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.
Supplementary materials
Title
Support information
Description
PDF file containing the supporting information
Actions
Supplementary weblinks
Title
GlycoTools
Description
A GitHub repository containing the GlycoPredictor and the full decision tree
Actions
View