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Published June 4, 2024 | in press
Journal Article Open

Increasing Proteome Coverage Through a Reduction in Analyte Complexity in Single-Cell Equivalent Samples

Abstract

The advancement of sophisticated instrumentation in mass spectrometry has catalyzed an in-depth exploration of complex proteomes. This exploration necessitates a nuanced balance in experimental design, particularly between quantitative precision and the enumeration of analytes detected. In bottom-up proteomics, a key challenge is that oversampling of abundant proteins can adversely affect the identification of a diverse array of unique proteins. This issue is especially pronounced in samples with limited analytes, such as small tissue biopsies or single-cell samples. Methods such as depletion and fractionation are suboptimal to reduce oversampling in single cell samples, and other improvements on LC and mass spectrometry technologies and methods have been developed to address the trade-off between precision and enumeration. We demonstrate that by using a monosubstrate protease for proteomic analysis of single-cell equivalent digest samples, an improvement in quantitative accuracy can be achieved, while maintaining high proteome coverage established by trypsin. This improvement is particularly vital for the field of single-cell proteomics, where single-cell samples with limited number of protein copies, especially in the context of low-abundance proteins, can benefit from considering analyte complexity. Considerations about analyte complexity, alongside chromatographic complexity, integration with data acquisition methods, and other factors such as those involving enzyme kinetics, will be crucial in the design of future single-cell workflows.

Copyright and License

© 2024 The Authors. Published by American Chemical Society. This publication is licensed under CC-BY 4.0.

Acknowledgement

The Proteome Exploration Laboratory is supported by NIH OD010788, NIH OD020013, the Betty and Gordon Moore Foundation through grant GBMF775, and the Beckman Institute at the California Institute of Technology. We gratefully acknowledge support from Wellcome Leap through its Delta Tissue program. We also thank Pierre J. Walker for helpful discussions. This work was supported by the A*STAR National Science Scholarship(BS-PhD).

Data Availability

  • Table S1, Gradient conditions for LC-MS/MS analysis; Table S2, MS settings for DIA LC-MS/MS analysis; Figure S1, further characterization of proteomic data from different proteases; Figure S2, LCMS experimental details from different proteases; Figure S3, proteomic DIA data from different proteases at single-cell equivalent; Figure S4, further characterization extraction and identification of peptide features across various acquisition times; Figure S5, LCMS experimental details from different proteases (LysC, trypsin) across various acquisition times; Figure S6, CV distributions of shared and unique peptides across various acquisition times; Figure S7, further characterization of proteomics data from bulk digest and dil-dig Tryp and LysC; Figure S8, CV distribution for peptides that shared and unique peptides across bulk digest and dilute-then-digest methods at single-cell equivalent; and Figure S9, LCMS experimental details from bulk digest and dilute-then-digest methods across various input loads at digestion (PDF)

 

Conflict of Interest

The authors declare no competing financial interest.

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Additional details

Created:
June 5, 2024
Modified:
June 5, 2024