The Influence of Preprocessing Methods on Multivariate Image Analysis in High-Performance Thin-Layer Chromatography Fingerprinting
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2016
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Planar chromatography is commonly used for the quality control of herbal medicines due to its many advantages. Its combination with chemometrics was proven to be a fast and reliable tool for the extraction of even more analytical information, such as similarity or dissimilarity between samples, and the identification of marker compounds. To date, depending on image processing procedures, different variables have been obtained as input data, and thus, various preprocessing procedures have been applied. In this study, we converted the chromatogram images of high-performance thin-layer chromatography to form a data matrix, by digitization of the chromatograms. Further, principal component analysis was applied on raw data and investigated after different preprocessing techniques. The proposed preprocessing techniques were successfully applied to improve the differentiation between two types of German propolis. The best multivariate models were observed in the case of warping, standard norm...al variate, and mean centering/autoscaling.
Ključne reči:
High-performance thin-layer chromatography / Multivariate analysis / Fingerprint / Preprocessing techniques / PropolisIzvor:
Journal of Planar Chromatography: Modern TLC / Thin Layer Chromatography, 2016, 29, 4, 310-317Izdavač:
- Akademiai Kiado Rt, Budapest
Finansiranje / projekti:
- program German Academic Exchange Service (DAAD) [57130097]
DOI: 10.1556/1006.2016.29.4.10
ISSN: 0933-4173
WoS: 000385039300011
Scopus: 2-s2.0-84979693152
Kolekcije
Institucija/grupa
Inovacioni centar / Innovation CentreTY - JOUR AU - Ristivojević, Petar AU - Morlock, Gertrud E. PY - 2016 UR - https://cherry.chem.bg.ac.rs/handle/123456789/2326 AB - Planar chromatography is commonly used for the quality control of herbal medicines due to its many advantages. Its combination with chemometrics was proven to be a fast and reliable tool for the extraction of even more analytical information, such as similarity or dissimilarity between samples, and the identification of marker compounds. To date, depending on image processing procedures, different variables have been obtained as input data, and thus, various preprocessing procedures have been applied. In this study, we converted the chromatogram images of high-performance thin-layer chromatography to form a data matrix, by digitization of the chromatograms. Further, principal component analysis was applied on raw data and investigated after different preprocessing techniques. The proposed preprocessing techniques were successfully applied to improve the differentiation between two types of German propolis. The best multivariate models were observed in the case of warping, standard normal variate, and mean centering/autoscaling. PB - Akademiai Kiado Rt, Budapest T2 - Journal of Planar Chromatography: Modern TLC / Thin Layer Chromatography T1 - The Influence of Preprocessing Methods on Multivariate Image Analysis in High-Performance Thin-Layer Chromatography Fingerprinting VL - 29 IS - 4 SP - 310 EP - 317 DO - 10.1556/1006.2016.29.4.10 ER -
@article{ author = "Ristivojević, Petar and Morlock, Gertrud E.", year = "2016", abstract = "Planar chromatography is commonly used for the quality control of herbal medicines due to its many advantages. Its combination with chemometrics was proven to be a fast and reliable tool for the extraction of even more analytical information, such as similarity or dissimilarity between samples, and the identification of marker compounds. To date, depending on image processing procedures, different variables have been obtained as input data, and thus, various preprocessing procedures have been applied. In this study, we converted the chromatogram images of high-performance thin-layer chromatography to form a data matrix, by digitization of the chromatograms. Further, principal component analysis was applied on raw data and investigated after different preprocessing techniques. The proposed preprocessing techniques were successfully applied to improve the differentiation between two types of German propolis. The best multivariate models were observed in the case of warping, standard normal variate, and mean centering/autoscaling.", publisher = "Akademiai Kiado Rt, Budapest", journal = "Journal of Planar Chromatography: Modern TLC / Thin Layer Chromatography", title = "The Influence of Preprocessing Methods on Multivariate Image Analysis in High-Performance Thin-Layer Chromatography Fingerprinting", volume = "29", number = "4", pages = "310-317", doi = "10.1556/1006.2016.29.4.10" }
Ristivojević, P.,& Morlock, G. E.. (2016). The Influence of Preprocessing Methods on Multivariate Image Analysis in High-Performance Thin-Layer Chromatography Fingerprinting. in Journal of Planar Chromatography: Modern TLC / Thin Layer Chromatography Akademiai Kiado Rt, Budapest., 29(4), 310-317. https://doi.org/10.1556/1006.2016.29.4.10
Ristivojević P, Morlock GE. The Influence of Preprocessing Methods on Multivariate Image Analysis in High-Performance Thin-Layer Chromatography Fingerprinting. in Journal of Planar Chromatography: Modern TLC / Thin Layer Chromatography. 2016;29(4):310-317. doi:10.1556/1006.2016.29.4.10 .
Ristivojević, Petar, Morlock, Gertrud E., "The Influence of Preprocessing Methods on Multivariate Image Analysis in High-Performance Thin-Layer Chromatography Fingerprinting" in Journal of Planar Chromatography: Modern TLC / Thin Layer Chromatography, 29, no. 4 (2016):310-317, https://doi.org/10.1556/1006.2016.29.4.10 . .