Department of Civil Engineering and Architecture, Università degli Studi di Pavia, Via Ferrata 3, Pavia, Italy.
Department of Drug Sciences, Università degli Studi di Pavia, V.le Taramelli 12, Pavia, Italy.
Ann Biomed Eng. 2024 Dec;52(12):3240-3252. doi: 10.1007/s10439-024-03590-1. Epub 2024 Aug 4.
In the last few years, the microfluidic production of nanoparticles (NPs) is becoming a promising alternative to conventional industrial approaches (e.g., nanoprecipitation, salting out, and emulsification-diffusion) thanks to the production efficiency, low variability, and high controllability of the production parameters. Nevertheless, the development of new formulations and the switching of the production process toward microfluidic platforms requires expensive and time-consuming number of experiments for the tuning of the formulation to obtain NPs with specific morphological and functional characteristics. In this work, we developed a computational fluid dynamic pipeline, validated through an ad hoc experimental strategy, to reproduce the mixing between the solvent and anti-solvent (i.e., acetonitrile and TRIS-HCl, respectively). Moreover, beyond the classical variables able to describe the mixing performances of the microfluidic chip, novel variables were described in order to assess the region of the NPs formation and the changing of the amplitude of the precipitation region according to different hydraulic conditions. The numerical approach proved to be able to capture a progressive reduction of the nanoprecipitation region due to an increment of the flow rate ratio; in parallel, through the experimental production, a progressive increment of the NPs size heterogeneity was observed with the same fluid dynamic conditions. Hence, the preliminary comparison between numerical and experimental evidence proved the effectiveness of the computational strategy to optimize the NPs manufacturing process.
在过去的几年中,由于生产效率高、变异性低且生产参数可控性高,微流控生产纳米颗粒 (NPs) 正成为传统工业方法(例如,纳米沉淀、盐析和乳化-扩散)的有前途的替代方法。然而,为了开发新配方并将生产过程切换到微流控平台,需要进行昂贵且耗时的大量实验来调整配方,以获得具有特定形态和功能特征的 NPs。在这项工作中,我们开发了一个计算流体动力学管道,通过专门的实验策略进行了验证,以再现溶剂和反溶剂(即乙腈和 TRIS-HCl)之间的混合。此外,除了能够描述微流控芯片混合性能的经典变量外,还描述了新变量,以便根据不同的水力条件评估 NPs 形成区域和沉淀区域幅度变化。数值方法证明能够捕获由于流速比增加而导致的纳米沉淀区域的逐渐减少;同时,通过实验生产,在相同的流体动力学条件下观察到 NPs 尺寸异质性逐渐增加。因此,数值和实验证据之间的初步比较证明了计算策略优化 NPs 制造过程的有效性。