Literature DB >> 19256476

Predicting intensity ranks of peptide fragment ions.

Ari M Frank1.   

Abstract

Accurate modeling of peptide fragmentation is necessary for the development of robust scoring functions for peptide-spectrum matches, which are the cornerstone of MS/MS-based identification algorithms. Unfortunately, peptide fragmentation is a complex process that can involve several competing chemical pathways, which makes it difficult to develop generative probabilistic models that describe it accurately. However, the vast amounts of MS/MS data being generated now make it possible to use data-driven machine learning methods to develop discriminative ranking-based models that predict the intensity ranks of a peptide's fragment ions. We use simple sequence-based features that get combined by a boosting algorithm into models that make peak rank predictions with high accuracy. In an accompanying manuscript, we demonstrate how these prediction models are used to significantly improve the performance of peptide identification algorithms. The models can also be useful in the design of optimal multiple reaction monitoring (MRM) transitions, in cases where there is insufficient experimental data to guide the peak selection process. The prediction algorithm can also be run independently through PepNovo+, which is available for download from http://bix.ucsd.edu/Software/PepNovo.html.

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Year:  2009        PMID: 19256476      PMCID: PMC2738854          DOI: 10.1021/pr800677f

Source DB:  PubMed          Journal:  J Proteome Res        ISSN: 1535-3893            Impact factor:   4.466


  52 in total

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  29 in total

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Review 2.  Proteogenomics to discover the full coding content of genomes: a computational perspective.

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4.  Investigation of scrambled ions in tandem mass spectra, part 2. On the influence of the ions on peptide identification.

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Review 7.  Algorithms and design strategies towards automated glycoproteomics analysis.

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8.  A high-throughput de novo sequencing approach for shotgun proteomics using high-resolution tandem mass spectrometry.

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Review 9.  Review of software tools for design and analysis of large scale MRM proteomic datasets.

Authors:  Christopher M Colangelo; Lisa Chung; Can Bruce; Kei-Hoi Cheung
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10.  Energy dependence of HCD on peptide fragmentation: stepped collisional energy finds the sweet spot.

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