In-line particle size measurement during granule fluidization using convolutional neural network-aided process imaging

Eur J Pharm Sci. 2023 Oct 1:189:106563. doi: 10.1016/j.ejps.2023.106563. Epub 2023 Aug 13.

Abstract

This paper presents a machine learning-based image analysis method to monitor the particle size distribution of fluidized granules. The key components of the direct imaging system are a rigid fiber-optic endoscope, a light source and a high-speed camera, which allow for real-time monitoring of the granules. The system was implemented into a custom-made 3D-printed device that could reproduce the particle movement characteristic in a fluidized-bed granulator. The suitability of the method was evaluated by determining the particle size distribution (PSD) of various granule mixtures within the 100-2000 μm size range. The convolutional neural network-based software was able to successfully detect the granules that were in focus despite the dense flow of the particles. The volumetric PSDs were compared with off-line reference measurements obtained by dynamic image analysis and laser diffraction. Similar trends were observed across the PSDs acquired with all three methods. The results of this study demonstrate the feasibility of performing real-time particle size analysis using machine vision as an in-line process analytical technology (PAT) tool.

Keywords: Convolutional neural networks; Endoscope; Fluid-bed granulation; Image analysis; Machine vision; Particle size distribution.

MeSH terms

  • Chemistry, Pharmaceutical* / methods
  • Diagnostic Imaging
  • Neural Networks, Computer*
  • Particle Size
  • Technology, Pharmaceutical