AI Article Synopsis

  • Recent advancements in Hyperspectral Imaging technology allow for rapid analysis of tablet surfaces in pharmaceutical applications, particularly for identifying component distribution and defects.
  • A new methodology utilizing correlation coefficients is introduced to analyze hyperspectral images without prior knowledge about the sample, enabling detection of defects and contaminants effectively.
  • This method, which incorporates Principal Component Analysis (PCA) and enhanced contrast functions, has been successfully applied to ibuprofen tablets, suggesting its potential as a quality control tool across various hyperspectral imaging systems.

Article Abstract

Recent developments in Hyperspectral Imaging equipment have made possible the use of this analytical technique for fast scanning of sample surfaces. This technique has turned out to be especially useful in Pharmacy, where information about the distribution of the components in the surface of a tablet can be obtained. One particular application of Hyperspectral Chemical Imaging is the search for singularities inside pharmaceutical tablets, e.g. coating defects. Nevertheless, one problem has to be faced: how to analyze a sample without any previous knowledge about it, or having only the minimum information about the tablet. In this work a new methodology, based on correlation coefficients, is introduced to obtain valuable information about one Hyperspectral Image (detection of defects, punctual contaminants, etc.) without any previous knowledge. The methodology combines Principal Component Analysis (PCA), correlation coefficient between one specific pixel included in the image and the rest of the image; and a new enhanced contrast function to obtain more selective chemical and spatial information about the image. To illustrate the applicability of the proposed methodology, real tablets of ibuprofen have been studied. The proposed methodology is presented as a control technique to detect batch variability, defects in final tablets and punctual contaminants, being a potential supplementary tool for quality controls. In addition, the usefulness of the proposed methodology is not exclusive to NIR-CI devices, but to any hyperspectral and multivariate image system.

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Source
http://dx.doi.org/10.1016/j.talanta.2009.04.042DOI Listing

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