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A biological model of the ageing metabolome reveals potential clinically relevant biomarkers

Posters | 2023 | Shimadzu | ASMSInstrumentation
LC/TOF, LC/HRMS, LC/MS, LC/MS/MS
Industries
Clinical Research
Manufacturer
Shimadzu

Summary

Importance of the Topic


Cellular ageing induces alterations in the metabolome through mechanisms like mitochondrial dysfunction, genomic instability, and senescence-associated secretory changes. Identifying metabolic biomarkers of ageing can improve understanding of age-related diseases and support development of clinical diagnostics and interventions.

Objectives and Study Overview


This study applied an untargeted metabolomics workflow to human foreskin fibroblasts (HFF-1) and their culture media, comparing early-passage (passage 3) and late-passage (passage 20) cells as a model of replicative senescence. Key goals included profiling intracellular and extracellular metabolites, identifying statistically significant changes, and proposing potential biomarkers of ageing.

Methodology


An untargeted HILIC-LC-DIA-MS/MS method was used for broad detection of polar metabolites. Data acquisition employed both data-independent (DIA) and data-dependent (DDA) MS/MS scans. MS-DIAL facilitated feature detection and alignment, while MetaboAnalyst conducted statistical analysis (volcano plots with fold change >1.5, p<0.05). LabSolutions Insight matched significant features against in-house and public MS/MS libraries to confirm metabolite identities.

Used Instrumentation


  • Shim-pack Velox HILIC column (2.1×100 mm, 2.7 μm) at 40°C, 0.3 mL/min flow.
  • Binary mobile phases: water and acetonitrile with 10 mM ammonium formate and 0.1% formic acid.
  • Shimadzu LCMS-9030 Q-TOF mass spectrometer in positive and negative ion modes.
  • MS scan range m/z 60–1000, DIA precursor window 35 Da, collision energy 5–55 V, DDA with 20 MS/MS scans per cycle.

Main Results and Discussion


Comparisons between passage 3 and passage 20 cells revealed significant changes in amino acids, nucleotides, vitamins, carnitines, and lysophospholipids. Intracellular senescent cells showed elevated levels of polyamines (e.g., spermidine, N8-acetylspermidine) and certain lipids, alongside reduced levels of key metabolites such as glutathione and essential amino acids. Extracellular profiling identified increased extracellular phosphorylcholine, ribose-5-phosphate, and inosine in aged media, while other nutrients declined. These findings highlight specific metabolic pathways affected by cellular ageing.

Benefits and Practical Applications


  • Provides a comprehensive untargeted metabolomics protocol adaptable to various cell models.
  • Identifies putative ageing biomarkers with potential clinical relevance for diagnostics.
  • Supports quality control in cell culture and pharmaceutical research by monitoring metabolic shifts.

Future Trends and Opportunities


  • Integration with transcriptomics and proteomics to build multi-omics ageing profiles.
  • Targeted validation of identified biomarkers in clinical samples.
  • Application of machine learning for predictive modelling of cellular senescence.
  • Development of standardized metabolomics workflows for ageing research in diverse cell types.

Conclusion


The untargeted HILIC-LC-DIA-MS/MS workflow effectively captured senescence-associated metabolic alterations in HFF-1 cells and their media. The study revealed promising biomarkers of replicative ageing, demonstrating the utility of high-resolution metabolomics in ageing research and potential clinical translation.

References


No external literature list provided.

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