Faculty of Engineering, University of Kragujevac, Sestre Janjić 6, Kragujevac, Serbia; BioIRC, Bioengineering Research and Development Center, Prvoslava Stojanovica 6, Kragujevac, Serbia.
Department of Pharmaceutical Technology and Cosmetology, University of Belgrade-Faculty of Pharmacy, Vojvode Stepe 450, Belgrade, Serbia.
Eur J Pharm Sci. 2018 Feb 15;113:171-184. doi: 10.1016/j.ejps.2017.10.022. Epub 2017 Oct 17.
One of the critical components of the respiratory drug delivery is the manner in which the inhaled aerosol is deposited in respiratory tract compartments. Depending on formulation properties, device characteristics and breathing pattern, only a certain fraction of the dose will reach the target site in the lungs, while the rest of the drug will deposit in the inhalation device or in the mouth-throat region. The aim of this study was to link the Computational fluid dynamics (CFD) with physiologically-based pharmacokinetic (PBPK) modelling in order to predict aerolisolization of different dry powder formulations, and estimate concomitant in vivo deposition and absorption of amiloride hydrochloride. Drug physicochemical properties were experimentally determined and used as inputs for the CFD simulations of particle flow in the generated 3D geometric model of Aerolizer® dry powder inhaler (DPI). CFD simulations were used to simulate air flow through Aerolizer® inhaler and Discrete Phase Method (DPM) was used to simulate aerosol particles deposition within the fluid domain. The simulated values for the percent emitted dose were comparable to the values obtained using Andersen cascade impactor (ACI). However, CFD predictions indicated that aerosolized DPI have smaller particle size and narrower size distribution than assumed based on ACI measurements. Comparison with the literature in vivo data revealed that the constructed drug-specific PBPK model was able to capture amiloride absorption pattern following oral and inhalation administration. The PBPK simulation results, based on the CFD generated particle distribution data as input, illustrated the influence of formulation properties on the expected drug plasma concentration profiles. The model also predicted the influence of potential changes in physiological parameters on the extent of inhaled amiloride absorption. Overall, this study demonstrated the potential of the combined CFD-PBPK approach to model inhaled drug bioperformance, and suggested that CFD generated results might serve as input for the prediction of drug deposition pattern in vivo.
呼吸药物输送的关键组成部分之一是吸入的气雾剂在呼吸道隔室中沉积的方式。取决于制剂特性、装置特性和呼吸模式,只有一定比例的剂量会到达肺部的靶位,而其余的药物将沉积在吸入装置或口腔-咽喉区域。本研究的目的是将计算流体动力学(CFD)与基于生理的药代动力学(PBPK)建模相结合,以预测不同干粉制剂的气溶胶化,并估计盐酸阿米洛利的同时体内沉积和吸收。药物物理化学性质通过实验确定,并用作生成的 Aerolizer®干粉吸入器(DPI)的 3D 几何模型中颗粒流 CFD 模拟的输入。CFD 模拟用于模拟空气流过 Aerolizer®吸入器,离散相法(DPM)用于模拟气溶胶颗粒在流体域内的沉积。模拟的发射剂量百分比值与使用 Andersen 级联撞击器(ACI)获得的值相当。然而,CFD 预测表明,与基于 ACI 测量假设的气溶胶化 DPI 相比,气溶胶化 DPI 的粒径更小,粒径分布更窄。与文献中的体内数据比较表明,构建的特定药物 PBPK 模型能够捕捉到口服和吸入给药后阿米洛利的吸收模式。基于 CFD 生成的颗粒分布数据作为输入的 PBPK 模拟结果说明了制剂特性对预期药物血浆浓度曲线的影响。该模型还预测了生理参数潜在变化对吸入阿米洛利吸收程度的影响。总的来说,这项研究表明了结合 CFD-PBPK 方法来模拟吸入药物生物性能的潜力,并表明 CFD 生成的结果可能可作为体内药物沉积模式预测的输入。