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Automatic Optimization of Gradient Conditions Using AI Algorithm for LC Method Development with Functional Foods

Posters | 2025 | Shimadzu | HPLC SymposiumInstrumentation
Software, HPLC
Industries
Food & Agriculture
Manufacturer
Shimadzu

Summary

Importance of Topic


In liquid chromatography (LC) method development, optimizing gradient conditions for adequate separation of complex mixtures is traditionally labor-intensive and requires substantial expertise. Automating this process enhances reproducibility, reduces development time, and minimizes manual intervention, which is critical in high-throughput analysis of functional food components.

Objectives and Study Overview


The study aimed to employ an artificial intelligence algorithm within LabSolutions MD software to automatically optimize gradient elution profiles for the separation of fifteen functional compounds (catechins, theaflavins, gallic acid). After validating the approach with standard mixtures, the optimized method was applied to green and black tea leaf samples to compare the profile of their active constituents.

Methodology and Instrumentation


The optimization workflow combined repeated cycles of gradient condition search and correction analysis guided by the AI model, targeting a minimum resolution criterion of 1.5. An initial set of linear gradients varying the organic modifier concentration (15–45% acetonitrile) at different transition times (6–14 minutes) was used. Key chromatographic parameters included:
  • Column temperature: 55 °C
  • Flow rate: 0.6 mL/min
  • Injection volume: 5 µL
  • Detection wavelength: 242 nm

Used Instrumentation


  • UHPLC system: Shimadzu Nexera X3
  • Column: Shim-pack GISS C18 (100 mm × 3.0 mm, 1.9 µm)
  • Detector: SPD-M40 UV-vis cell
  • Software: LabSolutions MD with AI optimization algorithm

Main Results and Discussion


Initial gradient settings produced insufficient separation (resolution <1.0 for key compound pairs). Through four iterative optimization cycles, the AI algorithm identified a gradient profile meeting the target resolution of 1.5, including an isocratic hold after nine minutes to resolve closely eluting theaflavin isomers. Application to tea leaf extracts revealed:
  • Green tea contained higher levels of core catechins, including methylated derivatives associated with anti-allergic properties.
  • Black tea showed predominant theaflavin peaks, reflecting catechin conversion during fermentation.

Benefits and Practical Applications


  • Significant reduction in method development time and operator effort.
  • Automated, reproducible gradient optimization suitable for complex mixtures.
  • Facilitates comparative quantitation of functional phytochemicals in various food matrices.

Future Trends and Application Possibilities


  • Integration of multi-objective optimization (analysis speed, solvent usage, peak capacity).
  • Extension to diverse sample types (pharmaceuticals, environmental samples).
  • Cloud-based AI platforms for collaborative method development and data sharing.
  • Predictive models linking compound structures to retention behavior and optimal conditions.

Conclusion


The AI-driven gradient optimization implemented in LabSolutions MD enabled fully automated development of an LC method that achieved baseline separation of fifteen functional compounds with minimal human intervention. The approach demonstrated robust performance when applied to different tea leaf samples, underscoring its potential to streamline analytical workflows and support in-depth investigation of bioactive food components.

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