Optimization of statistical methods impact on quantitative proteomics data

Open Access
Authors
  • A. Pursiheimo
  • A.P. Vehmas
  • S. Afzal
  • T. Suomi
  • T. Chand
  • L. Strauss
  • M. Poutanen
  • A. Rokka
  • G.L. Corthals
  • L.L. Elo
Publication date 2015
Journal Journal of Proteome Research
Volume | Issue number 14 | 10
Pages (from-to) 4118-4126
Organisations
  • Faculty of Science (FNWI) - Van 't Hoff Institute for Molecular Sciences (HIMS)
Abstract
As tools for quantitative label-free mass spectrometry (MS) rapidly develop, a consensus about the best practices is not apparent. In the work described here we compared popular statistical methods for detecting differential protein expression from quantitative MS data using both controlled experiments with known quantitative differences for specific proteins used as standards as well as "real" experiments where differences in protein abundance are not known a priori. Our results suggest that data-driven reproducibility-optimization can consistently produce reliable differential expression rankings for label-free proteome tools and are straightforward in their application.
Document type Article
Note With supporting information
Language English
Published at https://doi.org/10.1021/acs.jproteome.5b00183
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