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Nonparametric Bayesian Evaluation of Differential Protein Quantification
Journal article   Peer reviewed

Nonparametric Bayesian Evaluation of Differential Protein Quantification

Oliver Serang, A. Ertugrul Cansizoglu, Lukas Kall, Hanno Steen and Judith A. Steen
Journal of proteome research, Vol.12(10), pp.4556-4565
04/10/2013
PMID: 24024742

Abstract

Biochemical Research Methods Biochemistry & Molecular Biology Life Sciences & Biomedicine Science & Technology
Arbitrary cutoffs are ubiquitous in quantitative computational proteomics: maximum acceptable MS/MS PSM or peptide q value, minimum ion intensity to calculate a fold change, the minimum number of peptides that must be available to trust the estimated protein fold change (or the minimum number of PSMs that must be available to trust the estimated peptide fold change), and the "significant" fold change cutoff. Here we introduce a novel experimental setup and nonparametric Bayesian algorithm for determining the statistical quality of a proposed differential set of proteins or peptides. By comparing putatively nonchanging case-control evidence to an empirical null distribution derived from a control-control experiment, we successfully avoid some of these common parameters. We then apply our method to evaluating different fold-change rules and find that for our data a 1.2-fold change is the most permissive of the plausible fold-change rules.

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