Peyrounette Myriam, Davit Yohan, Quintard Michel, Lorthois Sylvie
Institut de Mécanique des Fluides de Toulouse, IMFT, Université de Toulouse, CNRS - Toulouse, France.
Nancy E. and Peter C. Meinig School of Biomedical Engineering, Cornell University, Ithaca, NY, United States of America.
PLoS One. 2018 Jan 11;13(1):e0189474. doi: 10.1371/journal.pone.0189474. eCollection 2018.
Aging or cerebral diseases may induce architectural modifications in human brain microvascular networks, such as capillary rarefaction. Such modifications limit blood and oxygen supply to the cortex, possibly resulting in energy failure and neuronal death. Modelling is key in understanding how these architectural modifications affect blood flow and mass transfers in such complex networks. However, the huge number of vessels in the human brain-tens of billions-prevents any modelling approach with an explicit architectural representation down to the scale of the capillaries. Here, we introduce a hybrid approach to model blood flow at larger scale in the brain microcirculation, based on its multiscale architecture. The capillary bed, which is a space-filling network, is treated as a porous medium and modelled using a homogenized continuum approach. The larger arteriolar and venular trees, which cannot be homogenized because of their fractal-like nature, are treated as a network of interconnected tubes with a detailed representation of their spatial organization. The main contribution of this work is to devise a proper coupling model at the interface between these two components. This model is based on analytical approximations of the pressure field that capture the strong pressure gradients building up in the capillaries connected to arterioles or venules. We evaluate the accuracy of this model for both very simple architectures with one arteriole and/or one venule and for more complex ones, with anatomically realistic tree-like vessels displaying a large number of coupling sites. We show that the hybrid model is very accurate in describing blood flow at large scales and further yields a significant computational gain by comparison with a classical network approach. It is therefore an important step towards large scale simulations of cerebral blood flow and lays the groundwork for introducing additional levels of complexity in the future.
衰老或脑部疾病可能会导致人类脑微血管网络的结构改变,比如毛细血管稀疏。这种改变会限制血液和氧气向皮层的供应,可能导致能量衰竭和神经元死亡。建模是理解这些结构改变如何影响如此复杂网络中的血流和物质传输的关键。然而,人类大脑中数以百亿计的血管数量众多,这使得任何一种能够明确表示毛细血管尺度结构的建模方法都无法实现。在此,我们基于脑微循环的多尺度结构,引入一种混合方法来模拟更大尺度下的血流。作为一种空间填充网络的毛细血管床被视为多孔介质,并采用均匀化连续介质方法进行建模。较大的小动脉和小静脉树由于其类似分形的性质无法进行均匀化处理,因此被视为相互连接的管道网络,并对其空间组织进行详细表示。这项工作的主要贡献在于设计了这两个组件之间界面处的适当耦合模型。该模型基于压力场的解析近似,捕捉了连接到小动脉或小静脉的毛细血管中形成的强压力梯度。我们评估了该模型对于具有一根小动脉和/或一根小静脉的非常简单结构以及对于具有大量耦合位点的解剖学上逼真的树状血管的更复杂结构的准确性。我们表明,与经典网络方法相比,混合模型在描述大尺度血流方面非常准确,并且进一步带来了显著的计算增益。因此,这是迈向大规模脑血流模拟的重要一步,并为未来引入更高层次的复杂性奠定了基础。