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Proteomics (Weinheim), 2023-09, Vol.23 (17), p.e2200341-n/a
2023
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Autor(en) / Beteiligte
Titel
A deep learning model for predicting optimal distance range in crosslinking mass spectrometry data
Ist Teil von
  • Proteomics (Weinheim), 2023-09, Vol.23 (17), p.e2200341-n/a
Ort / Verlag
Germany: Wiley Subscription Services, Inc
Erscheinungsjahr
2023
Quelle
Wiley Blackwell Single Titles
Beschreibungen/Notizen
  • Macromolecular assemblies play an important role in all cellular processes. While there has recently been significant progress in protein structure prediction based on deep learning, large protein complexes cannot be predicted with these approaches. The integrative structure modeling approach characterizes multi‐subunit complexes by computational integration of data from fast and accessible experimental techniques. Crosslinking mass spectrometry is one such technique that provides spatial information about the proximity of crosslinked residues. One of the challenges in interpreting crosslinking datasets is designing a scoring function that, given a structure, can quantify how well it fits the data. Most approaches set an upper bound on the distance between Cα atoms of crosslinked residues and calculate a fraction of satisfied crosslinks. However, the distance spanned by the crosslinker greatly depends on the neighborhood of the crosslinked residues. Here, we design a deep learning model for predicting the optimal distance range for a crosslinked residue pair based on the structures of their neighborhoods. We find that our model can predict the distance range with the area under the receiver‐operator curve of 0.86 and 0.7 for intra‐ and inter‐protein crosslinks, respectively. Our deep scoring function can be used in a range of structure modeling applications.
Sprache
Englisch
Identifikatoren
ISSN: 1615-9853
eISSN: 1615-9861
DOI: 10.1002/pmic.202200341
Titel-ID: cdi_proquest_miscellaneous_2802884508

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