毛细血管网络脑组织孔隙弹性特性的多尺度建模分析

IF 2.5 3区 工程技术 Q2 MECHANICS
Abbas Shabudin, Nik Abdullah Nik Mohamed, Wahbi El-Bouri, Stephen Payne, Mohd Jamil Mohamed Mokhtarudin
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引用次数: 0

摘要

脑微血管在决定血液灌注和氧向周围组织扩散方面起着关键作用。因此,多尺度模型被开发出来,以将微血管系统的影响纳入整体脑功能。此外,脑组织孔隙弹性也受微血管的影响。本研究旨在利用以下有效参数张量描述的微血管网络的多尺度建模来确定脑组织的孔隙弹性特性:血流量渗透率 \({\varvec{K}}\),间质流体渗透率 \({\varvec{G}}\),血液的比奥系数 \({\alpha }_{c}\) 还有间质液 \({\alpha }_{t}\),杨氏模量 \(\overline{E }\)和泊松比 \(\overline{v }\). 微血管网络是根据脑毛细血管分布的形态测量数据建立的,用1D线表示。为了允许使用有限元方法求解微尺度细胞方程,微血管系统被修改为三维形状。修改的结果是15% increment of the microvasculature volume. Validation is then performed by comparing the permeability tensor \({\varvec{K}}\) obtained using Poiseuille’s and Stokes’ equations, which resulted in the value of \({\varvec{K}}\) obtained through solving Stokes’ equation to be about 70% less than through solving Poiseuille’s equation. Based on these results, the other effective parameters have been estimated by considering the microvasculature volume increment due to the geometry modification. The volume increment significantly affects the parameter \({\alpha }_{c}\) but not the other parameters. The effective parameters are then used in a benchmark simulation, which further demonstrates the model value in describing the effects of brain capillary morphology in cerebrovascular diseases.
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiscale modeling analysis of poroelastic properties of brain tissue with capillary networks

The cerebral microvasculature plays a key role in determining the blood perfusion and oxygen diffusion to surrounding tissue. Multiscale models have thus been developed to incorporate the effect of the microvasculature into overall brain function. Moreover, brain tissue poroelastic properties are also influenced by the microvasculature. This study aims to determine the pororelastic properties of brain tissue using multiscale modeling on microvasculature networks described by the following effective parametric tensors: blood flow permeability \({\varvec{K}}\), interstitial fluid flow permeability \({\varvec{G}}\), Biot’s coefficients for blood \({\alpha }_{c}\) and interstitial fluid \({\alpha }_{t}\), Young’s modulus \(\overline{E }\), and Poisson’s ratio \(\overline{v }\). The microvasculature networks are built from a morphometric data of brain capillary distribution, which is represented using 1D lines. To allow for solving the microscale cell equations using finite element method, the microvasculature is modified into 3D shapes. The modifications resulted in 15% increment of the microvasculature volume. Validation is then performed by comparing the permeability tensor \({\varvec{K}}\) obtained using Poiseuille’s and Stokes’ equations, which resulted in the value of \({\varvec{K}}\) obtained through solving Stokes’ equation to be about 70% less than through solving Poiseuille’s equation. Based on these results, the other effective parameters have been estimated by considering the microvasculature volume increment due to the geometry modification. The volume increment significantly affects the parameter \({\alpha }_{c}\) but not the other parameters. The effective parameters are then used in a benchmark simulation, which further demonstrates the model value in describing the effects of brain capillary morphology in cerebrovascular diseases.

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来源期刊
CiteScore
4.40
自引率
10.70%
发文量
234
审稿时长
4-8 weeks
期刊介绍: Archive of Applied Mechanics serves as a platform to communicate original research of scholarly value in all branches of theoretical and applied mechanics, i.e., in solid and fluid mechanics, dynamics and vibrations. It focuses on continuum mechanics in general, structural mechanics, biomechanics, micro- and nano-mechanics as well as hydrodynamics. In particular, the following topics are emphasised: thermodynamics of materials, material modeling, multi-physics, mechanical properties of materials, homogenisation, phase transitions, fracture and damage mechanics, vibration, wave propagation experimental mechanics as well as machine learning techniques in the context of applied mechanics.
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