JOURNAL ARTICLE

Target‐decoy false discovery rate estimation using Crema

Abstract

Abstract Assigning statistical confidence estimates to discoveries produced by a tandem mass spectrometry proteomics experiment is critical to enabling principled interpretation of the results and assessing the cost/benefit ratio of experimental follow‐up. The most common technique for computing such estimates is to use target‐decoy competition (TDC), in which observed spectra are searched against a database of real (target) peptides and a database of shuffled or reversed (decoy) peptides. TDC procedures for estimating the false discovery rate (FDR) at a given score threshold have been developed for application at the level of spectra, peptides, or proteins. Although these techniques are relatively straightforward to implement, it is common in the literature to skip over the implementation details or even to make mistakes in how the TDC procedures are applied in practice. Here we present Crema, an open‐source Python tool that implements several TDC methods of spectrum‐, peptide‐ and protein‐level FDR estimation. Crema is compatible with a variety of existing database search tools and provides a straightforward way to obtain robust FDR estimates.

Keywords:
Decoy False discovery rate Python (programming language) Computer science Data mining Biology

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Citation History

Topics

Advanced Proteomics Techniques and Applications
Physical Sciences →  Chemistry →  Spectroscopy
Mass Spectrometry Techniques and Applications
Physical Sciences →  Chemistry →  Spectroscopy
Metabolomics and Mass Spectrometry Studies
Life Sciences →  Biochemistry, Genetics and Molecular Biology →  Molecular Biology
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