脑肿瘤增强图像处理功能在术中超声图像数据中的应用

C. Chalopin, Elisee Ilunga-Mbuyamba, J. G. C. Aragon, Juan Carlos Camacho Rodriguez, F. Arlt, J. Aviña-Cervantes, J. Meixensberger, D. Lindner
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摘要

术中超声成像在脑肿瘤手术中为神经外科医生提供了重要的支持。在干预开始时,导航系统内的iUS图像数据整合指导外科医生优化规划颅骨开口的位置和大小。肿瘤切除后,iUS图像数据的可视化能够识别可能的肿瘤残留。然而,iUS图像数据的解释可能很复杂。将现有的分割和配准功能组合成流水线,增强3D iUS图像数据中的脑肿瘤轮廓。在患者术前MR数据中进行半自动分割的脑肿瘤模型,利用图像梯度信息与三维iUS图像进行严格配准。在导航系统的显示器上显示出注册肿瘤模型的轮廓。对15名脑肿瘤手术后康复的患者进行了线下评价。将注册的肿瘤模型与3D iUS数据中手动分割的脑肿瘤进行比较。脑转移瘤和胶质母细胞瘤的平均DSI值分别为82.3%和68.4%,平均轮廓平均距离分别为1.7 mm和3.3 mm。未来的工作将包括改进管道的功能,将管道整合成一个集中的辅助系统,包括更多的功能并与导航系统相连,以及在脑肿瘤手术期间对系统进行评估。•计算方法→3D成像;图像分割;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Image Processing Functions for Brain Tumor Enhancement in Intraoperative Ultrasound Image Data
Intraoperative ultrasound (iUS) imaging supports neurosurgeons significantly during brain tumor operations. At the beginning of the intervention the integration of the iUS image data within the navigation system guides the surgeon by optimally planning the position and size of the skull opening. After tumor resection, the visualization of the iUS image data enables to identify possible tumor residuals. However, the iUS image data can be complex to interpret. Existing segmentation and registration functions were assembled into pipeline to enhance brain tumor contours in the 3D iUS image data. A brain tumor model, semi-automatically segmented in the preoperative MR data of patients, is rigidly registered with the 3D iUS image using image gradient information. The contour of the registered tumor model is visualized on the monitor of the navigation system. The rigid registration step was offline evaluated on 15 patients who overcame a brain tumor operation. The registered tumor models were compared with manual segmentations of the brain tumor in the 3D iUS data. Averaged DSI values of 82.3% and 68.4% and averaged contour mean distances of 1.7 mm and 3.3 mm were obtained for brain metastases and glioblastomas respectively. Future works will include the improvement of the functions in the pipeline, the integration of the pipeline into a centralized assistance system including further fonctionalities and connected with the navigation system, and the evaluation of the system during brain tumor operations. CCS Concepts •Computing methodologies → 3D imaging; Image segmentation;
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