A Comprehensive GC-TOFMS Metabolomics Workflow
Aplikace | 2022 | LECOInstrumentace
Type 2 diabetes mellitus affects hundreds of millions worldwide and leads to severe complications if not detected early. Metabolomics offers a powerful route to discover molecular signatures in biofluids that can serve as predictive or diagnostic biomarkers. A robust, high-throughput workflow combining gas chromatography with time-of-flight mass spectrometry enables comprehensive profiling of small metabolites in human plasma, supporting early intervention and improved disease management.
This work presents an end-to-end GC-TOFMS metabolomics protocol for identifying potential type 2 diabetes biomarkers in human plasma. Key aims include automating derivatization, acquiring high-resolution mass spectral data, and applying advanced software for peak detection, alignment, and statistical analysis to pinpoint metabolic differences between diabetic and control cohorts.
The study analyzed plasma from 15 diabetic subjects with common comorbidities and 15 healthy controls. Each 100 microliter plasma aliquot underwent protein precipitation with methanol, centrifugation, and dual-mode evaporation including SpeedVac and lyophilization. Dry extracts were derivatized in an autosampler at elevated temperature using MTBSTFA with 1 percent TBDMCS. Triplicate injections ensured reproducibility. Data processing involved peak finding, retention alignment, library search and multivariate analysis, notably principal component analysis, to highlight metabolites with significant abundance differences (p < 0.01).
Comprehensive GC-TOFMS data revealed clear metabolic distinctions between diabetic and control plasmas. Statistical processing annotated several significantly altered metabolites, including branched chain amino acids (leucine, isoleucine, valine), short-chain hydroxy acids (3-hydroxybutyric acid), purine derivatives (hypoxanthine, uric acid), and other compounds linked to glucose dysregulation and ketoacidosis. Principal component analysis demonstrated robust sample separation. Combining ChromaTOF Sync with BT software improved deconvolution and spectral matching, yielding high average library similarity scores above 800 out of 1000 for representative analytes.
This automated workflow delivers high throughput, consistency, and sensitivity for plasma metabolite profiling. It can accelerate biomarker discovery pipelines, support clinical research into diabetes pathogenesis, and adapt to broad metabolomics studies in pharmaceutical or nutritional science contexts. The integrated software suite streamlines data handling from raw chromatograms to statistical output, facilitating rapid candidate validation.
Advancements in ion mobility, higher speed detectors, and machine learning–driven data mining promise to enhance coverage and annotation confidence. Integrating multi-omic layers with metabolomics and expanding spectral libraries will further refine biomarker selection. Real-time metabolic monitoring and point-of-care miniaturized GC-TOFMS systems may emerge for personalized medicine applications in diabetes management.
A fully automated GC-TOFMS metabolomics workflow was established for identifying type 2 diabetes biomarkers in human plasma. The combination of automated derivatization, high-resolution TOFMS data acquisition, and powerful software processing enabled confident annotation of altered metabolites. This approach offers a scalable platform for disease biomarker discovery and translational metabolomics research.
GC/MSD, GC/TOF, Software
ZaměřeníMetabolomika
VýrobceLECO
Souhrn
Importance of the Topic
Type 2 diabetes mellitus affects hundreds of millions worldwide and leads to severe complications if not detected early. Metabolomics offers a powerful route to discover molecular signatures in biofluids that can serve as predictive or diagnostic biomarkers. A robust, high-throughput workflow combining gas chromatography with time-of-flight mass spectrometry enables comprehensive profiling of small metabolites in human plasma, supporting early intervention and improved disease management.
Study Objectives and Overview
This work presents an end-to-end GC-TOFMS metabolomics protocol for identifying potential type 2 diabetes biomarkers in human plasma. Key aims include automating derivatization, acquiring high-resolution mass spectral data, and applying advanced software for peak detection, alignment, and statistical analysis to pinpoint metabolic differences between diabetic and control cohorts.
Methodology
The study analyzed plasma from 15 diabetic subjects with common comorbidities and 15 healthy controls. Each 100 microliter plasma aliquot underwent protein precipitation with methanol, centrifugation, and dual-mode evaporation including SpeedVac and lyophilization. Dry extracts were derivatized in an autosampler at elevated temperature using MTBSTFA with 1 percent TBDMCS. Triplicate injections ensured reproducibility. Data processing involved peak finding, retention alignment, library search and multivariate analysis, notably principal component analysis, to highlight metabolites with significant abundance differences (p < 0.01).
Used Instrumentation
- Gas chromatograph: Agilent 7890 with L-PAL3 autosampler
- Column: Rxi-5MS, 30 m x 0.25 mm x 0.25 μm
- Injection: 1 μL split 20 to 1 at 250 °C
- Carrier gas: Helium at 1.4 mL/min constant flow
- Mass spectrometer: LECO Pegasus BT TOFMS, ion source 250 °C, electron ionization, m/z 45–650, acquisition at 10 spectra/s
Main Results and Discussion
Comprehensive GC-TOFMS data revealed clear metabolic distinctions between diabetic and control plasmas. Statistical processing annotated several significantly altered metabolites, including branched chain amino acids (leucine, isoleucine, valine), short-chain hydroxy acids (3-hydroxybutyric acid), purine derivatives (hypoxanthine, uric acid), and other compounds linked to glucose dysregulation and ketoacidosis. Principal component analysis demonstrated robust sample separation. Combining ChromaTOF Sync with BT software improved deconvolution and spectral matching, yielding high average library similarity scores above 800 out of 1000 for representative analytes.
Benefits and Practical Applications
This automated workflow delivers high throughput, consistency, and sensitivity for plasma metabolite profiling. It can accelerate biomarker discovery pipelines, support clinical research into diabetes pathogenesis, and adapt to broad metabolomics studies in pharmaceutical or nutritional science contexts. The integrated software suite streamlines data handling from raw chromatograms to statistical output, facilitating rapid candidate validation.
Future Trends and Potential Applications
Advancements in ion mobility, higher speed detectors, and machine learning–driven data mining promise to enhance coverage and annotation confidence. Integrating multi-omic layers with metabolomics and expanding spectral libraries will further refine biomarker selection. Real-time metabolic monitoring and point-of-care miniaturized GC-TOFMS systems may emerge for personalized medicine applications in diabetes management.
Conclusion
A fully automated GC-TOFMS metabolomics workflow was established for identifying type 2 diabetes biomarkers in human plasma. The combination of automated derivatization, high-resolution TOFMS data acquisition, and powerful software processing enabled confident annotation of altered metabolites. This approach offers a scalable platform for disease biomarker discovery and translational metabolomics research.
References
- Gedela S, Rao AA, Medicheria NR. International Journal of Biomedical Science. 2007;3(4):229–236.
- Laakso M. Molecular Metabolism. 2019;27:S139–S146.
- Long G, Yang Z, Wang L, Han Y, Peng C, Yan C. BMC Endocrine Disorders. 2020;20:174.
- Long L, Liu H, Wang Y, et al. Journal of Chromatography B. 2015;997:96–104.
- Zhao X, Fritsche J, Wang J, et al. Metabolomics. 2010;7:362–374.
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