Study of component distribution in pharmaceutical binary powder mixtures by near infrared chemical imaging
Near infrared chemical imaging (NIR-CI) has recently emerged as an effective technique for extracting spatial information from pharmaceutical products in an expeditious, non-destructive and non-invasive manner. These features have turned it into a useful tool for controlling various steps in drug pr...
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2012-12-01
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doaj-ea5bc63f9e4d4be49307f9760a431baa2020-11-25T00:57:17ZengIM Publications OpenJournal of Spectral Imaging2040-45652040-45652012-12-013a210.1255/jsi.2012.a2Study of component distribution in pharmaceutical binary powder mixtures by near infrared chemical imagingManel Bautista0Jordi Cruz1Marcelo Blanco2Unidad de Química Analítica, Departamento de Química, Facultad de Ciencias, Universidad Autónoma de Barcelona, 08193 Bellaterra, Barcelona, SpainEscola Universitària Salesiana de Sarrià, Passeig Sant Joan Bosco, 74, 08017 Barcelona, SpainUnidad de Química Analítica, Departamento de Química, Facultad de Ciencias, Universidad Autónoma de Barcelona, 08193 Bellaterra, Barcelona, SpainNear infrared chemical imaging (NIR-CI) has recently emerged as an effective technique for extracting spatial information from pharmaceutical products in an expeditious, non-destructive and non-invasive manner. These features have turned it into a useful tool for controlling various steps in drug production processes. Imaging techniques provide a vast amount of both spatial and spectral information that can be acquired in a very short time. Such a huge amount of data requires the use of efficient and fast methods to extract the relevant information. Chemometric methods have proved especially useful for this purpose. In this study, we assessed the usefulness of the correlation coefficient (CC) between the spectra of samples, the pure spectra of the active pharmaceutical ingredient (API) and we assessed the excipients to check for correct ingredient distribution in pharmaceutical binary preparations blended in the laboratory. Visual information about pharmaceutical component distribution can be obtained by using the CC. The performance of this model construction methodology for binary samples was compared with other various common multivariate methods including partial least squares, multivariate curve resolution and classical least squares. Based on the results, correlation coefficients are a powerful tool for the rapid assessment of correct component distribution and for quantitative analysis of pharmaceutical binary formulations. For samples of three or more components it has been shown that if the objective is only to determine uniformity of blending, then the CC image map is very good for this, and easy and fast to compute.https://www.impublications.com/download.php?code=I03_a2correlation coefficientNIR chemical imaginghomogeneityconcentration mapspharmaceutical samples |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Manel Bautista Jordi Cruz Marcelo Blanco |
spellingShingle |
Manel Bautista Jordi Cruz Marcelo Blanco Study of component distribution in pharmaceutical binary powder mixtures by near infrared chemical imaging Journal of Spectral Imaging correlation coefficient NIR chemical imaging homogeneity concentration maps pharmaceutical samples |
author_facet |
Manel Bautista Jordi Cruz Marcelo Blanco |
author_sort |
Manel Bautista |
title |
Study of component distribution in pharmaceutical binary powder mixtures by near infrared chemical imaging |
title_short |
Study of component distribution in pharmaceutical binary powder mixtures by near infrared chemical imaging |
title_full |
Study of component distribution in pharmaceutical binary powder mixtures by near infrared chemical imaging |
title_fullStr |
Study of component distribution in pharmaceutical binary powder mixtures by near infrared chemical imaging |
title_full_unstemmed |
Study of component distribution in pharmaceutical binary powder mixtures by near infrared chemical imaging |
title_sort |
study of component distribution in pharmaceutical binary powder mixtures by near infrared chemical imaging |
publisher |
IM Publications Open |
series |
Journal of Spectral Imaging |
issn |
2040-4565 2040-4565 |
publishDate |
2012-12-01 |
description |
Near infrared chemical imaging (NIR-CI) has recently emerged as an effective technique for extracting spatial information from pharmaceutical products in an expeditious, non-destructive and non-invasive manner. These features have turned it into a useful tool for controlling various steps in drug production processes. Imaging techniques provide a vast amount of both spatial and spectral information that can be acquired in a very short time. Such a huge amount of data requires the use of efficient and fast methods to extract the relevant information. Chemometric methods have proved especially useful for this purpose. In this study, we assessed the usefulness of the correlation coefficient (CC) between the spectra of samples, the pure spectra of the active pharmaceutical ingredient (API) and we assessed the excipients to check for correct ingredient distribution in pharmaceutical binary preparations blended in the laboratory. Visual information about pharmaceutical component distribution can be obtained by using the CC. The performance of this model construction methodology for binary samples was compared with other various common multivariate methods including partial least squares, multivariate curve resolution and classical least squares. Based on the results, correlation coefficients are a powerful tool for the rapid assessment of correct component distribution and for quantitative analysis of pharmaceutical binary formulations. For samples of three or more components it has been shown that if the objective is only to determine uniformity of blending, then the CC image map is very good for this, and easy and fast to compute. |
topic |
correlation coefficient NIR chemical imaging homogeneity concentration maps pharmaceutical samples |
url |
https://www.impublications.com/download.php?code=I03_a2 |
work_keys_str_mv |
AT manelbautista studyofcomponentdistributioninpharmaceuticalbinarypowdermixturesbynearinfraredchemicalimaging AT jordicruz studyofcomponentdistributioninpharmaceuticalbinarypowdermixturesbynearinfraredchemicalimaging AT marceloblanco studyofcomponentdistributioninpharmaceuticalbinarypowdermixturesbynearinfraredchemicalimaging |
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1725224831902810112 |