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使用公共基准数据预测脑内移位的粘弹性生物力学模型。

Viscoelastic biomechanical models to predict inward brain-shift using public benchmark data.

作者信息

Lesage Anne-Cecile, Simmons Alexis, Sen Anando, Singh Simran, Chen Melissa, Cazoulat Guillaume, Weinberg Jeffrey S, Brock Kristy K

机构信息

Department of Imaging Physics, The University of Texas MD Anderson Cancer Center, Houston, TX, United States of America.

Department of Neuroradiology, The University of Texas MD Anderson Cancer Center, Houston, TX, United States of America.

出版信息

Phys Med Biol. 2021 Oct 12;66(20). doi: 10.1088/1361-6560/ac22dc.

Abstract

Brain-shift during neurosurgery compromises the accuracy of tracking the boundaries of the tumor to be resected. Although several studies have used various finite element models (FEMs) to predict inward brain-shift, evaluation of their accuracy and efficiency based on public benchmark data has been limited. This study evaluates several FEMs proposed in the literature (various boundary conditions, mesh sizes, and material properties) by using intraoperative imaging data (the public REtroSpective Evaluation of Cerebral Tumors [RESECT] database). Four patients with low-grade gliomas were identified as having inward brain-shifts. We computed the accuracy (using target registration error) of several FEM-based brain-shift predictions and compared our findings. Since information on head orientation during craniotomy is not included in this database, we tested various plausible angles of head rotation. We analyzed the effects of brain tissue viscoelastic properties, mesh size, craniotomy position, CSF drainage level, and rigidity of meninges and then quantitatively evaluated the trade-off between accuracy and central processing unit time in predicting inward brain-shift across all models with second-order tetrahedral FEMs. The mean initial target registration error (TRE) was 5.78 ± 3.78 mm with rigid registration. FEM prediction (edge-length, 5 mm) with non-rigid meninges led to a mean TRE correction of 1.84 ± 0.83 mm assuming heterogeneous material. Results show that, for the low-grade glioma patients in the study, including non-rigid modeling of the meninges was significant statistically. In contrast including heterogeneity was not significant. To estimate the optimal head orientation and CSF drainage, an angle step of 5° and an CSF height step of 5 mm were enough leading to <0.26 mm TRE fluctuation.

摘要

神经外科手术期间的脑移位会影响追踪待切除肿瘤边界的准确性。尽管有几项研究使用了各种有限元模型(FEM)来预测脑向内移位,但基于公共基准数据对其准确性和效率的评估仍然有限。本研究通过使用术中成像数据(公开的脑肿瘤回顾性评估[RESECT]数据库)来评估文献中提出的几种有限元模型(各种边界条件、网格大小和材料属性)。确定了4例低级别胶质瘤患者存在脑向内移位。我们计算了几种基于有限元模型的脑移位预测的准确性(使用目标配准误差)并比较了我们的发现。由于该数据库中不包括开颅手术期间的头部方位信息,我们测试了各种合理的头部旋转角度。我们分析了脑组织粘弹性属性、网格大小、开颅位置、脑脊液引流水平以及脑膜刚度的影响,然后使用二阶四面体有限元模型在所有模型中定量评估了预测脑向内移位时准确性和中央处理器时间之间的权衡。刚性配准的平均初始目标配准误差(TRE)为5.78±3.78毫米。假设材料不均匀,具有非刚性脑膜的有限元模型预测(边长5毫米)导致平均TRE校正为1.84±0.83毫米。结果表明,对于本研究中的低级别胶质瘤患者,纳入脑膜的非刚性建模在统计学上具有显著意义。相比之下,纳入不均匀性并不显著。为了估计最佳头部方位和脑脊液引流,5°的角度步长和5毫米的脑脊液高度步长就足够了,导致TRE波动<0.26毫米。

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