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Sucrose, obtained from either sugar beet or sugarcane, is one of the main ingredients used in the food industry. Due to the same molecular structure, chemical methods cannot distinguish sucrose from both sources. More practical and affordable methods would be valuable. Sucrose samples (cane and beet) were collected from nine countries, 25% (w/w) aqueous solutions were prepared and their absorbances recorded from 200 to 1380 nm. Spectral differences were observable in the ultraviolet-visible (UV-Vis) region from 200 to 600 nm due to impurities in sugar. Linear discriminant analysis (LDA), classification and regression trees, and soft independent modeling of class analogy were tested for the UV-Vis region. All methods showed high performance accuracies. LDA, after selection of five wavelengths, gave 100% correct classification with a simple interpretation. In addition, binary mixtures of the sugar samples were prepared for quantitative analysis by means of partial least squares regression and multiple linear regression (MLR). MLR with first derivative Savitzky-Golay were most acceptable with root mean square error of cross-validation, prediction, and the ratio of (standard error of) prediction to (standard) deviation values of 3.92%, 3.28%, and 9.46, respectively. Using UV-Vis spectra and chemometrics, the results show promise to distinguish between the two different sources of sucrose. An affordable and quick analysis method to differentiate between sugars, produced from either sugar beet or sugarcane, is suggested. This method does not involve complex chemical analysis or high-level experts and can be used in research or by industry to detect the source of the sugar which is important for some countries' agricultural policies.
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http://dx.doi.org/10.1111/1750-3841.16674 | DOI Listing |
Beetroot ( L.) incorporation into cupcake formulations represents an innovative approach to developing functional bakery products that combine consumer appeal with enhanced nutritional value. This study investigated the incorporation of beetroot ( L.
View Article and Find Full Text PDFPhysiol Rep
September 2025
University of Jendouba, Laboratory of Functional Physiology and Valorization of Bio-Resources, Higher Institute of Biotechnology of Béja, Béja, Tunisia.
Constipation is a common gastrointestinal disorder characterized by infrequent and difficult bowel movements, hard stool consistency, and delayed intestinal transit. The present study evaluated the phytochemical profile and physiological effects of the aqueous extract of beetroot leaves (AEBL) in a rat model of Loperamide (LOP)-induced constipation. Thirty-six male Wistar rats were randomly assigned to six groups (n = 6): two controls (normal and constipated) and four constipated groups receiving either increasing doses of AEBL (100, 200, or 400 mg/kg, b.
View Article and Find Full Text PDFPestic Biochem Physiol
November 2025
Pesticide Science Laboratory, Agricultural University of Athens, 75 Iera Odos, 118 55 Athens, Greece.
Sensitivity assessment of 300 Cercospora beticola isolates collected from North Greece revealed that 38 % of the population was highly resistant to at least one of the demethylase inhibitors (DMIs) difenoconazole, epoxiconazole and flutriafol. Resistance factors greater than 50, 100 and 100 were calculated for the most resistant C. beticola isolates to flutriafol, epoxiconazole and difenoconazole, respectively.
View Article and Find Full Text PDFInt J Biol Macromol
September 2025
Chemistry Department, Faculty of Science, Islamic University of Madinah, Madinah, 42351, Saudi Arabia. Electronic address:
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View Article and Find Full Text PDFJ Chromatogr B Analyt Technol Biomed Life Sci
September 2025
Edward T. Schafer Agricultural Research Center, USDA ARS, Fargo, ND, USA.
The quantification of sucrose and other carbohydrates in sugar beet roots is essential prior to their processing to assess sugar production yield. In this study, a rapid, highly sensitive and selective ultra-fast liquid chromatography coupled with time of flight mass spectrometry (UFLC-ToFMS) method was developed and validated for the simultaneous analysis of monosaccharides (fructose, glucose-galactose), a disaccharide (sucrose), and a trisaccharide (raffinose). The method showed 1000-fold higher sensitivity, with LOD and LOQ ranging between 0.
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