、73%和93%,而最终配准后0.59毫米的配准精度是最佳的。通过初始模板匹配补偿平面内平移误差,所有方法在最终阶段后的成功率均持续提高,特别是在3D-2D图像配准的同时进行C型臂校准的情况下。

结论

由于所测试的方法仅基于解剖信息同时进行C型臂校准和3D-2D配准,它们具有很高的自动化潜力,因此有可能立即集成到当前的介入工作流程中。作者的主要贡献之一还在于在脑EIGI期间遇到的实际条件下进行了全面且具有代表性的验证。

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