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Accelerating 3D printing of pharmaceutical products using machine learning

Three-dimensional printing (3DP) has seen growing interest within the healthcare industry for its ability to fabricate personalized medicines and medical devices. However, it may be burdened by the lengthy empirical process of formulation development. Active research in pharmaceutical 3DP has led to...

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Autores principales: Ong, Jun Jie, Castro, Brais Muñiz, Gaisford, Simon, Cabalar, Pedro, Basit, Abdul W., Pérez, Gilberto, Goyanes, Alvaro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9218223/
https://www.ncbi.nlm.nih.gov/pubmed/35755603
http://dx.doi.org/10.1016/j.ijpx.2022.100120
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author Ong, Jun Jie
Castro, Brais Muñiz
Gaisford, Simon
Cabalar, Pedro
Basit, Abdul W.
Pérez, Gilberto
Goyanes, Alvaro
author_facet Ong, Jun Jie
Castro, Brais Muñiz
Gaisford, Simon
Cabalar, Pedro
Basit, Abdul W.
Pérez, Gilberto
Goyanes, Alvaro
author_sort Ong, Jun Jie
collection PubMed
description Three-dimensional printing (3DP) has seen growing interest within the healthcare industry for its ability to fabricate personalized medicines and medical devices. However, it may be burdened by the lengthy empirical process of formulation development. Active research in pharmaceutical 3DP has led to a wealth of data that machine learning could utilize to provide predictions of formulation outcomes. A balanced dataset is critical for optimal predictive performance of machine learning (ML) models, but data available from published literature often only include positive results. In this study, in-house and literature-mined data on hot melt extrusion (HME) and fused deposition modeling (FDM) 3DP formulations were combined to give a more balanced dataset of 1594 formulations. The optimized ML models predicted the printability and filament mechanical characteristics with an accuracy of 84%, and predicted HME and FDM processing temperatures with a mean absolute error of 5.5 °C and 8.4 °C, respectively. The performance of these ML models was better than previous iterations with a smaller and a more imbalanced dataset, highlighting the importance of providing a structured and heterogeneous dataset for optimal ML performance. The optimized models were integrated in an updated web-application, M3DISEEN, that provides predictions on filament characteristics, printability, HME and FDM processing temperatures, and drug release profiles (https://m3diseen.com/predictionsFDM/). By simulating the workflow of preparing FDM-printed pharmaceutical products, the web-application expedites the otherwise empirical process of formulation development, facilitating higher pharmaceutical 3DP research throughput.
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spelling pubmed-92182232022-06-24 Accelerating 3D printing of pharmaceutical products using machine learning Ong, Jun Jie Castro, Brais Muñiz Gaisford, Simon Cabalar, Pedro Basit, Abdul W. Pérez, Gilberto Goyanes, Alvaro Int J Pharm X Research Paper Three-dimensional printing (3DP) has seen growing interest within the healthcare industry for its ability to fabricate personalized medicines and medical devices. However, it may be burdened by the lengthy empirical process of formulation development. Active research in pharmaceutical 3DP has led to a wealth of data that machine learning could utilize to provide predictions of formulation outcomes. A balanced dataset is critical for optimal predictive performance of machine learning (ML) models, but data available from published literature often only include positive results. In this study, in-house and literature-mined data on hot melt extrusion (HME) and fused deposition modeling (FDM) 3DP formulations were combined to give a more balanced dataset of 1594 formulations. The optimized ML models predicted the printability and filament mechanical characteristics with an accuracy of 84%, and predicted HME and FDM processing temperatures with a mean absolute error of 5.5 °C and 8.4 °C, respectively. The performance of these ML models was better than previous iterations with a smaller and a more imbalanced dataset, highlighting the importance of providing a structured and heterogeneous dataset for optimal ML performance. The optimized models were integrated in an updated web-application, M3DISEEN, that provides predictions on filament characteristics, printability, HME and FDM processing temperatures, and drug release profiles (https://m3diseen.com/predictionsFDM/). By simulating the workflow of preparing FDM-printed pharmaceutical products, the web-application expedites the otherwise empirical process of formulation development, facilitating higher pharmaceutical 3DP research throughput. Elsevier 2022-06-09 /pmc/articles/PMC9218223/ /pubmed/35755603 http://dx.doi.org/10.1016/j.ijpx.2022.100120 Text en © 2022 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Research Paper
Ong, Jun Jie
Castro, Brais Muñiz
Gaisford, Simon
Cabalar, Pedro
Basit, Abdul W.
Pérez, Gilberto
Goyanes, Alvaro
Accelerating 3D printing of pharmaceutical products using machine learning
title Accelerating 3D printing of pharmaceutical products using machine learning
title_full Accelerating 3D printing of pharmaceutical products using machine learning
title_fullStr Accelerating 3D printing of pharmaceutical products using machine learning
title_full_unstemmed Accelerating 3D printing of pharmaceutical products using machine learning
title_short Accelerating 3D printing of pharmaceutical products using machine learning
title_sort accelerating 3d printing of pharmaceutical products using machine learning
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9218223/
https://www.ncbi.nlm.nih.gov/pubmed/35755603
http://dx.doi.org/10.1016/j.ijpx.2022.100120
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