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               <dc:title>UHPLC-HRMS (Orbitrap) fingerprinting in the classification and authentication of cranberry-based natural products and pharmaceuticals using multivariate calibration methods</dc:title>
               <dc:creator>Barbosa, Sergio</dc:creator>
               <dc:creator>Pardo-Mates, Naiara</dc:creator>
               <dc:creator>Hidalgo-Serrano, Míriam</dc:creator>
               <dc:creator>Saurina, Javier</dc:creator>
               <dc:creator>Puignou i Garcia, Lluís</dc:creator>
               <dc:creator>Núñez Burcio, Oscar</dc:creator>
               <dc:subject>Espectrometria de masses</dc:subject>
               <dc:subject>Química dels aliments</dc:subject>
               <dc:subject>Mass spectrometry</dc:subject>
               <dc:subject>Food composition</dc:subject>
               <dc:description>UHPLC-HRMS (Orbitrap) fingerprinting in negative and positive H-ESI mode 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 was recorded and processed with MSConvert software to obtain a profile of peak intensities in 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, as well as the data fusion of both acquisition modes, showed to be good chemical descriptors to address cranberry extracts authentication. Validation of the proposed methodology showed a prediction rate of 100% of the samples. Obtained data was 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%.</dc:description>
               <dc:date>2019-07-08T11:55:49Z</dc:date>
               <dc:date>2019-06-02</dc:date>
               <dc:date>2019-07-08T11:55:49Z</dc:date>
               <dc:type>info:eu-repo/semantics/article</dc:type>
               <dc:type>info:eu-repo/semantics/acceptedVersion</dc:type>
               <dc:relation>Versió postprint del document publicat a: https://doi.org/10.1039/C9AY00636B</dc:relation>
               <dc:relation>Analytical Methods, 2019, vol. 11, num. 26, p. 3341-3349</dc:relation>
               <dc:relation>https://doi.org/10.1039/C9AY00636B</dc:relation>
               <dc:rights>(c) Barbosa, Sergio et al., 2019</dc:rights>
               <dc:rights>info:eu-repo/semantics/openAccess</dc:rights>
               <dc:publisher>Royal Society of Chemistry</dc:publisher>
               <dc:source>Articles publicats en revistes  (Enginyeria Química i Química Analítica)</dc:source>
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