Characterization of the 3D microstructure of Ibuprofen tablets by means of synchrotron tomography
Matthias Neumann, Ramon Cabiscol, Markus Osenberg, Henning, Mark\"otter, Ingo Manke, Jan-Henrik Finke, Volker Schmidt

TL;DR
This paper introduces a hybrid image analysis method using synchrotron tomography to characterize the 3D microstructure of Ibuprofen tablets, revealing pore structures and microstructure features affecting tablet properties.
Contribution
A novel hybrid trinarization approach combining statistical learning and watershed algorithms for 3D microstructure analysis of tablets.
Findings
Significant pores are below resolution limit, influencing surface properties.
Computed microstructure characteristics like percolation probabilities and chord length distributions.
Microstructure analysis links production parameters to tablet properties.
Abstract
We present a methodology to characterize the 3D microstructure of Ibuprofen tablets, which strongly influences the strength and solubility kinetics of the final formulation, by means of synchrotron tomography. A physically coherent trinarization for greyscale images of Ibuprofen tablets consisting of the three phases microcrystalline cellulose, Ibuprofen and pores is presented. For this purpose, a hybrid approach is developed combining a trinarization by means of statistical learning with a trinarization based on a watershed algorithm. This hybrid approach allows us to compute microstructure characteristics of tablets using image analysis. A comparison with experimental results shows that there is a significant amount of pores which is below the resolution limit and results from image analysis let us conjecture that these pores make up the major part of the surface between pores and…
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