| Literature DB >> 32942536 |
Cosima Hirschberg1, Magnus Edinger2, Else Holmfred3, Jukka Rantanen2, Johan Boetker2.
Abstract
Mimicking the human decision-making process is challenging. Especially, many process control situations during the manufacturing of pharmaceuticals are based on visual observations and related experience-based actions. The aim of the present work was to investigate the use of image analysis to classify the quality of coated tablets. Tablets with an increasing amount of coating solution were imaged by fast scanning using a conventional office scanner. A segmentation routine was implemented to the images, allowing the extraction of numeric image-based information from individual tablets. The image preprocessing was performed prior to utilization of four different classification techniques for the individual tablet images. The support vector machine (SVM) technique performed superior compared to a convolutional neural network (CNN) in relation to computational time, and this approach was also slightly better at classifying the tablets correctly. The fastest multivariate method was partial least squares (PLS) regression, but this method was hampered by the inferior classification accuracy of the tablets. Finally, it was possible to create a numerical threshold classification model with an accuracy comparable to the SVM approach, so it is evident that there exist multiple valid options for classifying coated tablets.Entities:
Keywords: artificial intelligence; image analysis; in silico modelling; multivariate analysis; neural networks
Year: 2020 PMID: 32942536 PMCID: PMC7558946 DOI: 10.3390/pharmaceutics12090877
Source DB: PubMed Journal: Pharmaceutics ISSN: 1999-4923 Impact factor: 6.321
Tablet composition.
| Constituent | %( |
|---|---|
| Emcompress | 57 |
| Avicel PH102 | 38 |
| Talcum and magnesium stearate (9 + 1) | 5 |
Coating liquid composition.
| Constituent | %( |
|---|---|
| Tartrazine | 0.05 |
| Ponceau-4R | 0.05 |
| Glycerol 85% | 0.53 |
| Water | 99.37 |
Figure 1The four different batches with an increasing amount of coating solution.
Figure 2Scanned image of the coated tablets (A), segmentation of the individual coated tablets in the scanned image (B), and an example of a segmented image of one of the tablets (C).
Figure 3Partial least squares (PLS) model predicted class versus tablet sample number (top). Support vector machine (SVM) model predicted class versus tablet sample number (middle). Convolutional neural network (CNN) model predicted class versus tablet sample number (bottom).
Figure 4Spatially summed blue channel pixel intensities of all the single tablet images (left). Numerical threshold classification method showing predicted class versus tablet sample number (right).