Computational Sciences Laboratory (UCY-CompSci), Department of Mechanical and Manufacturing Engineering, University of Cyprus, Kallipoleos Avenue 75, Nicosia 1678, Cyprus.
Department of Biomedical Engineering, Technion-Israel Institute of Technology, Technion City, Haifa, Israel.
Eur J Pharm Sci. 2018 Feb 15;113:132-144. doi: 10.1016/j.ejps.2017.09.016. Epub 2017 Sep 14.
High-fidelity simulations of the complete airway tree are still largely beyond current computational capabilities. Towards large-scale simulations of the human lung, the current study introduces a numerical methodology to predict particle deposition in a simplified approximation of the deep lung during a full breathing cycle. The geometrical model employed consists of an idealised bronchial tree that represents generations 10 to 19 of the conducting zone and a heterogeneous acinar model created using a space-filling algorithm. The computational cost of the coupled simulation is reduced by taking advantage of the flow similarity across the central conducting regions in order to decompose the bronchial tree into representative subunits. Topological information is used to account for the correct gravitational force on the particles in the representative bifurcations, emulating their transport characteristics in the actual bronchial tree. Eventually, airflow and particle transport are simulated in a single representative bifurcation and a single acinar model, resulting in great savings in computational cost. An Eulerian-Lagrangian approach has been used for solving the flow and particle equations during sinusoidal breathing in the decomposed domain. The resulting deposition estimates agree rather well with the known deposition trends reported in the literature, while offering additional insights. For 1-5μm particles, deposition during exhalation is comparable to deposition upon inhalation, suggesting the use of breath-hold maneuvers to further increase sedimentation of these particles. Airway orientation relative to gravity was found to have a significant impact on deposition rates, especially for particles above 2μm and to be higher in the more distal generations, due to the wider range of angles relative to the direction of gravity. In the acinus, particles in the 2-5μm range have a quite high average deposition efficiency that reaches approximately 75% and shows considerable variation (12.4%) due to airway orientation. Finally, a simplified semi-analytical approach is introduced that can lead to even further reduction in computational costs, while incurring only a small loss in accuracy.
高保真模拟整个气道树仍然在很大程度上超出了当前的计算能力。为了对人类肺部进行大规模模拟,本研究提出了一种数值方法,以预测在整个呼吸周期内简化的深肺部颗粒沉积。所采用的几何模型由代表传导区第 10 至 19 代的理想化支气管树和使用空间填充算法创建的异质腺模型组成。通过利用中心传导区域的流相似性来分解支气管树为代表的子单元,可以降低耦合模拟的计算成本。拓扑信息用于模拟在实际支气管树中正确的重力作用在代表分支处的颗粒,模拟其输送特性。最终,在单个代表分支和单个腺模型中模拟气流和颗粒输送,从而大大节省了计算成本。在分解域中进行正弦呼吸时,采用欧拉-拉格朗日方法求解流和颗粒方程。沉积估计与文献中报道的已知沉积趋势相当吻合,同时提供了更多的见解。对于 1-5μm 的颗粒,呼气时的沉积与吸气时的沉积相当,表明使用屏气动作可以进一步增加这些颗粒的沉降。发现气道相对于重力的方向对沉积率有显著影响,特别是对于大于 2μm 的颗粒,并且在更远端的代中更高,这是由于相对于重力方向的角度范围更广。在腺中,2-5μm 范围内的颗粒具有相当高的平均沉积效率,达到约 75%,并且由于气道方向的不同而表现出相当大的变化(12.4%)。最后,引入了一种简化的半分析方法,可以进一步降低计算成本,而仅损失少量的准确性。