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Omics studies elucidate an increase in bio-production efficiency

Applications | 2017 | BrukerInstrumentation
LC/TOF, LC/HRMS, LC/MS, LC/MS/MS
Industries
Proteomics , Metabolomics
Manufacturer
Bruker

Summary

Significance of the Topic


This study addresses the optimization of amino acid production via rational strain engineering, combining metabolomics and proteomics to understand and overcome biosynthetic bottlenecks. Arginine is a high-value compound for food, cosmetic and pharmaceutical industries, and increasing its microbial yield offers economic and environmental benefits.

Objectives and Study Overview


The main goal was to elucidate how targeted genetic modifications in Corynebacterium glutamicum improve arginine production. Three mutant strains with deletions or overexpression of key pathway genes (argR, argBfbr, argGH) were compared against the wild type. By integrating high-resolution LC-MS/MS–based proteomics and metabolomics data, the study sought to map molecular changes onto the arginine biosynthetic pathway and identify rate-limiting steps.

Methodology and Instrumentation


The impact II Q-TOF mass spectrometer with InstantExpertise™ data-dependent acquisition was used for both omics streams. Metabolomics employed HILIC chromatography and HRAM LC-QTOF analysis, with data processed in MetaboScape for feature annotation, statistical evaluation and pathway mapping. Proteomics samples underwent nanoLC separation and HRAM analysis, with peptide identification and quantitation via MaxQuant and statistical analysis in Perseus. Extracellular arginine was measured by OPA derivatization and fluorescence detection on an amino acid analyzer.

Main Results and Discussion


• Proteomic profiling revealed up to 8-fold increases in enzymes of the argCJBDFRGH operon upon argR deletion, confirming derepression of the pathway.
• Metabolomics data showed that elevated enzyme levels did not translate into higher intracellular arginine due to residual feedback inhibition and pathway bottlenecks.
• Introducing a feedback-resistant argB allele (argBfbr) enabled a dramatic rise in extracellular arginine (>2 g/L), but led to citrulline accumulation, indicating a new bottleneck at ArgG and ArgH steps.
• Overexpression of argGH in the feedback-resistant background further increased enzyme abundance, reduced citrulline buildup and boosted extracellular arginine titers to >3.5 g/L.

Benefits and Practical Applications


• The dual omics approach pinpointed exact enzymatic limitations in engineered strains, guiding targeted interventions.
• The workflow on the impact II system delivers accurate, reproducible quantitative data for both metabolites and proteins, enabling rapid cycle times for strain optimization.
• This strategy can be generalized to other microbial production systems for amino acids, biofuels and specialty chemicals.

Future Trends and Potential Applications


• Integration of flux analysis and dynamic metabolomics to capture pathway kinetics in real time.
• Application of machine learning to correlate omics patterns with fermentation performance and predict optimal strain designs.
• Expansion of multi-omics to include transcriptomics and lipidomics for a holistic view of cellular regulation.
• Scaling the workflow for high-throughput screening in industrial biotechnology and synthetic biology ventures.

Conclusion


Combining high-performance proteomics and metabolomics on a Q-TOF platform offers powerful insights into microbial strain engineering. Mapping fold changes onto biochemical pathways revealed and resolved bottlenecks in arginine biosynthesis, leading to a sixfold increase in extracellular arginine. Such integrated omics strategies accelerate rational design and optimization of industrial microbial cell factories.

Instrumentation Used


  • Bruker impact II Q-TOF MS with InstantExpertise™ acquisition
  • HILIC LC for metabolomics (ZIC HILIC column)
  • NanoLC-MS/MS for proteomics (C18 trap and analytical columns)
  • Knauer amino acid analyzer with OPA derivatization

References


  1. Cox J., Mann M. MaxQuant enables high peptide identification rates … Nat Biotechnol. 2008;26:1367–72.
  2. Tyanova S., et al. The Perseus computational platform for comprehensive analysis of (prote)omics data. Nat Methods. 2016; doi:10.1038/nmeth.3905.
  3. Kutmon M., et al. PathVisio 3: An Extendable Pathway Analysis Toolbox. PLoS Comput Biol. 2015;11(2):e1004085.
  4. van Iersel M.P., et al. Presenting and exploring biological pathways with PathVisio. BMC Bioinformatics. 2008;9:399.
  5. Walter F., et al. J Biotechnol. 2015; doi:10.1016/j.jbiotec.2015.01.006.
  6. Poster Note PN-26: MetaboScape … Increasing Arginine Production in C. glutamicum. Bruker Daltonics; 2016.

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