Eugster Remo, Orsi Markus, Buttitta Giorgio, Serafini Nicola, Tiboni Mattia, Casettari Luca, Reymond Jean-Louis, Aleandri Simone, Luciani Paola
Department of Chemistry, Biochemistry and Pharmaceutical Sciences, University of Bern, Bern, Switzerland.
Department of Chemistry and Technologies of Drugs, Sapienza University of Rome, Rome, Lazio, Italy.
J Control Release. 2024 Dec;376:1025-1038. doi: 10.1016/j.jconrel.2024.10.065. Epub 2024 Nov 8.
Drug delivery systems efficiently and safely administer therapeutic agents to specific body sites. Liposomes, spherical vesicles made of phospholipid bilayers, have become a powerful tool in this field, especially with the rise of microfluidic manufacturing during the COVID-19 pandemic. Despite its efficiency, microfluidic liposomal production poses challenges, often requiring laborious, optimization on a case-by-case basis. This is due to a lack of comprehensive understanding and robust methodologies, compounded by limited data on microfluidic production with varying lipids. Artificial intelligence offers promise in predicting lipid behaviour during microfluidic production, with the still unexploited potential of streamlining development. Herein we employ machine learning to predict critical quality attributes and process parameters for microfluidic-based liposome production. Validated models predict liposome formation, size, and production parameters, significantly advancing our understanding of lipid behaviour. Extensive model analysis enhanced interpretability and investigated underlying mechanisms, supporting the transition to microfluidic production. Unlocking the potential of machine learning in drug development can accelerate pharmaceutical innovation, making drug delivery systems more adaptable and accessible.
药物递送系统能够高效、安全地将治疗剂输送到特定的身体部位。脂质体是由磷脂双层构成的球形囊泡,已成为该领域的有力工具,尤其是在新冠疫情期间微流控制造兴起之后。尽管微流控脂质体生产效率高,但也面临挑战,通常需要费力地逐案进行优化。这是由于缺乏全面的理解和可靠的方法,再加上关于不同脂质微流控生产的数据有限。人工智能有望预测微流控生产过程中的脂质行为,其尚未开发的潜力可简化研发过程。在此,我们利用机器学习来预测基于微流控的脂质体生产的关键质量属性和工艺参数。经过验证的模型可预测脂质体的形成、大小和生产参数,显著增进了我们对脂质行为的理解。广泛的模型分析提高了可解释性,并研究了潜在机制,支持向微流控生产的转变。释放机器学习在药物研发中的潜力可加速制药创新,使药物递送系统更具适应性和可及性。