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Analysis of Aroma for Beverage R&D Using Smart Aroma Database™ and an SPME Arrow

Applications | 2022 | ShimadzuInstrumentation
GC/MSD, SPME, GC/SQ, Software
Industries
Food & Agriculture
Manufacturer
Shimadzu

Summary

Significance of the Topic


Accurate profiling of aroma compounds is essential in beverage research and development to optimize flavor, quality, and consumer acceptance. Advanced analytical approaches can greatly improve the efficiency and reliability of characterizing volatile components in complex matrices such as beer.

Study Objectives and Overview


The article presents a wide scope targeted analysis of beer aroma compounds using solid phase microextraction Arrow (SPME Arrow) coupled with gas chromatography mass spectrometry (GC MS) in conjunction with a Smart Aroma Database containing information on over 500 aroma related compounds. The aim is to streamline method creation, enhance compound detection, and distinguish among different beer styles based on aroma profiles by applying principal component analysis.

Methodology


The workflow integrates an AOC 6000 Plus autosampler for automated SPME Arrow extraction and GC MS QP2020 NX analysis. Key steps include:
  • Measurement of n alkane standards and retention index calibration using the AART function
  • Automatic adjustment of retention times and mass spectral matching against the Smart Aroma Database
  • Creation of targeted methods based on registered compound data
  • Sample extraction by exposing the SPME Arrow to beer samples with added salt at controlled temperature and stirring conditions


Instrumentation


  • GC MS system model GCMS QP2020 NX
  • AOC 6000 Plus autosampler with SPME Arrow support
  • SPME Arrow fiber type DVB Carbon WR PDMS (120 micrometer film thickness)
  • SH PolarWax capillary column and helium carrier gas
  • SIMCA 17 software for principal component analysis


Key Results and Discussion


A total of 204 aroma compounds were identified across seven commercially available beers by combining SPME Arrow enrichment and database aided analysis. Principal component analysis enabled clear differentiation of beer samples, highlighting characteristic compound clusters. Barrel aged beers exhibited elevated levels of sweet and spicy notes such as ethyl vanillate and whiskey lactones, whereas India pale ales were rich in herbaceous and floral volatiles like hexanol and rose oxide.

Benefits and Practical Applications


The described approach offers:
  • Rapid method development without manual calibration of analytical conditions
  • Enhanced sensitivity via SPME Arrow concentration of trace aroma compounds
  • Comprehensive targeted screening through a curated compound database
  • Streamlined data processing and compound identification to support R&D and quality control workflows


Future Trends and Potential Applications


Ongoing expansion of aroma databases and integration with machine learning algorithms will further accelerate flavor profiling. Emerging sample introduction techniques and sensor technologies may complement SPME Arrow methods, enabling real time monitoring of aroma release in process control. Broader adoption in breweries, flavor houses, and ingredient quality assessment is anticipated.

Conclusion


Combining SPME Arrow extraction with a Smart Aroma Database and automated GC MS analysis provides a robust platform for wide scope targeted aroma profiling. The method improves sensitivity, reduces development time, and delivers clear sample differentiation based on volatile signatures, making it well suited for beverage R&D and quality assurance activities.

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