GCMS
More information
WebinarsAbout usContact usTerms of use
LabRulez s.r.o. All rights reserved. Content available under a CC BY-SA 4.0 Attribution-ShareAlike

GCxGC-TOFMS Data Interpretation of Metabolic Biomarkers from Diabetic and Non-diabetic Urine Utilizing Fisher Ratios Prior to Multivariate Analysis

Posters | 2009 | LECOInstrumentation
GCxGC, GC/MSD, GC/TOF
Industries
Metabolomics, Clinical Research
Manufacturer
Agilent Technologies, LECO

Summary

Importance of the Topic


The characterization of small molecule metabolite profiles in biological fluids is critical for understanding disease mechanisms, identifying diagnostic biomarkers, and monitoring therapeutic interventions. Comprehensive two-dimensional gas chromatography combined with time‐of‐flight mass spectrometry (GCxGC-TOFMS) offers enhanced separation power and data richness, enabling detailed metabolic fingerprinting in complex samples such as diabetic and non-diabetic urine.

Objectives and Study Overview


This study aimed to demonstrate how GCxGC-TOFMS, in combination with advanced data processing tools in ChromaTOF software, can differentiate metabolic profiles between diabetic and non-diabetic subjects. Key goals included:
  • Assessing the increased peak capacity and resolution afforded by GCxGC for small molecule metabolites.
  • Applying time‐of‐flight MS for high-speed spectral acquisition and deconvolution of overlapping peaks.
  • Using Statistical Compare and Fisher Ratio calculations as a pre-processing step to pinpoint analytes with the highest variance between sample classes.
  • Exporting refined data into multivariate analysis workflows (PCA and k-means clustering) to visualize group separation.

Methodology


Sample preparation and derivatization:
  • Subjects: 24 urine samples from four individuals (two non-diabetic controls, one type I diabetic, one type II diabetic).
  • Extraction: 10 mL aliquots acidified to pH 2, extracted with 2 mL methylene chloride; dried over sodium sulfate.
  • Derivatization: 200 µL extract mixed with pyridine and BSTFA in amber vial; heated at 60 °C for 1 hour.

Instrumentation Used


GCxGC-TOFMS parameters:
  • Gas chromatograph: Agilent 7890 with LECO dual-stage cryogenic modulator and secondary oven.
  • Columns: primary Rtx-5ms (30 m × 0.25 mm × 0.25 µm), secondary Rtx-200 (1.5 m × 0.18 mm × 0.20 µm).
  • Carrier gas: Helium at 1.5 mL/min; splitless injection (3 µL), inlet at 260 °C.
  • Temperature programs: primary ramp 40 °C→290 °C, secondary 50 °C→300 °C.
  • Modulation: 5 s period, hot pulse 0.8 s.
  • Mass spectrometer: LECO Pegasus 4D TOFMS, mass range 45–800 m/z, acquisition rate 200 spectra/s, ion source 230 °C.

Key Results and Discussion


Data processing eliminated background and reagent peaks before applying Statistical Compare and Fisher Ratio metrics. On average, over 1 000 peaks per sample were detected with signal-to-noise > 100. Fisher Ratio ranking identified metabolites exhibiting greatest variance across classes. Subsequent PCA and k-means clustering in Miner3D revealed clear separation between diseased and non-diseased urine profiles, with distinct clusters corresponding to diabetic and non-diabetic groups.

Benefits and Practical Applications


The combined GCxGC-TOFMS and ChromaTOF workflow offers:
  • Enhanced chromatographic resolution to resolve co-eluting metabolites.
  • High-speed, deconvoluted mass spectra for accurate compound identification.
  • Streamlined data export for multivariate statistical analysis.
  • Capability to rapidly identify biomarker candidates in metabolic studies.
This approach is applicable in metabolomics research, clinical diagnostics, pharmaceutical development, and quality control laboratories.

Future Trends and Potential Applications


Emerging directions include:
  • Integration with high-throughput automated sample prep and data workflows.
  • Advanced machine learning algorithms for biomarker discovery directly on GCxGC-TOFMS datasets.
  • Coupling with complementary techniques such as LC-MS and NMR for multi-platform metabolomics.
  • Development of portable or benchtop GCxGC systems for point-of-care metabolic profiling.

