Application of machine learning to a material library for modeling of relationships between material properties and tablet properties.

Int J Pharm

Department of Pharmaceutical Technology, Graduate School of Medicine and Pharmaceutical Science for Research, University of Toyama, 2630 Sugitani, Toyama-shi, Toyama 930-0194, Japan.

Published: November 2021

AI Article Synopsis

  • This study explores how machine learning can effectively model complex relationships in a material library of active pharmaceutical ingredients (APIs) and their tablets.
  • The research involved testing 81 types of APIs, focusing on 20 material properties, 3 levels of compression pressure, and tablet properties like tensile strength (TS) and disintegration time (DT).
  • The machine learning models, boosted tree (BT) and random forest (RF), outperformed traditional methods and identified key material properties affecting TS and DT, such as true density and total surface energy.

Article Abstract

This study investigates the usefulness of machine learning for modeling complex relationships in a material library. We tested 81 types of active pharmaceutical ingredients (APIs) and their tablets to construct the library, which included the following variables: 20 types of API material properties, one type of process parameter (three levels of compression pressure), and two types of tablet properties (tensile strength (TS) and disintegration time (DT)). The machine learning algorithms boosted tree (BT) and random forest (RF) were applied to analysis of our material library to model the relationships between input variables (material properties and compression pressure) and output variables (TS and DT). The calculated BT and RF models achieved higher performance statistics compared with a conventional modeling method (i.e., partial least squares regression), and revealed the material properties that strongly influence TS and DT. For TS, true density, the tenth percentile of the cumulative percentage size distribution, loss on drying, and compression pressure were of high relative importance. For DT, total surface energy, water absorption rate, polar surface energy, and hygroscopicity had significant effects. Thus, we demonstrate that BT and RF can be used to model complex relationships and clarify important material properties in a material library.

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Source
http://dx.doi.org/10.1016/j.ijpharm.2021.121158DOI Listing

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