Mechanical Engineering Department, Sharif University of Technology, Azadi Avenue, Tehran, Iran.
Mechanical Engineering Department, Sharif University of Technology, Azadi Avenue, Tehran, Iran.
J Mech Behav Biomed Mater. 2018 Apr;80:194-202. doi: 10.1016/j.jmbbm.2018.02.002. Epub 2018 Feb 3.
A transverse-plane hyperelastic micromechanical model of brain white matter tissue was developed using the embedded element technique (EET). The model consisted of a histology-informed probabilistic distribution of axonal fibers embedded within an extracellular matrix, both described using the generalized Ogden hyperelastic material model. A correcting method, based on the strain energy density function, was formulated to resolve the stiffness redundancy problem of the EET in large deformation regime. The model was then used to predict the homogenized tissue behavior and the associated localized responses of the axonal fibers under quasi-static, transverse, large deformations. Results indicated that with a sufficiently large representative volume element (RVE) and fine mesh, the statistically randomized microstructure implemented in the RVE exhibits directional independency in transverse plane, and the model predictions for the overall and local tissue responses, characterized by the normalized strain energy density and Cauchy and von Mises stresses, are independent from the modeling parameters. Comparison of the responses of the probabilistic model with that of a simple uniform RVE revealed that only the first one is capable of representing the localized behavior of the tissue constituents. The validity test of the model predictions for the corona radiata against experimental data from the literature indicated a very close agreement. In comparison with the conventional direct meshing method, the model provided almost the same results after correcting the stiffness redundancy, however, with much less computational cost and facilitated geometrical modeling, meshing, and boundary conditions imposing. It was concluded that the EET can be used effectively for detailed probabilistic micromechanical modeling of the white matter in order to provide more accurate predictions for the axonal responses, which are of great importance when simulating the brain trauma or tumor growth.
采用嵌入式元素技术(EET)开发了一种大脑白质组织的横向各向同性超弹性细观力学模型。该模型由轴突纤维的组织学信息概率分布组成,嵌入在细胞外基质中,两者均采用广义Ogden 超弹性材料模型描述。提出了一种基于应变能密度函数的修正方法,以解决大变形下 EET 的刚度冗余问题。然后,使用该模型预测准静态、横向、大变形下组织的均匀化行为和轴突纤维的局部响应。结果表明,在具有足够大的代表性体积元(RVE)和细网格的情况下,在 RVE 中实现的统计随机微观结构在横向平面上表现出各向同性,并且模型对整体和局部组织响应的预测,由归一化应变能密度和 Cauchy 和 von Mises 应力来表征,与建模参数无关。概率模型的响应与简单均匀 RVE 的响应的比较表明,只有第一个模型能够代表组织成分的局部行为。该模型对放射冠的数据预测与文献中的实验数据的有效性验证表明,两者非常吻合。与传统的直接网格方法相比,在修正了刚度冗余后,该模型提供了几乎相同的结果,但计算成本要低得多,并且便于几何建模、网格划分和边界条件的施加。因此,可以有效地使用 EET 对大脑白质进行详细的概率细观力学建模,以便更准确地预测轴突的响应,这在模拟脑外伤或肿瘤生长时非常重要。