Digital Medical Research Center, Shanghai Medical School, Fudan University, Shanghai, 200032, China.
IEEE Trans Biomed Eng. 2011 Jan;58(1):191-9. doi: 10.1109/TBME.2010.2070503. Epub 2010 Aug 30.
In image-guided neurosurgery, brain tissue displacement and deformation during neurosurgical procedures are a major source of error. In this paper, we implement and evaluate a linear-elastic-model-based framework for correction of brain shift using clinical data from five brain tumor patients. The framework uses a linear elastic model to simulate brain-shift behavior. The model is driven by cortical surface deformations, which are tracked using a surface-tracking algorithm combined with a laser-range scanner. The framework performance was evaluated using displacements of anatomical landmarks, tumor contours and self-defined evaluation parameters. The results show that tumor deformations predicted by the present framework agreed well with the ones observed intraoperatively, especially in the parts of the larger deformations. On average, a brain shift of 3.9 mm and a tumor margin shift of 4.2 mm were corrected to 1.2 and 1.3 mm, respectively. The entire correction process was performed in less than 5 min. The data from this study suggest that the technique is a suitable candidate for intraoperative brain-deformation correction.
在影像引导神经外科手术中,神经外科手术过程中脑组织的位移和变形是主要误差源。在本文中,我们使用来自五名脑肿瘤患者的临床数据实现并评估了一种基于线性弹性模型的脑移位校正框架。该框架使用线性弹性模型来模拟脑移位行为。该模型由皮质表面变形驱动,使用表面跟踪算法与激光测距扫描仪相结合来跟踪这些变形。使用解剖学标志、肿瘤轮廓和自定义评估参数来评估框架性能。结果表明,本框架预测的肿瘤变形与术中观察到的变形非常吻合,尤其是在较大变形的部分。平均而言,将 3.9 毫米的脑移位和 4.2 毫米的肿瘤边缘移位分别校正至 1.2 毫米和 1.3 毫米。整个校正过程耗时不到 5 分钟。这项研究的数据表明,该技术是一种适合术中脑变形校正的方法。