A Boltzmann model predicts glycan structures from lectin binding

Aria Yom, Austin W.T. Chiang, Nathan E. Lewis

Research output: Other contribution

Abstract

Abstract<jats:p/>Glycans are complex polysaccharides involved in many diseases and biological processes. Unfortunately, current methods for determining glycan composition and structure (glycan sequencing) are laborious and require a high level of expertise. Here, we assess the feasibility of sequencing glycans based on their lectin-binding fingerprints. By training a Boltzmann model on lectin binding data, we are able to predict the approximate structures of 90 ± 5% of N-glycans in our test set. We further show that our model generalizes well to the pharmaceutically relevant case of Chinese Hamster Ovary (CHO) cell glycans. We also analyze the motif specificity of a wide array of lectins and identify the most and least predictive lectins and glycan features. These results could help streamline glycoprotein research and be of use to anyone using lectins for glycobiology.
Original languageUndefined
DOIs
StatePublished - Jun 6 2023

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