2022
DOI: 10.1021/acschembio.1c00689
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A Useful Guide to Lectin Binding: Machine-Learning Directed Annotation of 57 Unique Lectin Specificities

Abstract: Glycans are critical to every facet of biology and medicine, from viral infections to embryogenesis. Tools to study glycans are rapidly evolving, however the majority of our knowledge is deeply dependent on binding by glycan binding proteins (e.g., lectins). The specificities of lectins, which are often naturally isolated proteins, have not been welldefined, making it difficult to leverage their full potential for glycan analysis. Herein, we use glycan microarray analysis of 116 commercially available lectins,… Show more

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Cited by 141 publications
(195 citation statements)
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References 145 publications
(317 reference statements)
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“…The glycans predicted to have the strongest binding match both the experimentally observed results. Further we see these glycans possess binding motifs previously reported by Mahal and coworkers 54 suggesting that GlyNet recognizes the same features that have been previously identified as binding motifs for these proteins. The result is that GlyNet makes it possible to compare data from arrays that have mismatched composition by extrapolating the binding for glycans that are not included in all of the arrays.…”
Section: Resultssupporting
confidence: 85%
“…The glycans predicted to have the strongest binding match both the experimentally observed results. Further we see these glycans possess binding motifs previously reported by Mahal and coworkers 54 suggesting that GlyNet recognizes the same features that have been previously identified as binding motifs for these proteins. The result is that GlyNet makes it possible to compare data from arrays that have mismatched composition by extrapolating the binding for glycans that are not included in all of the arrays.…”
Section: Resultssupporting
confidence: 85%
“…2019 ) and other databases. A resource that appeared after submission of this work is a machine learning annotation of lectin specificities, which could provide additional, complementary information ( Bojar et al. 2022 ).…”
Section: Discussionmentioning
confidence: 99%
“…Both AIA and MPA recognize these core 1/3 O -glycans with many terminal extensions, implying that expression of this epitope is likely due to an increase in levels of this O- glycan rather than trimming of existing unrecognized epitopes. 31 This effect on core 1/3 O -glycans is seen in both Gram-positive and Gram-negative infections. The increase of core 1/3 O -glycans can be observed in early sepsis in three out of the four organisms studied.…”
Section: Results and Discussionmentioning
confidence: 99%