| Literature DB >> 17291342 |
Jason W H Wong1, Matthew J Sullivan, Hugh M Cartwright, Gerard Cagney.
Abstract
BACKGROUND: In proteomics experiments, database-search programs are the method of choice for protein identification from tandem mass spectra. As amino acid sequence databases grow however, computing resources required for these programs have become prohibitive, particularly in searches for modified proteins. Recently, methods to limit the number of spectra to be searched based on spectral quality have been proposed by different research groups, but rankings of spectral quality have thus far been based on arbitrary cut-off values. In this work, we develop a more readily interpretable spectral quality statistic by providing probability values for the likelihood that spectra will be identifiable.Entities:
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Year: 2007 PMID: 17291342 PMCID: PMC1803797 DOI: 10.1186/1471-2105-8-51
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Figure 1Modeling identifiable mass spectra using discriminant scoring of spectral features. The distributions of identifiable and unidentifiable spectra in the UCD test dataset were plotted. The number of spectra is calculated with spectra placed in bins of 0.25 for the discriminant score. The solid lines show the actual distributions of spectra while the dotted lines indicate the estimated Gaussian distributions used to model each distribution.
Figure 2Removal unidentifiable spectra by msmsEval. The predicted fraction of spectra removed for identifiable (◆) and unidentifiable (x) spectra were plotted against the observed fractions for 10 runs of the UCD test dataset (A) and 22 runs of the ISB test dataset (B). The estimated fraction of spectra removed is calculated by taking the respective percentiles from the identifiable spectra Gaussian distributions. The diagonal thin dashed line shows expected trend for the removal of identifiable spectra if the estimated values match the observed values perfectly. Error bars are one standard deviation from the average of the respective test datasets. Receiver operator curves showing the fraction of identifiable spectra removed versus unidentifiable spectra removed for the UCD test dataset (solid line) and ISB dataset (dashed line) are also shown (C).
Figure 3msmsEval highlights strong candidates for modified peptide spectra. The observed p(+|D) versus predicted p(+|D) values for 22 runs of the ISB dataset (A) were plotted using binned sets of 100 spectra (i.e. the fraction of the 100 spectra that were observed to be identifiable versus the mean p(+|D)). Observed p(+|D) values calculated using SEQUEST identifications (x), SEQUEST and MSAlignment/InsPecT identifications (◆), and SEQUEST and MSAlignment/InsPecT identifications as well as the additional assignments described in the text (o), are indicated. A pie chart (B) shows the absolute numbers and percentages of spectra from the ISB dataset with predicted p(+|D) > 0.9 that were identified by SEQUEST/MSAlignment/InsPecT, those that were additionally identified by msmsEval, and those that remain unidentified. In total, 83.9% of spectra with p(+|D) > 0.9 were identified.