Department of Biomaterials, Max Planck Institute of Colloids and Interfaces, 14476 Potsdam, Germany;
Berlin-Brandenburg School for Regenerative Therapies, Charité-Universitätsmedizin Berlin, 13353 Berlin, Germany.
Proc Natl Acad Sci U S A. 2020 Dec 22;117(51):32251-32259. doi: 10.1073/pnas.2011504117. Epub 2020 Dec 7.
Organisms rely on mechanosensing mechanisms to adapt to changes in their mechanical environment. Fluid-filled network structures not only ensure efficient transport but can also be employed for mechanosensation. The lacunocanalicular network (LCN) is a fluid-filled network structure, which pervades our bones and accommodates a cell network of osteocytes. For the mechanism of mechanosensation, it was hypothesized that load-induced fluid flow results in forces that can be sensed by the cells. We use a controlled in vivo loading experiment on murine tibiae to test this hypothesis, whereby the mechanoresponse was quantified experimentally by in vivo micro-computed tomography (µCT) in terms of formed and resorbed bone volume. By imaging the LCN using confocal microscopy in bone volumes covering the entire cross-section of mouse tibiae and by calculating the fluid flow in the three-dimensional (3D) network, we could perform a direct comparison between predictions based on fluid flow velocity and the experimentally measured mechanoresponse. While local strain distributions estimated by finite-element analysis incorrectly predicts preferred bone formation on the periosteal surface, we demonstrate that additional consideration of the LCN architecture not only corrects this erroneous bias in the prediction but also explains observed differences in the mechanosensitivity between the three investigated mice. We also identified the presence of vascular channels as an important mechanism to locally reduce fluid flow. Flow velocities increased for a convergent network structure where all of the flow is channeled into fewer canaliculi. We conclude that, besides mechanical loading, LCN architecture should be considered as a key determinant of bone adaptation.
生物依靠机械感受机制来适应其机械环境的变化。充满流体的网络结构不仅能确保有效的物质传输,还能用于机械感受。陷窝管网(LCN)是一种充满流体的网络结构,它遍布我们的骨骼并容纳了骨细胞的网络。对于机械感受的机制,人们假设负载诱导的流体流动会产生细胞可以感知的力。我们使用在鼠胫骨上进行的受控体内加载实验来测试这个假设,通过体内微计算机断层扫描(µCT)实验测量形成和吸收的骨体积来定量测量机械响应。通过在覆盖鼠胫骨整个横截面的骨体积中使用共聚焦显微镜对 LCN 进行成像,并通过计算三维(3D)网络中的流体流动,我们可以直接比较基于流体流动速度的预测与实验测量的机械响应。虽然通过有限元分析估计的局部应变分布错误地预测了骨形成在骨膜表面的偏好,但我们证明,对 LCN 结构的额外考虑不仅纠正了预测中的这种错误偏差,还解释了在三种被研究的小鼠之间机械敏感性的差异。我们还发现血管通道的存在是局部降低流体流动的重要机制。对于所有流体都被集中到较少的管腔中的会聚网络结构,流速增加。我们的结论是,除了机械加载外,LCN 结构也应被视为骨骼适应的关键决定因素。