分散性
微流控
脂质体
材料科学
纳米颗粒
姜黄素
纳米技术
混合(物理)
生物系统
化学
生物化学
高分子化学
生物
物理
量子力学
作者
Valentina Di Francesco,Daniela P. Boso,Thomas L. Moore,Bernhard A. Schrefler,Paolo Decuzzi
标识
DOI:10.1007/s10544-023-00671-1
摘要
The association of machine learning (ML) tools with the synthesis of nanoparticles has the potential to streamline the development of more efficient and effective nanomedicines. The continuous-flow synthesis of nanoparticles via microfluidics represents an ideal playground for ML tools, where multiple engineering parameters - flow rates and mixing configurations, type and concentrations of the reagents - contribute in a non-trivial fashion to determine the resultant morphological and pharmacological attributes of nanomedicines. Here we present the application of ML models towards the microfluidic-based synthesis of liposomes loaded with a model hydrophobic therapeutic agent, curcumin. After generating over 200 different liposome configurations by systematically modulating flow rates, lipid concentrations, organic:water mixing volume ratios, support-vector machine models and feed-forward artificial neural networks were trained to predict, respectively, the liposome dispersity/stability and size. This work presents an initial step towards the application and cultivation of ML models to instruct the microfluidic formulation of nanoparticles.
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