Derivation, validation, and prediction of loading-induced mineral apposition rates at endocortical and periosteal bone surfaces based on fluid velocity and pore pressure

IF 2.1 Q3 ENDOCRINOLOGY & METABOLISM
Sanjay Singh, Satwinder Jit Singh, Jitendra Prasad
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引用次数: 0

Abstract

The capacity of bone to optimize its structure in response to mechanical loads has been widely observed. The mechanical load acting on a bone at the macroscopic level influences the bone cells, particularly osteocytes within the lacunae canalicular network (LCN). Osteocytes are responsive to a range of physical signals, including strain, interstitial fluid flow, and pore pressure. However, physiological tissue strain is known to be typically smaller than that required to directly induce bone formation. On the other hand, as per evidence provided by this study from the literature, models based on fluid flow alone cannot simultaneously predict bone formation at both the periosteal and endocortical surfaces. This suggests that another component of the osteocyte's mechanical environment, such as pore pressure, may play an essential role in bone adaptation, either alone or in combination with other stimuli, such as tissue strain and/or interstitial fluid flow. In vitro experiments have also confirmed that osteocytes respond to cyclic pore pressure and, thus, have a mechanism to sense the pressure, possibly because of its viscoelasticity.

In this work, dissipation energy density, being irreversible work done per unit volume, has been successfully used as a greater stimulus to incorporate all of the parameters of mechanical environments of the LCN, such as waveforms of both fluid velocity and pore pressure, number of loading cycles. Mineral Apposition Rate (MAR) has also been mathematically derived to be proportional to the square root of the dissipation energy density minus its reference value. A hypothesis is accordingly proposed and successfully tested/validated for both endocortical and periosteal surfaces with respect to an in-vivo study on mouse tibia available in the literature. The constant of proportionality and the reference/threshold value of the dissipation energy density are determined through a nonlinear curve fitting. The mathematical/computational method thus developed is then successfully used to predict MAR at both endocortical and periosteal surfaces induced by a different loading condition.

Computational implementation of the mathematical model has been done through a poroelastic finite element analysis of bone, where bone is assumed to be porous and filled with fluid, with a boundary condition that the periosteum is impermeable to the fluid and the endosteal surface maintains a reference zero pressure. This work also provides evidence for these assumptions to be true based on the state-of-the-art literature on related experimental studies. The currently developed model shows that the bone uses these conditions (assumptions) to its advantage, as the greater stimulus, i.e., the dissipation energy due to both fluid flow and pore pressure, are of a similar order at both the surfaces, and hence osteogenesis of the same order at both the surfaces.

As a bottom line, the resulting model is the first of its kind as it has been able to correctly predict MAR at both endocortical and periosteal surfaces. This study thus significantly advances the modeling of cortical bone adaptation to exogenous mechanical loading.

基于流体速度和孔隙压力的皮质内和骨膜表面负载诱导的矿物附着率的推导、验证和预测
骨优化其结构以响应机械载荷的能力已被广泛观察。在宏观水平上作用于骨的机械负荷影响骨细胞,特别是腔隙管网络(LCN)内的骨细胞。骨细胞对一系列物理信号有反应,包括应变、间质液流动和孔隙压力。然而,已知生理组织应变通常小于直接诱导骨形成所需的应变。另一方面,根据本研究从文献中提供的证据,仅基于流体流动的模型不能同时预测骨膜和皮质内表面的骨形成。这表明骨细胞机械环境的另一个组成部分,如孔隙压力,可能单独或与其他刺激(如组织应变和/或间质液流动)联合在骨适应中起重要作用。体外实验也证实骨细胞对循环孔隙压力有反应,因此具有一种感知压力的机制,可能是因为其粘弹性。在这项工作中,耗散能密度作为单位体积所做的不可逆功,已经成功地作为一个更大的刺激因素,纳入了LCN机械环境的所有参数,如流体速度和孔隙压力的波形,加载循环次数。矿物堆积率(MAR)也被数学推导为与耗散能量密度减去其参考值的平方根成正比。根据文献中对小鼠胫骨的体内研究,我们提出了一个假设,并成功地对皮质内表面和骨膜表面进行了测试/验证。通过非线性曲线拟合确定了比例常数和耗散能量密度的参考/阈值。由此开发的数学/计算方法随后成功地用于预测不同载荷条件下皮层内和骨膜表面的MAR。数学模型的计算实现是通过骨的孔隙弹性有限元分析完成的,其中假设骨是多孔的,充满液体,边界条件是骨膜对液体不渗透,骨膜内表面保持参考零压力。本工作还根据相关实验研究的最新文献为这些假设的真实性提供了证据。目前开发的模型表明,骨利用这些条件(假设)来发挥其优势,因为更大的刺激,即流体流动和孔隙压力引起的耗散能,在两个表面上的顺序相似,因此在两个表面上的成骨顺序相同。总的来说,该模型是同类模型中的第一个,因为它能够正确预测皮层内和骨膜表面的MAR。因此,这项研究显著地推进了外源性机械载荷下皮质骨适应性的建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Bone Reports
Bone Reports Medicine-Orthopedics and Sports Medicine
CiteScore
4.30
自引率
4.00%
发文量
444
审稿时长
57 days
期刊介绍: Bone Reports is an interdisciplinary forum for the rapid publication of Original Research Articles and Case Reports across basic, translational and clinical aspects of bone and mineral metabolism. The journal publishes papers that are scientifically sound, with the peer review process focused principally on verifying sound methodologies, and correct data analysis and interpretation. We welcome studies either replicating or failing to replicate a previous study, and null findings. We fulfil a critical and current need to enhance research by publishing reproducibility studies and null findings.
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