Department of Oncology and Metabolism, Mellanby Centre for Bone Research, University of Sheffield, Sheffield, UK.
INSIGNEO Institute for in Silico Medicine, University of Sheffield, Sheffield, UK.
Biomech Model Mechanobiol. 2021 Jun;20(3):941-955. doi: 10.1007/s10237-021-01422-y. Epub 2021 Feb 1.
New treatments for bone diseases require testing in animal models before clinical translation, and the mouse tibia is among the most common models. In vivo micro-Computed Tomography (microCT)-based micro-Finite Element (microFE) models can be used for predicting the bone strength non-invasively, after proper validation against experimental data. Different modelling techniques can be used to estimate the bone properties, and the accuracy associated with each is unclear. The aim of this study was to evaluate the ability of different microCT-based microFE models to predict the mechanical properties of the mouse tibia under compressive load. Twenty tibiae were microCT scanned at 10.4 µm voxel size and subsequently compressed at 0.03 mm/s until failure. Stiffness and failure load were measured from the load-displacement curves. Different microFE models were generated from each microCT image, with hexahedral or tetrahedral mesh, and homogeneous or heterogeneous material properties. Prediction accuracy was comparable among models. The best correlations between experimental and predicted mechanical properties, as well as lower errors, were obtained for hexahedral models with homogeneous material properties. Experimental stiffness and predicted stiffness were reasonably well correlated (R = 0.53-0.65, average error of 13-17%). A lower correlation was found for failure load (R = 0.21-0.48, average error of 9-15%). Experimental and predicted mechanical properties normalized by the total bone mass were strongly correlated (R = 0.75-0.80 for stiffness, R = 0.55-0.81 for failure load). In conclusion, hexahedral models with homogeneous material properties based on in vivo microCT images were shown to best predict the mechanical properties of the mouse tibia.
新的骨骼疾病治疗方法需要在临床转化前在动物模型中进行测试,而小鼠胫骨是最常见的模型之一。基于体内微计算机断层扫描(microCT)的微有限元(microFE)模型可用于在经过适当验证后对骨骼强度进行无创预测。可以使用不同的建模技术来估计骨骼特性,并且每种方法的准确性尚不清楚。本研究旨在评估不同基于 microCT 的 microFE 模型预测小鼠胫骨在压缩载荷下的机械性能的能力。将 20 个胫骨以 10.4μm 体素大小进行 microCT 扫描,然后以 0.03mm/s 的速度压缩直至失效。从载荷-位移曲线上测量刚度和失效载荷。从每个 microCT 图像生成不同的 microFE 模型,具有六面体或四面体网格以及均匀或非均匀的材料特性。模型之间的预测准确性相当。具有均匀材料特性的六面体模型与实验力学性能之间具有最佳的相关性,并且误差较低。实验刚度与预测刚度之间具有较好的相关性(R=0.53-0.65,平均误差为 13%-17%)。失效载荷的相关性较低(R=0.21-0.48,平均误差为 9%-15%)。归一化到总骨质量的实验和预测力学性能之间具有很强的相关性(刚度的 R=0.75-0.80,失效载荷的 R=0.55-0.81)。总之,基于体内 microCT 图像的具有均匀材料特性的六面体模型被证明可以最好地预测小鼠胫骨的力学性能。