2022
DOI: 10.1101/2022.11.16.516813
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Cross-linking mass spectrometry discovers, evaluates, and validates the experimental and predicted structural proteome

Abstract: Significant recent advances in structural biology, particularly in the field of cryo-electron microscopy, have dramatically expanded our ability to create structural models of proteins and protein complexes. However, many proteins remain refractory to these approaches because of their low abundance, low stability or - in the case of complexes - simply not having yet been analysed. Here, we demonstrate the power of combining cross-linking mass spectrometry (XL-MS) with artificial intelligence-based structure pr… Show more

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Cited by 6 publications
(7 citation statements)
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“…Next, we compared our XL-PPIs against the BioPlex and BioGrid PPI databases, as well as other published proteome-wide XL-MS data. Out of the 1,600 XL-PPIs identified from basal breast cancer, 373 were found in the selected PPI databases and 200 have been reported by previous proteome-wide XL-MS studies, [25][26][27][28][29]57,58 with the remaining 1,027 XL-PPIs representing novel interactions (Table S5A).…”
Section: Xl-ppi Network Of the Pdx Modelsmentioning
confidence: 99%
“…Next, we compared our XL-PPIs against the BioPlex and BioGrid PPI databases, as well as other published proteome-wide XL-MS data. Out of the 1,600 XL-PPIs identified from basal breast cancer, 373 were found in the selected PPI databases and 200 have been reported by previous proteome-wide XL-MS studies, [25][26][27][28][29]57,58 with the remaining 1,027 XL-PPIs representing novel interactions (Table S5A).…”
Section: Xl-ppi Network Of the Pdx Modelsmentioning
confidence: 99%
“…Native MS is also being leveraged to improve other structural biology techniques, such as soft landing of mass-selected protein complexes for further structural characterization (e.g., cryo-electron microscopy). , Hydrogen–deuterium exchange and protein footprinting have also seen substantive gains due to steady improvements in instrumentation , , At the peptide level, methods for cross-linking MS (XL-MS) have enabled large-scale structural proteomics studies owing in part to the advanced instrumentation discussed herein. ,, Proximity-dependent labeling has also emerged to help map interactions and corroborate structural studies. As some of the more demanding studies within the field, structural proteomics at both the peptide (XL-MS) and the protein (native MS) level will likely continue to progress at rapid rates that mirror the exciting instrument developments sure to manifest in coming years.…”
Section: Evolution Of Experimental Design In Proteomicsmentioning
confidence: 99%
“…Structure predictions obtained by either AF2 or AF2-Multimer can also be used in combination with hydrogen-deuterium exchange mass spectrometry (HDX-MS) data to predict or validate models of protein–protein complexes, as HDX-MS is very efficient to identify protein regions involved in protein–protein interactions. , …”
Section: The Impact Of Ai-generated Models Beyond Molecular Replacementmentioning
confidence: 99%
“…Structure predictions obtained by either AF2 or AF2-Multimer can also be used in combination with hydrogendeuterium exchange mass spectrometry (HDX-MS) data to predict or validate models of protein−protein complexes, as HDX-MS is very efficient to identify protein regions involved in protein−protein interactions. 100,101 AF2 and RF should also prove very useful in combination with low-dimensionality structural methods, facilitating their interpretation, for example, with force spectroscopy, 102 CD 103 and SAXS 104−107 or FRET. Given the degeneracy associated with low-dimensionality methods, it is recommended to maximize the number of independent validations (see above).…”
Section: Molecular Biology and Construct Designmentioning
confidence: 99%