脑白质轴突纤维的超弹性材料特性

Q3 Engineering Brain multiphysics Pub Date : 2021-01-01 DOI:10.1016/j.brain.2021.100035
Poorya Chavoshnejad , Guy K. German , Mir Jalil Razavi
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引用次数: 8

摘要

在微观和宏观尺度上准确表征人脑的力学特性是创伤性脑损伤和脑折叠建模的关键要求。迄今为止,大多数采用经典张力/压缩/剪切测试的实验研究报告了大脑在宏观区域内灰质和白质的平均力学性能。因此,微观组成元素的独立力学性能与组织的复合体宏观力学性能之间缺乏相关性。本微结构计算研究旨在从体组织的力学特性反向预测轴突纤维及其周围细胞外基质(ECM)的超弹性力学特性。我们利用嵌入单元技术建立了具有代表性的由轴突纤维和ECM组成的体积单元(RVE)模型。基于先前报道的7项胼胝体白质组织的力学实验,采用多目标优化技术对模型进行校准,并建立轴突纤维和外膜的独立力学特性。研究结果表明,文献报道的白质弹性行为值之间的差异源于组织在微观尺度上的各向异性。轴突纤维的剪切模量比ECM大7倍,轴突纤维也显示出更大的非线性,这与通常认为两种成分具有相同的非线性特性的假设相反。在创伤性脑损伤或脑力学研究中所报道的白质微观结构的力学性质差别很大,在某些情况下相差可达两个数量级。目前,白质微观结构的材料参数是通过单一加载模式或最终的体组织的两种模式来确定的。现有的材料模型仅在宏观尺度上定义了体和均质白质的响应,不能明确地捕捉材料微观结构与体结构之间的联系。为了填补这一知识空白,我们的研究利用微尺度计算建模和多目标优化来表征轴突纤维和ECM的超弹性材料特性。本研究中提出的轴突纤维和ECM的超弹性材料特性比以前提出的更准确,因为它们已经使用了7或6种体组织的加载模式进行了优化,而以前仅限于7种可能的加载模式中的两种。因此,具有较高精度的预测值可用于各种计算建模研究。在宏观和微观尺度上系统地表征人类脑组织的材料特性将导致更准确的计算预测,这将使人们更好地理解损伤标准,并对智能保护系统的改进发展产生积极影响,更准确地预测大脑发育和疾病进展。
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Hyperelastic material properties of axonal fibers in brain white matter

Accurate characterization of the mechanical properties of the human brain at both microscopic and macroscopic length scales is a critical requirement for modeling of traumatic brain injury and brain folding. To date, most experimental studies that employ classical tension/compression/shear tests report the mechanical properties of the brain averaged over both the gray and white matter within the macroscopic regions of interest. As a result, there is a missing correlation between the independent mechanical properties of the microscopic constituent elements and the composite bulk macroscopic mechanical properties of the tissue. This microstructural computational study aims to inversely predict the hyperelastic mechanical properties of the axonal fibers and their surrounding extracellular matrix (ECM) from the bulk tissue's mechanical properties. We develop a representative volume element (RVE) model of the bulk tissue consisting of axonal fibers and ECM with the embedded element technique. A multiobjective optimization technique is implemented to calibrate the model and establish the independent mechanical properties of axonal fibers and ECM based on seven previously reported experimental mechanical tests for bulk white matter tissue from the corpus callosum. The result of the study shows that the discrepancy between the reported values for the elastic behavior of white matter in literature stems from the anisotropy of the tissue at the microscale. The shear modulus of the axonal fiber is seven times larger than the ECM, with axonal fibers that also show greater nonlinearity, contrary to the common assumption that both components exhibit identical nonlinear characteristics.

Statement of significance

The reported mechanical properties of white matter microstructure used in traumatic brain injury or brain mechanics studies vary widely, in some cases by up to two orders of magnitude. Currently, the material parameters of the white matter microstructure are identified by a single loading mode or ultimately two modes of the bulk tissue. The presented material models only define the response of the bulk and homogenized white matter at a macroscopic scale and cannot explicitly capture the connection between the material properties of microstructure and bulk structure. To fill this knowledge gap, our study characterizes the hyperelastic material properties of axonal fibers and ECM using microscale computational modeling and multiobjective optimization. The hyperelastic material properties for axonal fibers and ECM presented in this study are more accurate than previously proposed because they have been optimized using seven or six loading modes of the bulk tissue, which were previously limited to only two of the seven possible loading modes. As such, the predicted values with high accuracy could be used in various computational modeling studies. The systematic characterization of the material properties of the human brain tissue at both macro- and microscales will lead to more accurate computational predictions, which will enable a better understanding of injury criteria, and has a positive impact on the improved development of smart protection systems, and more accurate prediction of brain development and disease progression.

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来源期刊
Brain multiphysics
Brain multiphysics Physics and Astronomy (General), Modelling and Simulation, Neuroscience (General), Biomedical Engineering
CiteScore
4.80
自引率
0.00%
发文量
0
审稿时长
68 days
期刊最新文献
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