| Literature DB >> 27642655 |
Şule Yılmaz1,2,3, Friedel Drepper4,5, Niels Hulstaert1,2,3, Maša Černič6,7, Kris Gevaert1,2, Anastassios Economou8,9, Bettina Warscheid4,5, Lennart Martens1,2,3, Elien Vandermarliere1,2,3.
Abstract
Chemical cross-linking coupled with mass spectrometry plays an important role in unravelling protein interactions, especially weak and transient ones. Moreover, cross-linking complements several structural determination approaches such as cryo-EM. Although several computational approaches are available for the annotation of spectra obtained from cross-linked peptides, there remains room for improvement. Here, we present Xilmass, a novel algorithm to identify cross-linked peptides that introduces two new concepts: (i) the cross-linked peptides are represented in the search database such that the cross-linking sites are explicitly encoded, and (ii) the scoring function derived from the Andromeda algorithm was adapted to score against a theoretical tandem mass spectrometry (MS/MS) spectrum that contains the peaks from all possible fragment ions of a cross-linked peptide pair. The performance of Xilmass was evaluated against the recently published Kojak and the popular pLink algorithms on a calmodulin-plectin complex data set, as well as three additional, published data sets. The results show that Xilmass typically had the highest number of identified distinct cross-linked sites and also the highest number of predicted cross-linked sites.Entities:
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Year: 2016 PMID: 27642655 DOI: 10.1021/acs.analchem.6b01585
Source DB: PubMed Journal: Anal Chem ISSN: 0003-2700 Impact factor: 6.986