防务技术2024,Vol.33Issue(3) :55-65.DOI:10.1016/j.dt.2023.03.012

Data-driven modeling on anisotropic mechanical behavior of brain tissue with internal pressure

Zhiyuan Tang Yu Wang Khalil I.Elkhodary Zefeng Yu Shan Tang Dan Peng
防务技术2024,Vol.33Issue(3) :55-65.DOI:10.1016/j.dt.2023.03.012

Data-driven modeling on anisotropic mechanical behavior of brain tissue with internal pressure

Zhiyuan Tang 1Yu Wang 1Khalil I.Elkhodary 2Zefeng Yu 1Shan Tang 1Dan Peng3
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作者信息

  • 1. State Key Laboratory of Structural Analysis,Optimization and CAE Software for Industrial Equipment,Dalian University of Technology,116023,Dalian,PR China
  • 2. The Department of Mechanical Engineering,The American University in Cairo,New Cairo,11835,Egypt
  • 3. Department of Neurology,The Second Hospital of Dalian Medical University,Dalian,116023,PR China
  • 折叠

Abstract

Brain tissue is one of the softest parts of the human body,composed of white matter and grey matter.The mechanical behavior of the brain tissue plays an essential role in regulating brain morphology and brain function.Besides,traumatic brain injury(TBI)and various brain diseases are also greatly influenced by the brain's mechanical properties.Whether white matter or grey matter,brain tissue contains multiscale structures composed of neurons,glial cells,fibers,blood vessels,etc.,each with different mechanical properties.As such,brain tissue exhibits complex mechanical behavior,usually with strong nonlinearity,heterogeneity,and directional dependence.Building a constitutive law for multiscale brain tissue using traditional function-based approaches can be very challenging.Instead,this paper proposes a data-driven approach to establish the desired mechanical model of brain tissue.We focus on blood vessels with internal pressure embedded in a white or grey matter matrix material to demonstrate our approach.The matrix is described by an isotropic or anisotropic nonlinear elastic model.A representative unit cell(RUC)with blood vessels is built,which is used to generate the stress-strain data under different internal blood pressure and various proportional displacement loading paths.The generated stress-strain data is then used to train a mechanical law using artificial neural networks to predict the macroscopic me-chanical response of brain tissue under different internal pressures.Finally,the trained material model is implemented into finite element software to predict the mechanical behavior of a whole brain under intracranial pressure and distributed body forces.Compared with a direct numerical simulation that employs a reference material model,our proposed approach greatly reduces the computational cost and improves modeling efficiency.The predictions made by our trained model demonstrate sufficient ac-curacy.Specifically,we find that the level of internal blood pressure can greatly influence stress distri-bution and determine the possible related damage behaviors.

Key words

Data driven/Constitutive law/Anisotropy/Brain tissue/Internal pressure

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基金项目

&&(MKF20210033)

出版年

2024
防务技术
中国兵工学会

防务技术

CSTPCD
影响因子:0.358
ISSN:2214-9147
参考文献量60
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