Machine learning-assisted microfluidic approach for broad-spectrum liposome size control.

Journal of pharmaceutical analysis Pub Date : 2025-06-01 Epub Date: 2025-02-03 DOI:10.1016/j.jpha.2025.101221
Yujie Jia, Xiao Liang, Li Zhang, Jun Zhang, Hajra Zafar, Shan Huang, Yi Shi, Jian Chen, Qi Shen
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Abstract

Liposomes serve as critical carriers for drugs and vaccines, with their biological effects influenced by their size. The microfluidic method, renowned for its precise control, reproducibility, and scalability, has been widely employed for liposome preparation. Although some studies have explored factors affecting liposomal size in microfluidic processes, most focus on small-sized liposomes, predominantly through experimental data analysis. However, the production of larger liposomes, which are equally significant, remains underexplored. In this work, we thoroughly investigate multiple variables influencing liposome size during microfluidic preparation and develop a machine learning (ML) model capable of accurately predicting liposomal size. Experimental validation was conducted using a staggered herringbone micromixer (SHM) chip. Our findings reveal that most investigated variables significantly influence liposomal size, often interrelating in complex ways. We evaluated the predictive performance of several widely-used ML algorithms, including ensemble methods, through cross-validation (CV) for both liposome size and polydispersity index (PDI). A standalone dataset was experimentally validated to assess the accuracy of the ML predictions, with results indicating that ensemble algorithms provided the most reliable predictions. Specifically, gradient boosting was selected for size prediction, while random forest was employed for PDI prediction. We successfully produced uniform large (600 nm) and small (100 nm) liposomes using the optimised experimental conditions derived from the ML models. In conclusion, this study presents a robust methodology that enables precise control over liposome size distribution, offering valuable insights for medicinal research applications.

广谱脂质体尺寸控制的机器学习辅助微流控方法。
脂质体是药物和疫苗的重要载体,其生物学效应受其大小的影响。微流控方法以其精确控制、重现性和可扩展性而闻名,已广泛应用于脂质体制备。虽然一些研究探讨了微流控过程中影响脂质体大小的因素,但大多数研究集中在小尺寸脂质体上,主要是通过实验数据分析。然而,同样重要的更大的脂质体的生产仍未得到充分探索。在这项工作中,我们深入研究了微流体制备过程中影响脂质体大小的多个变量,并开发了一个能够准确预测脂质体大小的机器学习(ML)模型。实验验证采用交错人字形微混合器(SHM)芯片。我们的研究结果表明,大多数被调查的变量显著影响脂质体大小,往往以复杂的方式相互关联。我们通过交叉验证(CV)对脂质体大小和多分散性指数(PDI)评估了几种广泛使用的ML算法的预测性能,包括集成方法。实验验证了一个独立的数据集来评估机器学习预测的准确性,结果表明集成算法提供了最可靠的预测。具体而言,采用梯度增强方法进行大小预测,采用随机森林方法进行PDI预测。我们利用从ML模型中获得的优化实验条件成功地生产了均匀的大(600 nm)和小(100 nm)脂质体。总之,本研究提出了一种强大的方法,可以精确控制脂质体的大小分布,为医学研究应用提供有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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