Improving mass and liquid chromatography based identification of proteins using Bayesian scoring

Sharon S. Chen, Eric W. Deutsch, Eugene C. Yi, Xiao Jun Li, David R. Goodlett, Ruedi Aebersold

Résultats de recherche: Contribution à un journalArticleRevue par des pairs

15 Citations (Scopus)

Résumé

We present a method for peptide and protein identification based on LC-MS profiling. The method identified peptides at high-throughput without expending the sequencing time necessary for CID spectra based identification. The measurable peptide properties of mass and liquid Chromatographie elution conditions are used to characterize and differentiate peptide features, and these peptide features are matched to a reference database from previously acquired and archived LC-MS/MS experiments to generate sequence assignments. The matches are scored according to the probability of an overlap between the peptide feature and the database peptides resulting in a ranked list of possible peptide sequences for each peptide submitted. This method resulted in 6 times more peptide sequence identifications from a single LC-MS analysis of yeast than from shotgun peptide sequencing using LC-MS/MS.

langue originaleAnglais
Pages (de - à)2174-2184
Nombre de pages11
journalJournal of Proteome Research
Volume4
Numéro de publication6
Les DOIs
étatPublié - 1 nov. 2005
Modification externeOui

Contient cette citation