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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Data-Guided Brain Deformation Modeling: Evaluation of a 3-D Adjoint Inversion Method in Porcine Studies
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Data-Guided Brain Deformation Modeling: Evaluation of a 3-D Adjoint Inversion Method in Porcine Studies

机译:数据指导的脑变形建模:猪研究中的3-D伴随反演方法的评估

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Biomechanical models of brain deformation are useful tools for estimating parenchymal shift that results during open cranial procedures. Intraoperative data is likely to improve model estimates, but incorporation of such data into the model is not trivial. This study tests the adjoint equations method (AEM) for data assimilation as a viable approach for integrating displacement data into a brain deformation model. AEM was applied to two porcine experiments. AEM-based estimates were compared both to measured displacement data [from computed tomography (CT) scans] and to model solutions obtained without the guidance of sparse data, which we term the best prior estimate (BPE). Additionally, the sensitivity of the AEM solution to inverse parameter selection was investigated. The results suggest that it is most important to estimate the size of the variance in the measurement error correctly, make the correlation length long and estimate displacement (over stress) boundary conditions. Application of AEM shows an average 33% improvement over BPE. This paper represents the first evidence of successful use of the AEM technique in three dimensions with experimental data validation. The guidelines established for selection of model parameters are starting points for further optimization of the method under clinical conditions.
机译:脑部变形的生物力学模型是评估开放性颅骨手术过程中产生的实质转移的有用工具。术中数据可能会改善模型估计,但将这些数据并入模型并非易事。这项研究测试了数据同化的伴随方程法(AEM),这是将位移数据整合到大脑变形模型中的可行方法。 AEM被应用于两个猪实验。将基于AEM的估计与测量的位移数据(来自计算机断层扫描(CT)扫描)进行比较,并与在无稀疏数据指导下获得的模型求解(我们称之为最佳先验估计(BPE))进行比较。此外,还研究了AEM解决方案对反参数选择的敏感性。结果表明,最重要的是正确估计测量误差中的方差大小,延长相关长度并估计位移(应力过大)边界条件。 AEM的应用显示比BPE平均提高了33%。本文代表了在实验数据验证的三个方面成功使用AEM技术的第一个证据。为选择模型参数而建立的指南是在临床条件下进一步优化方法的起点。

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