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  3. Leveraging machine learning to streamline the development of liposomal drug delivery systems.
 

Leveraging machine learning to streamline the development of liposomal drug delivery systems.

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BORIS DOI
10.48620/76931
Date of Publication
December 2024
Publication Type
Article
Division/Institute

Department of Chemist...

DCBP Gruppe Prof. Rey...

DCBP Gruppe Prof. Luc...

Contributor
Eugster, Remo
Department of Chemistry, Biochemistry and Pharmaceutical Sciences (DCBP)
DCBP Gruppe Prof. Luciani
Orsi, Markus
DCBP Gruppe Prof. Reymond
Buttitta, Giorgio
Serafini, Nicola
Tiboni, Mattia
Casettari, Luca
Reymond, Jean-Louisorcid-logo
DCBP Gruppe Prof. Reymond
Aleandri, Simone
DCBP Gruppe Prof. Luciani
Luciani, Paolaorcid-logo
DCBP Gruppe Prof. Luciani
Series
Journal of Controlled Release
ISSN or ISBN (if monograph)
1873-4995
0168-3659
Publisher
Elsevier
Language
English
Publisher DOI
10.1016/j.jconrel.2024.10.065
PubMed ID
39489466
Uncontrolled Keywords

Artificial intelligen...

Drug delivery & devel...

Liposomes

Machine learning

Microfluidics

Description
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.
Handle
https://boris-portal.unibe.ch/handle/20.500.12422/189724
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1-s2.0-S0168365924007387-main.pdftextAdobe PDF6.83 MBOpen
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