Analysis of Metabolites Extracted from Human Embryonic Stem Cells Using GC-MS
Applications | 2015 | ShimadzuInstrumentation
This study addresses the comprehensive profiling of metabolites in human embryonic stem (ES) cells by gas chromatography–mass spectrometry (GC-MS). Metabolome analysis is critical for understanding cellular functions, identifying disease biomarkers and elucidating metabolic pathways during early development. High-coverage analysis of ES cell metabolites supports research in regenerative medicine, toxicology and quality control of cell therapies.
The primary objective is to extract, derivatize and identify a broad range of metabolites from human ES cells using GC-MS coupled with a dedicated metabolite database. By applying trimethylsilylation (TMS) and methoximation, the work aims to detect and annotate small molecules involved in central carbon metabolism, amino acid turnover and lipid biosynthesis.
Human ES cells were cultured in four 60 mm dishes, harvested and subjected to solvent extraction followed by methoximation and TMS derivatization. Samples were analyzed on a Shimadzu GCMS-TQ8040 operated in Q3 scan mode. Key operating parameters:
The total ion current chromatogram revealed well-resolved peaks across a 4–67 min acquisition window. Using the Smart Metabolites Database, 124 TMS-derivatized metabolites were identified, spanning amino acids, organic acids, sugars, nucleotides and fatty acids. An internal standard, 2-isopropylmalic acid, confirmed reproducibility. The profile highlights central carbon intermediates (e.g., citrate, malate), amino acid derivatives (e.g., alanine, glutamine) and lipid components (e.g., palmitic, oleic acids).
The broad coverage underscores the method’s suitability for untargeted metabolomics in stem cell research. Peak patterns reflect active glycolysis, tricarboxylic acid cycle flux and lipid metabolism pertinent to pluripotent cell maintenance.
The described GC-MS workflow offers:
Applications include biomarker discovery, metabolic phenotyping of cell lines, quality assessment in cell manufacturing and toxicological screening.
Emerging directions entail integration of GC-MS metabolomics with transcriptomics and proteomics for systems biology. Advances in single-cell sample handling and microfluidic derivatization could enable metabolite profiling at the individual cell level. Enhanced spectral databases and machine learning-driven peak annotation promise faster, more accurate identification for complex biological matrices.
This work demonstrates a validated GC-MS approach to comprehensively profile TMS-derivatized metabolites in human ES cells. The high coverage and reproducibility highlight its utility for basic research and industrial applications, paving the way for deeper insights into stem cell metabolism and biomarker identification.
GC/MSD, GC/MS/MS, GC/QQQ
IndustriesMetabolomics, Clinical Research
ManufacturerShimadzu
Summary
Significance of the Topic
This study addresses the comprehensive profiling of metabolites in human embryonic stem (ES) cells by gas chromatography–mass spectrometry (GC-MS). Metabolome analysis is critical for understanding cellular functions, identifying disease biomarkers and elucidating metabolic pathways during early development. High-coverage analysis of ES cell metabolites supports research in regenerative medicine, toxicology and quality control of cell therapies.
Aims and Overview
The primary objective is to extract, derivatize and identify a broad range of metabolites from human ES cells using GC-MS coupled with a dedicated metabolite database. By applying trimethylsilylation (TMS) and methoximation, the work aims to detect and annotate small molecules involved in central carbon metabolism, amino acid turnover and lipid biosynthesis.
Methodology and Used Instrumentation
Human ES cells were cultured in four 60 mm dishes, harvested and subjected to solvent extraction followed by methoximation and TMS derivatization. Samples were analyzed on a Shimadzu GCMS-TQ8040 operated in Q3 scan mode. Key operating parameters:
- GC column: DB-5, 30 m × 0.25 mm I.D., 1.0 µm film thickness
- Injection: splitless with wool-packed glass insert at 280 °C, 1 µL volume
- Oven program: 100 °C for 4 min, ramp 4 °C/min to 320 °C, hold 8 min
- Carrier gas: helium, linear velocity 39.0 cm/s
- MS: interface 280 °C, ion source 200 °C, scan m/z 45–600, event time 0.3 s
Main Results and Discussion
The total ion current chromatogram revealed well-resolved peaks across a 4–67 min acquisition window. Using the Smart Metabolites Database, 124 TMS-derivatized metabolites were identified, spanning amino acids, organic acids, sugars, nucleotides and fatty acids. An internal standard, 2-isopropylmalic acid, confirmed reproducibility. The profile highlights central carbon intermediates (e.g., citrate, malate), amino acid derivatives (e.g., alanine, glutamine) and lipid components (e.g., palmitic, oleic acids).
The broad coverage underscores the method’s suitability for untargeted metabolomics in stem cell research. Peak patterns reflect active glycolysis, tricarboxylic acid cycle flux and lipid metabolism pertinent to pluripotent cell maintenance.
Benefits and Practical Applications
The described GC-MS workflow offers:
- High-throughput identification of diverse metabolites with minimal sample input
- Robust derivatization enabling analysis of polar and non-polar compounds
- Data compatibility with metabolite libraries for rapid annotation
Applications include biomarker discovery, metabolic phenotyping of cell lines, quality assessment in cell manufacturing and toxicological screening.
Future Trends and Possibilities
Emerging directions entail integration of GC-MS metabolomics with transcriptomics and proteomics for systems biology. Advances in single-cell sample handling and microfluidic derivatization could enable metabolite profiling at the individual cell level. Enhanced spectral databases and machine learning-driven peak annotation promise faster, more accurate identification for complex biological matrices.
Conclusion
This work demonstrates a validated GC-MS approach to comprehensively profile TMS-derivatized metabolites in human ES cells. The high coverage and reproducibility highlight its utility for basic research and industrial applications, paving the way for deeper insights into stem cell metabolism and biomarker identification.
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