| Literature DB >> 26743026 |
Arun Devabhaktuni1, Joshua E Elias1.
Abstract
Dependent on concise, predefined protein sequence databases, traditional search algorithms perform poorly when analyzing mass spectra derived from wholly uncharacterized protein products. Conversely, de novo peptide sequencing algorithms can interpret mass spectra without relying on reference databases. However, such algorithms have been difficult to apply to complex protein mixtures, in part due to a lack of methods for automatically validating de novo sequencing results. Here, we present novel metrics for benchmarking de novo sequencing algorithm performance on large-scale proteomics data sets and present a method for accurately calibrating false discovery rates on de novo results. We also present a novel algorithm (LADS) that leverages experimentally disambiguated fragmentation spectra to boost sequencing accuracy and sensitivity. LADS improves sequencing accuracy on longer peptides relative to that of other algorithms and improves discriminability of correct and incorrect sequences. Using these advancements, we demonstrate accurate de novo identification of peptide sequences not identifiable using database search-based approaches.Keywords: MS/MS; de novo peptide sequencing; large-scale computational analysis; mass spectrometry; proteomics
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Year: 2016 PMID: 26743026 DOI: 10.1021/acs.jproteome.5b00861
Source DB: PubMed Journal: J Proteome Res ISSN: 1535-3893 Impact factor: 4.466