Luo Ma, Frisken Sarah F, Weis Jared A, Clements Logan W, Unadkat Prashin, Thompson Reid C, Golby Alexandra J, Miga Michael I
Vanderbilt University, Department of Biomedical Engineering, Nashville, Tennessee, United States.
Brigham and Women's Hospital, Department of Radiology, Boston, Massachusetts, United States.
J Med Imaging (Bellingham). 2017 Jul;4(3):035003. doi: 10.1117/1.JMI.4.3.035003. Epub 2017 Sep 13.
Brain shift during tumor resection compromises the spatial validity of registered preoperative imaging data that is critical to image-guided procedures. One current clinical solution to mitigate the effects is to reimage using intraoperative magnetic resonance (iMR) imaging. Although iMR has demonstrated benefits in accounting for preoperative-to-intraoperative tissue changes, its cost and encumbrance have limited its widespread adoption. While iMR will likely continue to be employed for challenging cases, a cost-effective model-based brain shift compensation strategy is desirable as a complementary technology for standard resections. We performed a retrospective study of [Formula: see text] tumor resection cases, comparing iMR measurements with intraoperative brain shift compensation predicted by our model-based strategy, driven by sparse intraoperative cortical surface data. For quantitative assessment, homologous subsurface targets near the tumors were selected on preoperative MR and iMR images. Once rigidly registered, intraoperative shift measurements were determined and subsequently compared to model-predicted counterparts as estimated by the brain shift correction framework. When considering moderate and high shift ([Formula: see text], [Formula: see text] measurements per case), the alignment error due to brain shift reduced from [Formula: see text] to [Formula: see text], representing [Formula: see text] correction. These first steps toward validation are promising for model-based strategies.
肿瘤切除过程中的脑移位会损害术前配准成像数据的空间有效性,而这些数据对于图像引导手术至关重要。当前一种减轻其影响的临床解决方案是使用术中磁共振(iMR)成像进行再次成像。尽管iMR已证明在考虑术前到术中组织变化方面具有优势,但其成本和负担限制了其广泛应用。虽然iMR可能会继续用于具有挑战性的病例,但作为标准切除术的补充技术,一种具有成本效益的基于模型的脑移位补偿策略是可取的。我们对[公式:见正文]例肿瘤切除病例进行了回顾性研究,将iMR测量结果与我们基于模型的策略预测的术中脑移位补偿进行比较,该策略由稀疏的术中皮质表面数据驱动。为了进行定量评估,在术前MR和iMR图像上选择肿瘤附近的同源地下目标。一旦进行了刚性配准,就确定术中移位测量结果,随后将其与脑移位校正框架估计的模型预测对应值进行比较。当考虑中度和高度移位([公式:见正文],每例[公式:见正文]测量)时,由于脑移位导致的对准误差从[公式:见正文]降至[公式:见正文],代表[公式:见正文]的校正。这些迈向验证的初步步骤对于基于模型的策略很有前景。