Data-driven insights into the properties of liquisolid systems based on machine learning algorithms.

Eur J Pharm Sci

Department of Pharmaceutical Technology and Cosmetology, University of Belgrade - Faculty of Pharmacy, Vojvode Stepe 450, 11221 Belgrade, Serbia.

Published: December 2024

AI Article Synopsis

  • Liquisolid systems (LS) convert liquid drugs into powder forms, improving their flow, compactness, and bioavailability, prompting increased research efforts to evaluate these systems effectively.
  • A comprehensive dataset of 425 formulations was created from literature to analyze factors affecting LS performance, focusing on preparation methods, parameters, and characteristics.
  • Machine learning algorithms, like Gradient Boosting and Random Forest, demonstrated over 80% accuracy in predicting key qualities of LS, highlighting their potential as tools for optimizing formulations.

Article Abstract

Liquisolid systems (LS) represent a formulation approach where liquid drug or its dispersion is transformed into a powder with good flowability and compactibility, leading to enhanced drug dissolution and bioavailability. Many research groups have focused on the preparation and investigation of LS, leading to a higher need for comprehensive evaluation of factors impacting LS characteristics. The aim of this work was to investigate the applicability of machine learning algorithms in the LS evaluation, using data mined from published literature, and provide an insight into critical factors governing the liquisolid system performance. The dataset was prepared using publication search engines and relevant keywords, with a total of 425 formulations included in the database. The database focused on preparation methods, formulation parameters, and liquisolid system characteristics. Subsequently, critical properties of the liquisolid system, i.e. flowability, compact hardness, and drug dissolution, were analyzed using machine learning algorithms, including Gradient Boosting, Adaptive Boosting and Random Forest. In addition to conventional preparation methods and excipients, novel technologies (fluid bed preparation, extrusion/spheronization) and materials (Neusilin®, Fujicalin®, and Syloid®) enhanced the properties of liquisolid systems. The analysis revealed that formulation factors, such as carrier and coating agent type and content, liquid phase load, model drug type and content, as well as preparation method, significantly influenced liquisolid system characteristics. The models developed exhibited high prediction accuracy when applied on test data (higher than 80 %). This indicates that the machine learning models may provide an insight into the critical attributes affecting the LS performance and may be used as a valuable tool in the development and optimization of these samples.

Download full-text PDF

Source
http://dx.doi.org/10.1016/j.ejps.2024.106927DOI Listing

Publication Analysis

Top Keywords

machine learning
16
liquisolid system
16
properties liquisolid
12
liquisolid systems
12
learning algorithms
12
drug dissolution
8
focused preparation
8
provide insight
8
insight critical
8
preparation methods
8

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!