DeLoid Glen M, Cohen Joel M, Pyrgiotakis Georgios, Pirela Sandra V, Pal Anoop, Liu Jiying, Srebric Jelena, Demokritou Philip
Center for Nanotechnology and Nanotoxicology, Department of Environmental Health, Harvard T.H. Chan School of Public Health, 655 Huntington Ave, Boston, MA, 02115, USA.
Department of Architectural Engineering, The Pennsylvania State University, University Park, PA, 16802, USA.
Part Fibre Toxicol. 2015 Oct 24;12:32. doi: 10.1186/s12989-015-0109-1.
Accurate and meaningful dose metrics are a basic requirement for in vitro screening to assess potential health risks of engineered nanomaterials (ENMs). Correctly and consistently quantifying what cells "see," during an in vitro exposure requires standardized preparation of stable ENM suspensions, accurate characterizatoin of agglomerate sizes and effective densities, and predictive modeling of mass transport. Earlier transport models provided a marked improvement over administered concentration or total mass, but included assumptions that could produce sizable inaccuracies, most notably that all particles at the bottom of the well are adsorbed or taken up by cells, which would drive transport downward, resulting in overestimation of deposition.
Here we present development, validation and results of two robust computational transport models. Both three-dimensional computational fluid dynamics (CFD) and a newly-developed one-dimensional Distorted Grid (DG) model were used to estimate delivered dose metrics for industry-relevant metal oxide ENMs suspended in culture media. Both models allow simultaneous modeling of full size distributions for polydisperse ENM suspensions, and provide deposition metrics as well as concentration metrics over the extent of the well. The DG model also emulates the biokinetics at the particle-cell interface using a Langmuir isotherm, governed by a user-defined dissociation constant, K(D), and allows modeling of ENM dissolution over time.
Dose metrics predicted by the two models were in remarkably close agreement. The DG model was also validated by quantitative analysis of flash-frozen, cryosectioned columns of ENM suspensions. Results of simulations based on agglomerate size distributions differed substantially from those obtained using mean sizes. The effect of cellular adsorption on delivered dose was negligible for K(D) values consistent with non-specific binding (> 1 nM), whereas smaller values (≤ 1 nM) typical of specific high-affinity binding resulted in faster and eventual complete deposition of material.
The advanced models presented provide practical and robust tools for obtaining accurate dose metrics and concentration profiles across the well, for high-throughput screening of ENMs. The DG model allows rapid modeling that accommodates polydispersity, dissolution, and adsorption. Result of adsorption studies suggest that a reflective lower boundary condition is appropriate for modeling most in vitro ENM exposures.
准确且有意义的剂量指标是体外筛选以评估工程纳米材料(ENM)潜在健康风险的基本要求。在体外暴露期间,要正确且一致地量化细胞“所见”,需要对稳定的ENM悬浮液进行标准化制备,准确表征团聚体尺寸和有效密度,并对质量传输进行预测建模。早期的传输模型比给药浓度或总质量有显著改进,但包含可能产生较大误差的假设,最明显的是孔底部的所有颗粒都被细胞吸附或摄取,这会驱使传输向下,导致沉积估计过高。
在此,我们展示了两种强大的计算传输模型的开发、验证和结果。三维计算流体动力学(CFD)和新开发的一维畸变网格(DG)模型都用于估计悬浮在培养基中的与工业相关的金属氧化物ENM的给药剂量指标。这两种模型都允许对多分散ENM悬浮液的全尺寸分布进行同步建模,并在孔的范围内提供沉积指标以及浓度指标。DG模型还使用由用户定义的解离常数K(D)控制的朗缪尔等温线模拟颗粒-细胞界面处的生物动力学,并允许对ENM随时间的溶解进行建模。
两种模型预测的剂量指标非常接近。DG模型还通过对ENM悬浮液的快速冷冻、冷冻切片柱进行定量分析得到验证。基于团聚体尺寸分布的模拟结果与使用平均尺寸获得的结果有很大差异。对于与非特异性结合(>1 nM)一致的K(D)值,细胞吸附对给药剂量的影响可以忽略不计,而典型的特异性高亲和力结合的较小值(≤1 nM)导致物质更快并最终完全沉积。
所展示的先进模型为在孔中获得准确的剂量指标和浓度分布提供了实用且强大的工具,用于ENM的高通量筛选。DG模型允许进行快速建模,可适应多分散性、溶解和吸附。吸附研究结果表明,反射性较低边界条件适用于模拟大多数体外ENM暴露。