Cao, Xia Nesvizhskii, Alexey I. Improved Sequence Tag Generation Method for Peptide Identification in Tandem Mass Spectrometry The sequence tag-based peptide identification methods are a promising alternative to the traditional database search approach. However, a more comprehensive analysis, optimization, and comparison with established methods are necessary before these methods can gain widespread use in the proteomics community. Using the InsPecT open source code base (Tanner et al., Anal. Chem. 2005, 77, 4626−39), we present an improved sequence tag generation method that directly incorporates multicharged fragment ion peaks present in many tandem mass spectra of higher charge states. We also investigate the performance of sequence tagging under different settings using control data sets generated on five different types of mass spectrometers, as well as using a complex phosphopeptide-enriched sample. We also demonstrate that additional modeling of InsPecT search scores using a semiparametric approach incorporating the accuracy of the precursor ion mass measurement provides additional improvement in the ability to discriminate between correct and incorrect peptide identifications. The overall superior performance of the sequence tag-based peptide identification method is demonstrated by comparison with a commonly used SEQUEST/PeptideProphet approach. precursor ion mass measurement;proteomics community;source code base;InsPecT search scores;control data sets;tandem mass spectra;SEQUEST;peptide identifications;database search approach;sequence tag generation method;Peptide Identification;semiparametric approach;charge states;mass spectrometers;Sequence Tag Generation Method;performance;multicharged fragment ion peaks 2008-10-03
    https://acs.figshare.com/articles/journal_contribution/Improved_Sequence_Tag_Generation_Method_for_Peptide_Identification_in_Tandem_Mass_Spectrometry/2910154
10.1021/pr800400q.s001