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Rapid Identification of Raw Materials Inside Packaging

Applications | 2021 | Agilent TechnologiesInstrumentation
RAMAN Spectroscopy
Industries
Pharma & Biopharma
Manufacturer
Agilent Technologies

Summary

Significance of the Topic


Pharmaceutical manufacturers face critical safety and compliance demands when verifying incoming raw materials. Traditional identity testing often requires opening packaging, consuming time and resources, and risking contamination. Spatially Offset Raman Spectroscopy (SORS) offers a rapid, non-destructive approach to confirm material identity through containers, addressing regulatory requirements and preventing tragic mix-ups such as diethylene glycol adulteration in glycerin.

Aims and Overview of the Study


The whitepaper demonstrates how the Agilent Vaya handheld Raman spectrometer employs SORS to:
  • Perform direct through-container identification of liquids and solids.
  • Differentiate closely related chemical analogs across multiple container types.
  • Align with ICH Q2(R1) and USP<1225> validation criteria for specificity and reliability.

Methodology and Instrumentation


The study developed 39 Vaya methods covering four chemical classes—sugars, glycols/diols, long-chain hydrocarbons, and coating agents—each tested in paper sacks, HDPE bottles, PE liners, and amber glass.
Identification methods were built using reagent-grade standards, collecting ten replicate SORS spectra per analyte. Positive and negative specificity challenges followed USP<1225>/ICH Q2(R1) protocols, generating pass/fail matrices.

Instrumentation


The Agilent Vaya Raman handheld spectrometer features:
  • Spatially offset detection geometry to isolate subsurface Raman signals.
  • Automated acquisition settings for reproducible, operator-independent results.
  • Built-in two-score decision engine combining correlation coefficients (R2) and linear model coefficients (LMC) for robust ID classification.

Main Results and Discussion


SORS successfully removed container spectral contributions, yielding clean analyte spectra across transparent and opaque vessels. Challenge matrices for all classes showed:
  • Diagonal pass rates >0.95, confirming correct identification of target materials.
  • Off-diagonal pass rates <0.1, demonstrating rejection of analogs and eliminating false positives.

The method differentiated closely related sugars (anhydrous dextrose, dextrose monohydrate, galactose), small glycols (ethylene glycol, diethylene glycol, glycerin), long-chain fatty acids and alcohols (lauric, myristic, stearic acids), and visually similar coating agents by including analog spectra in model training.

Benefits and Practical Applications


The Vaya SORS approach delivers major advantages:
  • Non-destructive, through-container testing reduces sampling time from days to hours.
  • Minimized contamination risk by avoiding manual sampling.
  • Streamlined warehouse operations with single-operator workflows.
  • Regulatory compliance—meets pharmacopeial and ICH specificity requirements.

Future Trends and Potential Applications


Emerging directions include:
  • Integration with digital supply chain systems and LIMS for real-time material traceability.
  • Advanced chemometric and machine learning models to expand analyte libraries.
  • Broader adoption in biomanufacturing, agrochemicals, and food safety.
  • Miniaturization and cloud-enabled analytics for global remote monitoring.

Conclusion


The Agilent Vaya Raman handheld spectrometer, leveraging SORS, provides a validated, rapid, and non-invasive solution for raw material identity testing inside packaging. Its high specificity, regulatory alignment, and operational efficiencies empower pharmaceutical facilities to enhance safety, quality, and throughput.

References


1. U.S. FDA—Testing of Glycerin for Diethylene Glycol, CDER (2007).
2. United States Pharmacopeia <858>, <1858>, European Pharmacopeia 2.2.48 and related chapters.
3. ICH Q2(R1): Validation of Analytical Procedures.
4. Gryniewicz-Ruzicka C. et al., Applied Spectroscopy 65(3):334–41 (2011).
5. Sagitova E.A. et al., Journal of Physics: Conference Series 999:012002 (2018).

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