Anomeric Selectivity of Glycosylations Through a Machine Learning Lens

15 November 2024, Version 1
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

Predicting the stereoselectivity of glycosylations is a major challenge in carbohydrate chemistry. Herein we show that it is possible to build machine learning models that can predict the major anomer of a glycosylation, whether the other anomer is observed as the minor product, and the anomeric ratio of the two anomers. The three models are integrated into a publicly available tool, GlycoPredictor. From a statistical analysis of literature data, we analyze glycosylation trends and compare them to known trends in the field of carbohydrate chemistry, making it possible to elucidate a hierarchy of rules governing the stereoselectivity of glycosylations and discover promising new trends that complement expert intuition.

Keywords

Carbohydrates
Machine learning
Glycosylations
Anomeric selectivity
Statistical analysis
Decision tree

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