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Refining comparative proteomics by spectral counting to account for shared peptides and multiple search engines. | LitMetric

AI Article Synopsis

  • Spectral counting is a key method in label-free shotgun proteomics, but challenges arise from peptide-protein matching, affecting analysis accuracy.
  • The authors propose three strategies to enhance comparative proteomics, primarily by comparing spectral counts of peptide groups instead of protein groups, which minimizes issues from shared peptides.
  • They introduce four models for integrating popular search engines that improve spectral counting accuracy, highlighting a vote counting model and the benefits of semi-tryptic searching.

Article Abstract

Spectral counting has become a widely used approach for measuring and comparing protein abundance in label-free shotgun proteomics. However, when analyzing complex samples, the ambiguity of matching between peptides and proteins greatly affects the assessment of peptide and protein inventories, differentiation, and quantification. Meanwhile, the configuration of database searching algorithms that assign peptides to MS/MS spectra may produce different results in comparative proteomic analysis. Here, we present three strategies to improve comparative proteomics through spectral counting. We show that comparing spectral counts for peptide groups rather than for protein groups forestalls problems introduced by shared peptides. We demonstrate the advantage and flexibility of this new method in two datasets. We present four models to combine four popular search engines that lead to significant gains in spectral counting differentiation. Among these models, we demonstrate a powerful vote counting model that scales well for multiple search engines. We also show that semi-tryptic searching outperforms tryptic searching for comparative proteomics. Overall, these techniques considerably improve protein differentiation on the basis of spectral count tables.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC3717168PMC
http://dx.doi.org/10.1007/s00216-012-6011-xDOI Listing

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