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基于患者特定模型的脑肿瘤在三维术中超声图像中的分割。

Patient-specific model-based segmentation of brain tumors in 3D intraoperative ultrasound images.

机构信息

CA Telematics, Engineering Division, Campus Irapuato-Salamanca, University of Guanajuato, Carr. Salamanca-Valle de Santiago km 3.5 + 1.8, Comunidad de Palo Blanco, 36885, Salamanca, Mexico.

Innovation Center Computer Assisted Surgery (ICCAS), University of Leipzig, 04103, Leipzig, Germany.

出版信息

Int J Comput Assist Radiol Surg. 2018 Mar;13(3):331-342. doi: 10.1007/s11548-018-1703-0. Epub 2018 Jan 12.

Abstract

PURPOSE

Intraoperative ultrasound (iUS) imaging is commonly used to support brain tumor operation. The tumor segmentation in the iUS images is a difficult task and still under improvement because of the low signal-to-noise ratio. The success of automatic methods is also limited due to the high noise sensibility. Therefore, an alternative brain tumor segmentation method in 3D-iUS data using a tumor model obtained from magnetic resonance (MR) data for local MR-iUS registration is presented in this paper. The aim is to enhance the visualization of the brain tumor contours in iUS.

METHODS

A multistep approach is proposed. First, a region of interest (ROI) based on the specific patient tumor model is defined. Second, hyperechogenic structures, mainly tumor tissues, are extracted from the ROI of both modalities by using automatic thresholding techniques. Third, the registration is performed over the extracted binary sub-volumes using a similarity measure based on gradient values, and rigid and affine transformations. Finally, the tumor model is aligned with the 3D-iUS data, and its contours are represented.

RESULTS

Experiments were successfully conducted on a dataset of 33 patients. The method was evaluated by comparing the tumor segmentation with expert manual delineations using two binary metrics: contour mean distance and Dice index. The proposed segmentation method using local and binary registration was compared with two grayscale-based approaches. The outcomes showed that our approach reached better results in terms of computational time and accuracy than the comparative methods.

CONCLUSION

The proposed approach requires limited interaction and reduced computation time, making it relevant for intraoperative use. Experimental results and evaluations were performed offline. The developed tool could be useful for brain tumor resection supporting neurosurgeons to improve tumor border visualization in the iUS volumes.

摘要

目的

术中超声(iUS)成像常用于支持脑肿瘤手术。由于信噪比低,iUS 图像中的肿瘤分割仍然是一个难题,并且仍在不断改进。由于噪声敏感性高,自动方法的成功也受到限制。因此,本文提出了一种使用从磁共振(MR)数据获得的肿瘤模型在 3D-iUS 数据中进行脑肿瘤分割的替代方法,用于局部 MR-iUS 配准。目的是增强 iUS 中脑肿瘤轮廓的可视化。

方法

提出了一种多步骤方法。首先,基于特定患者肿瘤模型定义感兴趣区域(ROI)。其次,通过使用自动阈值技术从两种模态的 ROI 中提取高回声结构,主要是肿瘤组织。第三,使用基于梯度值的相似性度量和刚性和仿射变换在提取的二进制子体积上执行配准。最后,将肿瘤模型与 3D-iUS 数据对齐,并表示其轮廓。

结果

成功地对 33 名患者的数据集进行了实验。通过使用两种二进制指标(轮廓平均距离和骰子指数)将肿瘤分割与专家手动勾画进行比较,评估了该方法。将基于局部和二进制配准的分割方法与两种基于灰度的方法进行了比较。结果表明,与比较方法相比,我们的方法在计算时间和准确性方面都取得了更好的结果。

结论

该方法需要的交互操作有限,计算时间减少,因此适用于术中使用。离线进行了实验结果和评估。开发的工具对于脑肿瘤切除具有重要意义,可以帮助神经外科医生改善 iUS 体积中肿瘤边界的可视化。

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