4.8 Article

Comparative Assessment of Quantification Methods for Tumor Tissue Phosphoproteomics

期刊

ANALYTICAL CHEMISTRY
卷 94, 期 31, 页码 10893-10906

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acs.analchem.2c01036

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资金

  1. national funding organizations
  2. EC
  3. MESI-STRAT project
  4. PoLiMeR Innovative Training Network
  5. European Union
  6. German Tuberous Sclerosis Foundation
  7. Stichting TSC Fonds [754688]
  8. German Research Foundation [812616]
  9. Rosalind Franklin Fellowship of the University of Groningen [TH 1358/3-1]
  10. Netherlands X-omics Initiative (NWO)
  11. European Respiratory Society (ERS, RESPIRE3)
  12. University of Innsbruck [101057014]
  13. Tyrolian Research Fund
  14. Deutsche Forschungsgemeinschaft (DFG) [184.034.019]
  15. [R3201703-00121]
  16. [316826]
  17. [18903]
  18. [INST 337/15-1]
  19. [INST 337/16-1]
  20. [INST 152/837-1]

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The study compares three different quantitation techniques for tumor tissue phosphoproteomics and highlights the strengths and limitations of each method. The choice of quantitative methodology is critical for study design and comparison of published cancer phosphoproteomes. The results provide a resource for the design and analysis of quantitative phosphoproteomic studies in cancer research and diagnostics.
With increasing sensitivity and accuracy in mass spectrometry, the tumor phosphoproteome is getting into reach. However, the selection of quantitation techniques best-suited to the biomedical question and diagnostic requirements remains a trial and error decision as no study has directly compared their performance for tumor tissue phosphoproteomics. We compared label-free quantification (LFQ), spike-in-SILAC (stable isotope labeling by amino acids in cell culture), and tandem mass tag (TMT) isobaric tandem mass tags technology for quantitative phosphosite profiling in tumor tissue. Compared to the classic SILAC method, spike-in-SILAC is not limited to cell culture analysis, making it suitable for quantitative analysis of tumor tissue samples. TMT offered the lowest accuracy and the highest precision and robustness toward different phosphosite abundances and matrices. Spike-in-SILAC offered the best compromise between these features but suffered from a low phosphosite coverage. LFQ offered the lowest precision but the highest number of identifications. Both spike-in-SILAC and LFQ presented susceptibility to matrix effects. Match between run (MBR)-based analysis enhanced the phosphosite coverage across technical replicates in LFQ and spike-in-SILAC but further reduced the precision and robustness of quantification. The choice of quantitative methodology is critical for both study design such as sample size in sample groups and quantified phosphosites and comparison of published cancer phosphoproteomes. Using ovarian cancer tissue as an example, our study builds a resource for the design and analysis of quantitative phosphoproteomic studies in cancer research and diagnostics.

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