Issue 26, 2019

UHPLC-HRMS (orbitrap) fingerprinting in the classification and authentication of cranberry-based natural products and pharmaceuticals using multivariate calibration methods

Abstract

UHPLC-HRMS (orbitrap) fingerprinting in negative and positive H-ESI modes was applied to the characterization, classification and authentication of cranberry-based natural and pharmaceutical products. HRMS data in full scan mode (m/z 100–1500) at a resolution of 70 000 full-width at half maximum were recorded and processed with MSConvert software to obtain a profile of peak intensities as a function of m/z values and retention times. A threshold peak filter of absolute intensity (105 counts) was applied to reduce data complexity. Principal component analysis (PCA) and partial least squares-discriminant analysis (PLS-DA) revealed patterns able to discriminate the analyzed samples according to the fruit of origin (cranberry, grape, blueberry and raspberry). Discrimination among cranberry-based natural and cranberry-based pharmaceutical preparations was also achieved. Both UHPLC-HRMS fingerprints in negative and positive H-ESI modes and the data fusion of both acquisition modes proved to be good chemical descriptors to perform cranberry extract authentication. Validation of the proposed methodology showed a prediction rate of 100% of the samples. Obtained data were further treated by partial least squares (PLS) regression to identify frauds and quantify the percentage of adulterant fruits in cranberry-fruit extracts, achieving prediction errors in the range 0.17–3.86%.

Graphical abstract: UHPLC-HRMS (orbitrap) fingerprinting in the classification and authentication of cranberry-based natural products and pharmaceuticals using multivariate calibration methods

Supplementary files

Article information

Article type
Paper
Submitted
27 Mar 2019
Accepted
02 Jun 2019
First published
03 Jun 2019

Anal. Methods, 2019,11, 3341-3349

UHPLC-HRMS (orbitrap) fingerprinting in the classification and authentication of cranberry-based natural products and pharmaceuticals using multivariate calibration methods

S. Barbosa, N. Pardo-Mates, M. Hidalgo-Serrano, J. Saurina, L. Puignou and O. Núñez, Anal. Methods, 2019, 11, 3341 DOI: 10.1039/C9AY00636B

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