A Strain Rate-Dependent Constitutive Model for Göttingen Minipig Cerebral Arteries

应变率 脑动脉 粘弹性 奥格登 材料科学 生物医学工程 本构方程 创伤性脑损伤 拉伤 压力(语言学) 轴对称性 解剖 结构工程 有限元法 复合材料 医学 心脏病学 工程类 精神科 哲学 语言学
作者
Noah Pearson,Gregory M Boiczyk,Vivek Bhaskar Kote,Aravind Sundaramurthy,Dhananjay Radhakrishnan Subramaniam,Jose E. Rubio,Ginu Unnikrishnan,Jaques Reifman,Kenneth L. Monson
出处
期刊:Journal of biomechanical engineering [ASM International]
卷期号:144 (8) 被引量:3
标识
DOI:10.1115/1.4053796
摘要

Computational simulations of traumatic brain injury (TBI) are commonly used to advance understanding of the injury-pathology relationship, tissue damage thresholds, and design of protective equipment such as helmets. Both human and animal TBI models have developed substantially over recent decades, partially due to the inclusion of more detailed brain geometry and representation of tissues like cerebral blood vessels. Explicit incorporation of vessels dramatically affects local strain and enables researchers to investigate TBI-induced damage to the vasculature. While some studies have indicated that cerebral arteries are rate-dependent, no published experimentally based, rate-sensitive constitutive models of cerebral arteries exist. In this work, we characterize the mechanical properties of axially failed porcine arteries, both quasi-statically (0.01 s-1) and at high rate (>100 s-1), and propose a rate-sensitive model to fit the data. We find that the quasi-static and high-rate stress-stretch curves become significantly different (p < 0.05) above a stretch of 1.23. We additionally find a significant change in both failure stretch and stress as a result of strain rate. The stress-stretch curve is then modeled as a Holzapfel-Gasser-Ogden material, with a Prony series added to capture the effects of viscoelasticity. Ultimately, this paper demonstrates that rate dependence should be considered in the material properties of cerebral arteries undergoing high strain-rate deformations and provides a ready-to-use model for finite element implementation.

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