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基于数据驱动的方法开发疏水性药物的口服脂质纳米粒制剂。

Data-driven development of an oral lipid-based nanoparticle formulation of a hydrophobic drug.

机构信息

Leslie Dan Faculty of Pharmacy, University of Toronto, Toronto, ON, M5S 3M2, Canada.

Department of Chemistry, University of Toronto, Toronto, ON, M5S 3H6, Canada.

出版信息

Drug Deliv Transl Res. 2024 Jul;14(7):1872-1887. doi: 10.1007/s13346-023-01491-9. Epub 2023 Dec 29.

Abstract

Due to its cost-effectiveness, convenience, and high patient adherence, oral drug administration normally remains the preferred approach. Yet, the effective delivery of hydrophobic drugs via the oral route is often hindered by their limited water solubility and first-pass metabolism. To mitigate these challenges, advanced delivery systems such as solid lipid nanoparticles (SLNs) and nanostructured lipid carriers (NLCs) have been developed to encapsulate hydrophobic drugs and enhance their bioavailability. However, traditional design methodologies for these complex formulations often present intricate challenges because they are restricted to a relatively narrow design space. Here, we present a data-driven approach for the accelerated design of SLNs/NLCs encapsulating a model hydrophobic drug, cannabidiol, that combines experimental automation and machine learning. A small subset of formulations, comprising 10% of all formulations in the design space, was prepared in-house, leveraging miniaturized experimental automation to improve throughput and decrease the quantity of drug and materials required. Machine learning models were then trained on the data generated from these formulations and used to predict properties of all SLNs/NLCs within this design space (i.e., 1215 formulations). Notably, formulations predicted to be high-performers via this approach were confirmed to significantly enhance the solubility of the drug by up to 3000-fold and prevented degradation of drug. Moreover, the high-performance formulations significantly enhanced the oral bioavailability of the drug compared to both its free form and an over-the-counter version. Furthermore, this bioavailability matched that of a formulation equivalent in composition to the FDA-approved product, Epidiolex.

摘要

由于其成本效益高、使用方便以及患者依从性好,口服给药通常仍是首选方法。然而,通过口服途径有效递送疏水性药物常常受到其有限的水溶性和首过代谢的限制。为了克服这些挑战,已经开发了先进的递药系统,如固体脂质纳米粒(SLN)和纳米结构脂质载体(NLC),以包封疏水性药物并提高其生物利用度。然而,这些复杂制剂的传统设计方法通常存在复杂的挑战,因为它们受到相对较窄的设计空间的限制。在这里,我们提出了一种数据驱动的方法,用于加速设计包封模型疏水性药物大麻二酚的 SLN/NLC,该方法结合了实验自动化和机器学习。一小部分制剂(占设计空间中所有制剂的 10%)在内部制备,利用微型化实验自动化来提高通量并减少所需药物和材料的数量。然后,从这些制剂中生成的数据用于训练机器学习模型,并用于预测该设计空间内所有 SLN/NLC 的性质(即 1215 种制剂)。值得注意的是,通过这种方法预测为高性能的制剂被证实可将药物的溶解度提高高达 3000 倍,并防止药物降解。此外,与药物的游离形式和一种非专利药物相比,这些高性能制剂显著提高了药物的口服生物利用度。此外,这种生物利用度与等效组成的 FDA 批准产品 Epidiolex 相当。

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