4.7 Article

Peptide Correlation Analysis (PeCorA) Reveals Differential Proteoform Regulation

Journal

JOURNAL OF PROTEOME RESEARCH
Volume 20, Issue 4, Pages 1972-1980

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.jproteome.0c00602

Keywords

proteomics; quantification; R; peptides; bioinformatics; computation; proteoform; proteins; linear model; statistics

Funding

  1. NIH [T15LM007359, 5T32HG002760, 5P41GM108538]

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PeCorA is a strategy for detecting quantitative disagreements between peptides in shotgun proteomics, providing important insights in protein quantitation studies. It can identify regulated post-translational modifications or poorly quantified peptides, improving the accuracy of protein quantitation. By using PeCorA, potential anomalies in the proteome can be uncovered, leading to more reliable results in protein quantity analysis.
Shotgun proteomics techniques infer the presence and quantity of proteins using peptide proxies produced by cleavage of the proteome with a protease. Most protein quantitation strategies assume that multiple peptides derived from a protein will behave quantitatively similar across treatment groups, but this assumption may be false due to (1) heterogeneous proteoforms and (2) technical artifacts. Here we describe a strategy called peptide correlation analysis (PeCorA) that detects quantitative disagreements between peptides mapped to the same protein. PeCorA fits linear models to assess whether a peptide's change across treatment groups differs from all other peptides assigned to the same protein. PeCorA revealed that similar to 15% of proteins in a mouse microglia stress data set contain at least one discordant peptide. Inspection of the discordant peptides shows the utility of PeCorA for the direct and indirect detection of regulated post-translational modifications (PTMs) and also for the discovery of poorly quantified peptides. The exclusion of poorly quantified peptides before protein quantity summarization decreased falsepositives in a benchmark data set. Finally, PeCorA suggests that the inactive isoform of prothrombin, a coagulation cascade protease, is more abundant in plasma from COVID-19 patients relative to non-COVID-19 controls. PeCorA is freely available as an R package that works with arbitrary tables of quantified peptides.

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