首页> 外文会议>Conference on image-guided procedures, robotic interventions, and modeling >A Gaussian Mixture + Demons Deformable Registration Method for Cone-Beam CT-Guided Robotic Transoral Base-of-Tongue Surgery
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A Gaussian Mixture + Demons Deformable Registration Method for Cone-Beam CT-Guided Robotic Transoral Base-of-Tongue Surgery

机译:高斯混合物+恶魔可变形的锥形束CT引导机器人传递舌舌外科的登记方法

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An increasingly popular minimally invasive approach to resection of oropharyngeal / base-of-tongue cancer is made possible by a transoral technique conducted with the assistance of a surgical robot. However, the highly deformed surgical setup (neck flexed, mouth open, and tongue retracted) compared to the typical patient orientation in preoperative images poses a challenge to guidance and localization of the tumor target and adjacent critical anatomy. Intraoperative cone-beam CT (CBCT) can account for such deformation, but due to the low contrast of soft-tissue in CBCT images, direct localization of the target and critical tissues in CBCT images can be difficult. Such structures may be more readily delineated in preoperative CT or MR images, so a method to deformably register such information to intraoperative CBCT could offer significant value. This paper details the initial implementation of a deformable registration framework to align preoperative images with the deformed intraoperative scene and gives preliminary evaluation of the geometric accuracy of registration in CBCT-guided TORS. Method: The deformable registration aligns preoperative CT or MR to intraoperative CBCT by integrating two established approaches. The volume of interest is first segmented (specifically, the region of the tongue from the tip to the hyoid), and a Gaussian mixture (GM) model of surface point clouds is used for rigid initialization (GMRigid) as well as an initial deformation (GMNonRigid). Next, refinement of the registration is performed using the Demons algorithm applied to distance transformations of the GM-registered and CBCT volumes. The registration accuracy of the framework was quantified in preliminary studies using a cadaver emulating preoperative and intraoperative setups. Geometric accuracy of registration was quantified in terms of target registration error (TRE) and surface distance error. Result: With each step of the registration process, the framework demonstrated improved registration, achieving mean TRE of 3.0 mm following the GM rigid, 1.9 mm following GM nonrigid, and 1.5 mm at the output of the registration process. Analysis of surface distance demonstrated a corresponding improvement of 2.2, 0.4, and 0.3 mm, respectively. The evaluation of registration error revealed the accurate alignment in the region of interest for base-of-tongue robotic surgery owing to point-set selection in the GM steps and refinement in the deep aspect of the tongue in the Demons step. Conclusions: A promising framework has been developed for CBCT-guided TORS in which intraoperative CBCT provides a basis for registration of preoperative images to the highly deformed intraoperative setup. The registration framework is invariant to imaging modality (accommodating preoperative CT or MR) and is robust against CBCT intensity variations and artifact, provided corresponding segmentation of the volume of interest. The approach could facilitate overlay of preoperative planning data directly in stereo-endoscopic video in support of CBCT-guided TORS.
机译:通过在手术机器人的帮助下进行的传输技术,使得可以成为越来越受口咽/舌癌癌的越来越多的侵袭性方法。然而,与术前图像中的典型患者取向相比,高变形的外科手术设置(颈部弯曲,嘴巴和舌头缩回)对肿瘤靶和邻近临界解剖学的引导和定位构成挑战。术中锥梁CT(CBCT)可以解释这种变形,但由于CBCT图像中的软组织对比度,因此CBCT图像中的靶和关键组织的直接定位可能是困难的。在术前CT或MR图像中,这种结构可以更容易地描绘,因此可以提供术中CBCT的诸如术语CBCT的信息的方法可以提供显着的值。本文详述了可变形登记框架的初始实施,以使术前图像与变形的术中场景对齐,并初步评估CBCT引导的脚轮中的配准几何精度。方法:通过整合两种建立的方法,可变形的注册将术前CT或MR到术中CBCT对齐。首先将感兴趣的体积分段(具体地,从尖端到舌头的舌头区域),并且表面点云的高斯混合物(GM)模型用于刚性初始化(GMRigID)以及初始变形( gmnonrigid)。接下来,使用应用于GM登记和CBCT卷的距离变换的DemOns算法来执行注册的改进。使用展望术前和术中设置的尸体进行初步研究,量化框架的注册准确性。根据目标登记误差(TRE)和表面距离误差,定量注册的几何精度。结果:随着注册过程的每一步,框架展示了改进的注册,在GM刚性后GM刚性,1.9毫米后的平均tre为3.0毫米,在注册过程的输出时1.5 mm。表面距离分析分别显示出2.2,0.4和0.3mm的相应改善。注册误差的评估显示,由于在恶魔步骤中舌头的舌头的点设置和精制的点设置,舌末舌机组织手术区域的感兴趣区域准确对准。结论:开发了一个有前途的框架,为CBCT引导的TORS开发,其中术中CBCT为高度变形的术中设置提供了术前图像的基础。登记框架不变于成像模态(容纳术前CT或MR),并且对CBCT强度变化和伪像具有稳健,提供了感兴趣的体积的相应分割。该方法可以促进术前规划数据的覆盖,直接在立体内窥镜视频中,以支持CBCT引导的脚。

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