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UV/VIS imaging-based PAT tool for drug particle size inspection in intact tablets supported by pattern recognition neural networks

Lilla Alexandra Mészáros, Attila Farkas, Lajos Madarász, Rozália Bicsár, Dorián László Galata, Brigitta Nagy, Zsombor Kristóf Nagy

2022International Journal of Pharmaceutics27 citationsDOIOpen Access PDF

Abstract

The potential of machine vision systems has not currently been exploited for pharmaceutical applications, although expected to provide revolutionary solutions for in-process and final product testing. The presented paper aimed to analyze the particle size of meloxicam, a yellow model active pharmaceutical ingredient, in intact tablets by a digital UV/VIS imaging-based machine vision system. Two image processing algorithms were developed and coupled with pattern recognition neural networks for UV and VIS images for particle size-based classification of the prepared tablets. The developed method can identify tablets containing finer or larger particles than the target with more than 97% accuracy. Two algorithms were developed for UV and VIS images for particle size analysis of the prepared tablets. According to the applied statistical tests, the obtained particle size distributions were similar to the results of the laser diffraction-based reference method. Digital UV/VIS imaging combined with multivariate data analysis can provide a new non-destructive, rapid, in-line tool for particle size analysis in tablets.

Topics & Concepts

Particle sizeArtificial neural networkDigital imagingArtificial intelligenceParticle (ecology)Computer scienceImage processingDigital imageMachine visionMaterials scienceBiological systemComputer visionPattern recognition (psychology)OpticsImage (mathematics)PhysicsEngineeringChemical engineeringGeologyOceanographyBiologySpectroscopy and Chemometric AnalysesSpectroscopy Techniques in Biomedical and Chemical ResearchImage Processing Techniques and Applications
UV/VIS imaging-based PAT tool for drug particle size inspection in intact tablets supported by pattern recognition neural networks | Litcius