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Machine learning of Raman spectra predicts drug release from polysaccharide coatings for targeted colonic delivery.

Authors :
Abdalla, Youssef
McCoubrey, Laura E.
Ferraro, Fabiana
Sonnleitner, Lisa Maria
Guinet, Yannick
Siepmann, Florence
Hédoux, Alain
Siepmann, Juergen
Basit, Abdul W.
Orlu, Mine
Shorthouse, David
Source :
Journal of Controlled Release. Oct2024, Vol. 374, p103-111. 9p.
Publication Year :
2024

Abstract

Colonic drug delivery offers numerous pharmaceutical opportunities, including direct access to local therapeutic targets and drug bioavailability benefits arising from the colonic epithelium's reduced abundance of cytochrome P450 enzymes and particular efflux transporters. Current workflows for developing colonic drug delivery systems involve time-consuming, low throughput in vitro and in vivo screening methods, which hinder the identification of suitable enabling materials. Polysaccharides are useful materials for colonic targeting, as they can be utilised as dosage form coatings that are selectively digested by the colonic microbiota. However, polysaccharides are a heterogeneous family of molecules with varying suitability for this purpose. To address the need for high-throughput material selection tools for colonic drug delivery, we leveraged machine learning (ML) and publicly accessible experimental data to predict the release of the drug 5-aminosalicylic acid from polysaccharide-based coatings in simulated human, rat, and dog colonic environments. For the first time, Raman spectra alone were used to characterise polysaccharides for input as ML features. Models were validated on 8 unseen drug release profiles from new polysaccharide coatings, demonstrating the generalisability and reliability of the method. Further, model analysis facilitated an understanding of the chemical features that influence a polysaccharide's suitability for colonic drug delivery. This work represents a major step in employing spectral data for forecasting drug release from pharmaceutical formulations and marks a significant advancement in the field of colonic drug delivery. It offers a powerful tool for the efficient, sustainable, and successful development and pre-ranking of colon-targeted formulation coatings, paving the way for future more effective and targeted drug delivery strategies. [Display omitted] • A new Raman spectrum processing pipeline for effective Machine Learning. • Raman spectra of polysaccharide coatings can successfully predict 5-ASA release. • ML model is robust in human, rat and dog IBD-simulated colonic environments. • Model interpretation revealed coating molecular properties influencing 5-ASA release. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01683659
Volume :
374
Database :
Academic Search Index
Journal :
Journal of Controlled Release
Publication Type :
Academic Journal
Accession number :
179733989
Full Text :
https://doi.org/10.1016/j.jconrel.2024.08.010