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Application Note Using the Waters ACQUITY RDa Detector Coupled to Multivariate Analysis (MVA) to Explore Chemical Fingerprints for Food Profiling - How to Tell Your Oat from Your Barley Flour

Applications | 2022 | WatersInstrumentation
LC/TOF, LC/HRMS, LC/MS
Industries
Food & Agriculture
Manufacturer
Waters

Summary

Significance of the Topic


Food fraud and ingredient substitution in cereal flours can compromise product safety, authenticity, and quality. Advanced analytical approaches are required to detect subtle differences between species and batches, supporting regulatory compliance and consumer protection.

Objectives and Study Overview


This study demonstrates the coupling of the Waters ACQUITY RDa Detector with multivariate analysis to generate chemical fingerprints of 49 cereal flour samples. The aim is to distinguish species (oat, barley, wheat, rye, durum wheat) and identify subgroups based on processing and growing conditions using an integrated LC-HRMS workflow.

Methodology and Instrumentation


Sample Preparation and Data Acquisition:
• Generic extraction using acetonitrile/water (84/16, v/v) with subsequent centrifugation and dilution.
• Triplicate injections of each flour extract over a three-day run (approximately 300 injections including blanks and QC).
• Data acquisition and processing automated in UNIFI with peak picking and export to EZinfo for multivariate analysis.

Applied Instrumentation


  • LC System: Waters ACQUITY UPLC I-Class PLUS
  • Column: ACQUITY UPLC HSS T3 (2.1 × 100 mm, 1.8 μm)
  • Mobile Phase A: 10 mM ammonium formate/0.3% formic acid in water
  • Mobile Phase B: 10 mM ammonium formate/0.3% formic acid in methanol
  • Flow Rate: 0.5 mL/min, Column Temp: 45 °C, Injection: 5 μL
  • Detector: ACQUITY RDa Detector with ESI, full-scan MS (50–2000 m/z) at 10 Hz, positive mode
  • Software: UNIFI for acquisition and processing; EZinfo (Pareto scaling) for PCA

Main Results and Discussion


• Low technical variance was confirmed by tight clustering of QC injections over the three-day analysis, supporting robust metabolomics workflows.
• Principal component analysis (PCA) achieved clear, unsupervised separation by species and revealed subgroup distinctions related to harvest time and farming practice.
• Marker selection targeted retention times (2–10 min) and intensity thresholds to exclude equilibration/wash artifacts and low-abundance signals.
• Cone voltage fragmentation and common neutral loss analysis in UNIFI provided insight into compound classes (e.g., glucosides) underlying group separation.

Benefits and Practical Applications


  • Routine species-level authentication of cereal flours and rapid detection of adulteration.
  • Monitoring of batch-to-batch consistency and processing or storage variations in food production.
  • User-friendly, integrated LC-HRMS workflow suitable for QA/QC laboratories entering metabolomics.

Future Trends and Opportunities


• Expansion of sample sets to validate subgroup markers (e.g., organic vs. conventional farming).
• Integration of advanced chemometric and machine learning tools for automated fingerprint interpretation.
• Application to wider food matrices and omics-driven quality control in beverage and ingredient supply chains.

Conclusion


The Waters ACQUITY RDa Detector, combined with UNIFI and EZinfo, offers a compact, robust platform for high-resolution LC-MS profiling. It enables reliable species discrimination, subgroup characterization, and marker discovery in cereal flours, laying a foundation for broader food metabolomics applications.

References


  • Black C et al. A Comprehensive Strategy to Detect the Fraudulent Adulteration of Herbs: The Oregano Approach. Food Chem. 2016;210:551–557.
  • Gonzales G et al. Characterization and Discrimination of Polyphenols and Glucosinolates from Red Cabbage. J Chromatogr A. 2015;1402:60–70.
  • Reid L et al. Green Tea Screening Using the ACQUITY RDa Detector. Waters Application Note. 2021.
  • Wang H et al. Untargeted Metabolomics of Xinyang Maojian Green Tea. Food Chem. 2021;352:129359.
  • Arapitsas P et al. Discrimination of Italian Monovarietal Red Wines. J Agric Food Chem. 2020;68(47):13353–13366.
  • Mol H et al. Generic Extraction for Pesticides, Mycotoxins, and Drugs. Anal Chem. 2008;80(24):9450–9459.

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