Properties of the target registration error for surface matching in neuronavigation.

Q Medicine
Computer Aided Surgery Pub Date : 2011-01-01 Epub Date: 2011-06-01 DOI:10.3109/10929088.2011.579791
Man Ning Wang, Zhi Jian Song
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引用次数: 20

Abstract

Objective: Surface matching is a relatively new method of spatial registration in neuronavigation. Compared to the traditional point matching method, surface matching does not use fiducial markers that must be fixed to the surface of the head before image scanning, and therefore does not require an image acquisition specifically dedicated for navigation purposes. However, surface matching is not widely used clinically, mainly because there is still insufficient knowledge about its application accuracy. This study aimed to explore the properties of the Target Registration Error (TRE) of surface matching in neuronavigation.

Materials and methods: The surface matching process was simulated in the image space of a neuronavigation system so that the TRE could be calculated at any point in that space. For each registration, two point clouds were generated to represent the surface extracted from preoperative images (PC(image)) and the surface obtained intraoperatively by laser scanning (PC(laser)). The properties of the TRE were studied by performing multiple registrations with PC(laser) point clouds at different positions and generated by adding different types of error.

Results: For each registration, the TRE had a minimal value at a point in the image space, and the iso-valued surface of the TRE was approximately ellipsoid with smaller TRE on the inner surfaces. The position of the point with minimal TRE and the shape of the iso-valued surface were highly random across different registrations, and the surface registration error between the two point clouds was irrelevant to the TRE at a specific point. The overall TRE tended to increase with the increase in errors in PC(laser), and a larger PC(laser) made it less sensitive to these errors. With the introduction of errors in PC(laser), the points with minimal TRE tended to be concentrated in the anterior and inferior part of the head.

Conclusion: The results indicate that the alignment between the two surfaces could not provide reliable information about the registration accuracy at an arbitrary target point. However, according to the spatial distribution of the target registration error of a single registration, enough application accuracy could be guaranteed by proper visual verification after registration. In addition, surface matching tends to achieve high accuracy in the inferior and anterior part of the head, and a relatively large scanning area is preferable.

神经导航表面匹配目标配准误差的性质。
目的:表面匹配是一种较新的神经导航空间配准方法。与传统的点匹配方法相比,表面匹配不使用在图像扫描之前必须固定在头部表面的基准标记,因此不需要专门用于导航目的的图像采集。然而,表面匹配在临床上并没有得到广泛的应用,主要是因为对其应用精度的认识还不够。本研究旨在探讨神经导航表面匹配中目标配准误差(TRE)的特性。材料和方法:在神经导航系统的图像空间中模拟表面匹配过程,从而可以在该空间的任意点计算TRE。对于每次配准,生成两个点云,分别表示术前图像提取的表面(PC(image))和术中激光扫描获得的表面(PC(laser))。通过对不同位置的PC(激光)点云进行多次配准,并通过添加不同类型的误差生成,研究了TRE的特性。结果:每次配准后,在图像空间的某一点上,TRE都有一个最小值,其等值面近似为椭球面,内表面的TRE较小。在不同配准过程中,等值面形状和最小等值点的位置具有高度随机性,两点云之间的曲面配准误差与特定点的等值点不相关。随着PC(激光)误差的增加,整个TRE趋于增加,而更大的PC(激光)使其对这些误差不那么敏感。随着PC(激光)误差的引入,最小的TRE点倾向于集中在头部的前下部。结论:结果表明,在任意目标点上,两面对准不能提供可靠的配准精度信息。然而,根据单次配准目标配准误差的空间分布,配准后进行适当的视觉验证可以保证足够的应用精度。此外,表面匹配在头部的下前部往往能达到较高的精度,且扫描面积较大为佳。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Computer Aided Surgery
Computer Aided Surgery 医学-外科
CiteScore
0.75
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: The scope of Computer Aided Surgery encompasses all fields within surgery, as well as biomedical imaging and instrumentation, and digital technology employed as an adjunct to imaging in diagnosis, therapeutics, and surgery. Topics featured include frameless as well as conventional stereotaxic procedures, surgery guided by ultrasound, image guided focal irradiation, robotic surgery, and other therapeutic interventions that are performed with the use of digital imaging technology.
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