Artificial neural network based particle size prediction of polymeric nanoparticles

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TitreArtificial neural network based particle size prediction of polymeric nanoparticles
Type de publicationJournal Article
Year of Publication2017
AuteursYoushia J, Ali MEhab, Lamprecht A
JournalEUROPEAN JOURNAL OF PHARMACEUTICS AND BIOPHARMACEUTICS
Volume119
Pagination333-342
Date PublishedOCT
Type of ArticleArticle
ISSN0939-6411
Mots-clésArtificial neural network, Contact angle, In-silico, Interfacial tension, Particle size, Polymeric nanoparticles, Prediction, Viscosity
Résumé

Particle size of nanoparticles and the respective polydispersity are key factors influencing their biopharmaceutical behavior in a large variety of therapeutic applications. Predicting these attributes would skip many preliminary studies usually required to optimize formulations. The aim was to build a mathematical model capable of predicting the particle size of polymeric nanoparticles produced by a pharmaceutical polymer of choice. Polymer properties controlling the particle size were identified as molecular weight, hydrophobicity and surface activity, and were quantified by measuring polymer viscosity, contact angle and interfacial tension, respectively. A model was built using artificial neural network including these properties as input with particle size and polydispersity index as output. The established model successfully predicted particle size of nanoparticles covering a range of 70-400 nm prepared from other polymers. The percentage bias for particle prediction was 2%, 4% and 6%, for the training, validation and testing data, respectively. Polymer surface activity was found to have the highest impact on the particle size followed by viscosity and finally hydrophobicity. Results of this study successfully highlighted polymer properties affecting particle size and confirmed the usefulness of artificial neural networks in predicting the particle size and polydispersity of polymeric nanoparticles. (C) 2017 Elsevier B.V. All rights reserved.

DOI10.1016/j.ejpb.2017.06.030