Assigning Significance to Peptides Identified by Tandem Mass Spectrometry Using Decoy Databases
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Abstract
Automated methods for assigning peptides to observed tandem mass spectra typically return a list of peptide-spectrum matches, ranked according to an arbitrary score. In this article, we describe methods for converting these arbitrary scores into more useful statistical significance measures. These methods employ a decoy sequence database as a model of the null hypothesis, and use false discovery rate (FDR) analysis to correct for multiple testing. We first describe a simple FDR inference method and then describe how estimating and taking into account the percentage of incorrectly identified spectra in the entire data set can lead to increased statistical power.
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4Topics & keywords
Topics
Keywords
- False discovery rate
- Decoy
- Computer science
- Inference
- Statistical power
- Set (abstract data type)
- Statistical inference
- Statistical hypothesis testing
UN Sustainable Development Goals
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