Evaluation of Data Analysis Strategies for Improved Mass Spectrometry-Based Phosphoproteomics
Here we describe a set of enhanced data processing and filtering methods to improve significance and coverage of phosphopeptide identifications by mass spectrometry. We demonstrate that for samples of limited complexity, spectra-based estimation of false discovery rates will lead to overprediction o...
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Veröffentlicht in: | Analytical chemistry (Washington) 2010-12, Vol.82 (23), p.9843-9849 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Here we describe a set of enhanced data processing and filtering methods to improve significance and coverage of phosphopeptide identifications by mass spectrometry. We demonstrate that for samples of limited complexity, spectra-based estimation of false discovery rates will lead to overprediction of confidently identified phosphorylated peptides due to a bias caused by multiple fragmentation of highly abundant peptide species. We further provide evidence that fragmentation of abundant peptides at the tails of their chromatographic peaks is a major source for false positive peptide matches and that overall confidence in phosphopeptide identifications can be improved by a chromatographic peak-based aggregation scheme, intensity rank-based neutral loss and optimized mass error filters. When replicate runs of a standard sample were performed using different fragmentation techniques on an Orbitrap mass spectrometer we observed improvements of 7−31% in phosphopeptide coverage depending on the fragmentation method and the desired false discovery rate. |
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ISSN: | 0003-2700 1520-6882 |
DOI: | 10.1021/ac102083q |