Literature DB >> 32961295

M3DISEEN: A novel machine learning approach for predicting the 3D printability of medicines.

Moe Elbadawi1, Brais Muñiz Castro2, Francesca K H Gavins1, Jun Jie Ong1, Simon Gaisford3, Gilberto Pérez4, Abdul W Basit5, Pedro Cabalar6, Alvaro Goyanes7.   

Abstract

Artificial intelligence (AI) has the potential to reshape pharmaceutical formulation development through its ability to analyze and continuously monitor large datasets. Fused deposition modeling (FDM) three-dimensional printing (3DP) has made significant advancements in the field of oral drug delivery with personalized drug-loaded formulations being designed, developed and dispensed for the needs of the patient. The FDM 3DP process begins with the production of drug-loaded filaments by hot melt extrusion (HME), followed by the printing of a drug product using a FDM 3D printer. However, the optimization of the fabrication parameters is a time-consuming, empirical trial approach, requiring expert knowledge. Here, M3DISEEN, a web-based pharmaceutical software, was developed to accelerate FDM 3D printing using AI machine learning techniques (MLTs). In total, 614 drug-loaded formulations were designed from a comprehensive list of 145 different pharmaceutical excipients, 3D printed and assessed in-house. To build the predictive tool, a dataset was constructed and models were trained and tested at a ratio of 75:25. Significantly, the AI models predicted key fabrication parameters with accuracies of 76% and 67% for the printability and the filament characteristics, respectively. Furthermore, the AI models predicted the HME and FDM processing temperatures with a mean absolute error of 8.9 °C and 8.3 °C, respectively. Strikingly, the AI models achieved high levels of accuracy by solely inputting the pharmaceutical excipient trade names. Therefore, AI provides an effective holistic modeling technology and software to streamline and advance 3DP as a significant technology within drug development. M3DISEEN is available at (http://m3diseen.com/predictions/).
Copyright © 2020 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  3D printed drug products; Additive manufacturing; Feature engineering; Fused filament fabrication; Gastrointestinal drug delivery; Material extrusion; Personalized pharmaceuticals and medicines

Mesh:

Substances:

Year:  2020        PMID: 32961295     DOI: 10.1016/j.ijpharm.2020.119837

Source DB:  PubMed          Journal:  Int J Pharm        ISSN: 0378-5173            Impact factor:   5.875


  12 in total

Review 1.  Additive Manufacturing of Solid Products for Oral Drug Delivery Using Binder Jetting Three-Dimensional Printing.

Authors:  Yingya Wang; Anette Müllertz; Jukka Rantanen
Journal:  AAPS PharmSciTech       Date:  2022-07-14       Impact factor: 4.026

2.  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

3.  A Strategy for the Effective Optimization of Pharmaceutical Formulations Based on Parameter-Optimized Support Vector Machine Model.

Authors:  Siqi Wang; Jianping Yang; Hengwei Chen; Kexin Chu; Xuefei Yu; Yaqiong Wei; Haixia Zhang; Mengjie Rui; Chunlai Feng
Journal:  AAPS PharmSciTech       Date:  2022-01-31       Impact factor: 3.246

4.  Direct cyclodextrin-based powder extrusion 3D printing for one-step production of the BCS class II model drug niclosamide.

Authors:  Monica Pistone; Giuseppe Francesco Racaniello; Ilaria Arduino; Valentino Laquintana; Antonio Lopalco; Annalisa Cutrignelli; Rosanna Rizzi; Massimo Franco; Angela Lopedota; Nunzio Denora
Journal:  Drug Deliv Transl Res       Date:  2022-02-09       Impact factor: 5.671

5.  Harnessing machine learning for development of microbiome therapeutics.

Authors:  Laura E McCoubrey; Moe Elbadawi; Mine Orlu; Simon Gaisford; Abdul W Basit
Journal:  Gut Microbes       Date:  2021 Jan-Dec

Review 6.  Polylactide Perspectives in Biomedicine: From Novel Synthesis to the Application Performance.

Authors:  Carmen Moya-Lopez; Joaquín González-Fuentes; Iván Bravo; David Chapron; Patrice Bourson; Carlos Alonso-Moreno; Daniel Hermida-Merino
Journal:  Pharmaceutics       Date:  2022-08-11       Impact factor: 6.525

7.  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

Review 8.  State-of-the-Art Review of Artificial Neural Networks to Predict, Characterize and Optimize Pharmaceutical Formulation.

Authors:  Shan Wang; Jinwei Di; Dan Wang; Xudong Dai; Yabing Hua; Xiang Gao; Aiping Zheng; Jing Gao
Journal:  Pharmaceutics       Date:  2022-01-13       Impact factor: 6.321

9.  Influence of Print Settings on the Critical Quality Attributes of Extrusion-Based 3D-Printed Caplets: A Quality-by-Design Approach.

Authors:  Silke Henry; Lotte De Wever; Valérie Vanhoorne; Thomas De Beer; Chris Vervaet
Journal:  Pharmaceutics       Date:  2021-12-03       Impact factor: 6.321

Review 10.  The Advent of a New Era in Digital Healthcare: A Role for 3D Printing Technologies in Drug Manufacturing?

Authors:  Ioannis I Andreadis; Christos I Gioumouxouzis; Georgios K Eleftheriadis; Dimitrios G Fatouros
Journal:  Pharmaceutics       Date:  2022-03-10       Impact factor: 6.321

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