| Literature DB >> 24761189 |
Yong Fuga Li1, Randy J Arnold2, Predrag Radivojac1, Haixu Tang1.
Abstract
We present a generic Bayesian framework for the peptide and protein identification in proteomics, and provide a unified interpretation for the database searching and the de novo peptide sequencing approaches that are used in peptide identification. We describe several probabilistic graphical models and a variety of prior distributions that can be incorporated into the Bayesian framework to model different types of prior information, such as the known protein sequences, the known protein abundances, the peptide precursor masses, the estimated peptide retention time and the peptide detectabilities. Various applications of the Bayesian framework are discussed theoretically, including its application to the identification of peptides containing mutations and post-translational modifications.Entities:
Keywords: Bayesian methods; Mass spectrometry; Protein identification; Shotgun proteomics
Year: 2012 PMID: 24761189 PMCID: PMC3992622 DOI: 10.4310/SII.2012.v5.n1.a3
Source DB: PubMed Journal: Stat Interface ISSN: 1938-7989 Impact factor: 0.582