Conclusion


This study highlights the power of GCxGC-TOFMS combined with Statistical Compare and Fisher Ratio pre-processing to distinguish diabetic from non-diabetic urine metabolomes. The workflow enhances peak capacity, streamlines data mining, and facilitates robust multivariate analysis, supporting its adoption in comprehensive metabolomic investigations.

Content was automatically generated from an orignal PDF document using AI and may contain inaccuracies.

Downloadable PDF for viewing
 

Similar PDF

Toggle
Small Molecule Metabolite Identifications in Diabetic Versus Non-Diabetic Urine Sample Groups Using Comprehensive Two-Dimensional Gas Chromatography Combined with Time-of-Flight Mass Spectrometry (GCxGC-TOFMS)
® Small Molecule Metabolite Identifications in Diabetic Versus Non-Diabetic Urine Sample Groups Using Comprehensive Two-Dimensional Gas Chromatography Combined with Time-of-Flight Mass Spectrometry (GCxGC-TOFMS) John Heim, LECO Corporation; Saint Joseph, Michigan USA Key Words: Fisher Ratio, Sample Groups, Diabetes, Metabolite Profile…
Key words
diabetic, diabeticgcxgc, gcxgctofms, tofmsmolecule, moleculesmall, smallmetabolite, metaboliteprofile, profilegroups, groupsderivatized, derivatizeddisease, diseasechromatof, chromatofmetabolomic, metabolomicurine, urinefisher, fishertms
Utilization of Comprehensive Two-Dimensional Gas Chromatography Combined with Time of Flight Mass Spectrometry (GCxGC-TOFMS) for Small Metabolite Identifications in Complex Biological Samples
® Delivering the Right Results Utilization of Comprehensive Two-Dimensional Gas Chromatography Combined with Time of Flight Mass Spectrometry (GCxGC-TOFMS) for Small Metabolite Identifications in Complex Biological Samples John Heim and Mark Libardoni • LECO Corporation, St. Joseph, MI INTRODUCTION EXPERIMENTAL…
Key words
diabetic, diabeticgcxgc, gcxgctofms, tofmsdimensional, dimensionalflight, flightdifferences, differencesfisher, fishermetabolite, metabolitesmall, smallstatistical, statisticalmetabolomic, metabolomicsteering, steeringillustrate, illustratespectrometry, spectrometrydata
Utilization of Statistical Compare Software and Fisher Ratios Prior to Multivariate Analysis for Complex GCxGCTOFMS Data in Order to Define Statistical Variation Between the Small Molecule Metabolite Profiles of Different Fish Species
® Utilization of Statistical Compare Software and Fisher Ratios Prior to Multivariate Analysis for Complex GCxGCTOFMS Data in Order to Define Statistical Variation Between the Small Molecule Metabolite Profiles of Different Fish Species John Heim • LECO Corporation; Saint Joseph,…
Key words
lake, lakeperch, perchstatistical, statisticalcompare, comparemetabolite, metabolitetofms, tofmsmultivariate, multivariategcxgc, gcxgcmtbstfa, mtbstfatrout, troutfisher, fisherdata, datacanadian, canadianwild, wildfish
Evaluation of Metabolite Variation by a Pooled Sample Approach between Normal Control and Traumatic Brain Injury Mice Using GCxGC-TOFMS with Data Analysis Using a Software Driven Reference Feature
Evaluation of Metabolite Variation by a Pooled Sample Approach between Normal Control and Traumatic Brain Injury Mice Using GCxGC-TOFMS with Data Analysis Using a Software Driven Reference Feature John Heim, Joe Binkley, and Liz Humston-Fulmer | LECO Corporation, Saint Joseph,…
Key words
pooled, pooledtraumatic, traumaticgcxgc, gcxgcmetabolite, metabolitebrain, braintofms, tofmsinjury, injurytbi, tbimainlib, mainlibnormal, normalpools, poolsreference, referencecontrol, controlctrl, ctrlvariations
Other projects
LCMS
ICPMS
Follow us
More information
WebinarsAbout usContact usTerms of use
LabRulez s.r.o. All rights reserved. Content available under a CC BY-SA 4.0 Attribution-ShareAlike