Literature DB >> 34339755

Machine learning applied to over 900 3D printed drug delivery systems.

Brais Muñiz Castro1, Moe Elbadawi2, Jun Jie Ong2, Thomas Pollard2, Zhe Song2, Simon Gaisford3, Gilberto Pérez1, Abdul W Basit4, Pedro Cabalar5, Alvaro Goyanes6.   

Abstract

Three-dimensional printing (3DP) is a transformative technology that is advancing pharmaceutical research by producing personalized drug products. However, advances made via 3DP have been slow due to the lengthy trial-and-error approach in optimization. Artificial intelligence (AI) is a technology that could revolutionize pharmaceutical 3DP through analyzing large datasets. Herein, literature-mined data for developing AI machine learning (ML) models was used to predict key aspects of the 3DP formulation pipeline and in vitro dissolution properties. A total of 968 formulations were mined and assessed from 114 articles. The ML techniques explored were able to learn and provide accuracies as high as 93% for values in the filament hot melt extrusion process. In addition, ML algorithms were able to use data from the composition of the formulations with additional input features to predict the drug release of 3D printed formulations. The best prediction was obtained by an artificial neural network that was able to predict drug release times of a formulation with a mean error of ±24.29 min. In addition, the most important variables were revealed, which could be leveraged in formulation development. Thus, it was concluded that ML proved to be a suitable approach to modelling the 3D printing workflow.
Copyright © 2021. Published by Elsevier B.V.

Entities:  

Keywords:  Additive manufacturing and continuous manufacturing; Digital health and digital technologies; Drug delivery; Fused filament fabrication; Machine learning and predictive analysis; Personalized and precision pharmaceuticals

Year:  2021        PMID: 34339755     DOI: 10.1016/j.jconrel.2021.07.046

Source DB:  PubMed          Journal:  J Control Release        ISSN: 0168-3659            Impact factor:   9.776


  6 in total

1.  Accelerating 3D printing of pharmaceutical products using machine learning.

Authors:  Jun Jie Ong; Brais Muñiz Castro; Simon Gaisford; Pedro Cabalar; Abdul W Basit; Gilberto Pérez; Alvaro Goyanes
Journal:  Int J Pharm X       Date:  2022-06-09

2.  Machine Learning-Enabled Prediction of 3D-Printed Microneedle Features.

Authors:  Misagh Rezapour Sarabi; M Munzer Alseed; Ahmet Agah Karagoz; Savas Tasoglu
Journal:  Biosensors (Basel)       Date:  2022-07-06

3.  To infinity and beyond: Strategies for fabricating medicines in outer space.

Authors:  Iria Seoane-Viaño; Jun Jie Ong; Abdul W Basit; Alvaro Goyanes
Journal:  Int J Pharm X       Date:  2022-06-16

Review 4.  Innovations in Chewable Formulations: The Novelty and Applications of 3D Printing in Drug Product Design.

Authors:  Lucía Rodríguez-Pombo; Atheer Awad; Abdul W Basit; Carmen Alvarez-Lorenzo; Alvaro Goyanes
Journal:  Pharmaceutics       Date:  2022-08-18       Impact factor: 6.525

5.  Machine Learning Predicts Drug Metabolism and Bioaccumulation by Intestinal Microbiota.

Authors:  Laura E McCoubrey; Stavriani Thomaidou; Moe Elbadawi; Simon Gaisford; Mine Orlu; Abdul W Basit
Journal:  Pharmaceutics       Date:  2021-11-25       Impact factor: 6.321

6.  Machine Learning and Machine Vision Accelerate 3D Printed Orodispersible Film Development.

Authors:  Colm S O'Reilly; Moe Elbadawi; Neel Desai; Simon Gaisford; Abdul W Basit; Mine Orlu
Journal:  Pharmaceutics       Date:  2021-12-17       Impact factor: 6.321

  6 in total

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