Machine learning approaches to the prediction of powder flow behaviour of pharmaceutical materials from physical properties

Laura Pereira Diaz, Cameron J. Brown, Ebenezer Ojo, Chantal Mustoe, Alastair J. Florence

Research output: Contribution to journalArticlepeer-review

13 Citations (Scopus)
94 Downloads (Pure)

Abstract

Understanding powder flow in the pharmaceutical industry facilitates the development of robust production routes and effective manufacturing processes. In pharmaceutical manufacturing, machine learning (ML) models have the potential to enable rapid decision-making and minimise the time and material required to develop robust processes. This work focused on using ML models to predict the powder flow behaviour for routine, widely available pharmaceutical materials. A library of 112 pharmaceutical powders comprising a range of particle size and shape distributions, bulk densities, and flow function coefficients was developed. ML models to predict flow properties were trained on the physical properties of the pharmaceutical powders (size, shape, and bulk density) and assessed. The data were sampled using 10-fold cross-validation to evaluate the performance of the models with additional experimental data used to validate the model performance with the best performing models achieving a performance of over 80%. Important variables were analysed using SHAP values and found to include particle size distribution D10, D50, and aspect ratio D10. The very promising results presented here could pave the way toward a rapid digital screening tool that can reduce pharmaceutical manufacturing costs.
Original languageEnglish
Pages (from-to)692-701
Number of pages10
JournalDigital Discovery
Volume2
Issue number3
Early online date31 Mar 2023
DOIs
Publication statusPublished - 1 Jun 2023

Funding

The authors thank EPSRC and the EPSRC Future Continuous Manufacturing and Advanced Crystallisation Research Hub (Grant ref: EP/P006965/1) for funding this work. The authors acknowledge that parts of this work were carried out in the CMAC National Facility supported by a UK Research Partnership Fund (UKRPIF) award from the Higher Education Funding Council for England (HEFCE) (Grant ref HH13054). The authors acknowledge the Medicines Manufacturing Innovation Centre (MMIC) for sharing data. MMIC is co-funded by UK Research and Innovation (UKRI) and the Scottish government and is a collaboration between the public and private sector, including GlaxoSmithKline and AstraZeneca (Innovate UK: 104208 (2018-2021) & 900070 (2017-2018)).

Keywords

  • machine learning (ML)
  • powder flow
  • pharmaceutical materials
  • physical properties

Fingerprint

Dive into the research topics of 'Machine learning approaches to the prediction of powder flow behaviour of pharmaceutical materials from physical properties'. Together they form a unique fingerprint.

Cite this