Department of Mechanical and Aerospace Engineering, Center for Applied Biomechanics, University of Virginia, 4040 Lewis and Clark Dr., Charlottesville, VA, 229011, USA.
Advanced Research Computing, University of Virginia, Charlottesville, VA, USA.
Ann Biomed Eng. 2020 Oct;48(10):2412-2424. doi: 10.1007/s10439-020-02584-z. Epub 2020 Jul 28.
Finite element (FE) models of the brain are crucial for investigating the mechanisms of traumatic brain injury (TBI). However, FE brain models are often limited to a single neuroanatomy because the manual development of subject-specific models is time consuming. The objective of this study was to develop a pipeline to automatically generate subject-specific FE brain models using previously developed nonlinear image registration techniques, preserving both external and internal neuroanatomical characteristics. To verify the morphing-induced mesh distortions did not influence the brain deformation response, strain distributions predicted using the morphed model were compared to those from manually created voxel models of the same subject. Morphed and voxel models were generated for 44 subjects ranging in age, and simulated using head kinematics from a football concussion case. For each subject, brain strain distributions predicted by each model type were consistent, and differences in strain prediction was less than 4% between model type. This automated technique, taking approximately 2 h to generate a subject-specific model, will facilitate interdisciplinary research between the biomechanics and neuroimaging fields and could enable future use of biomechanical models in the clinical setting as a tool for improving diagnosis.
基于有限元的大脑模型对于研究创伤性脑损伤(TBI)的机制至关重要。然而,由于基于个体的模型的手动开发非常耗时,因此 FE 大脑模型通常仅限于单个神经解剖结构。本研究的目的是开发一种使用先前开发的非线性图像配准技术自动生成基于个体的有限元大脑模型的管道,同时保留外部和内部神经解剖结构的特征。为了验证形态变形引起的网格变形不会影响大脑变形响应,我们比较了使用变形模型预测的应变分布与相同个体的手动创建的体素模型的应变分布。为年龄范围在 44 岁的 44 名受试者生成了变形和体素模型,并使用足球脑震荡病例的头部运动学进行了模拟。对于每个受试者,每个模型类型预测的大脑应变分布是一致的,并且在模型类型之间应变预测的差异小于 4%。这种自动化技术大约需要 2 小时即可生成一个基于个体的模型,将促进生物力学和神经影像学领域的跨学科研究,并可能使生物力学模型在临床环境中作为改善诊断的工具得到未来的应用。