立体选择性
区域选择性
学习迁移
深度学习
化学
变压器
有机分子
计算机科学
组合化学
分子
人工智能
有机化学
物理
量子力学
电压
催化作用
作者
Giorgio Pesciullesi,Philippe Schwaller,Teodoro Laino,Jean‐Louis Reymond
标识
DOI:10.1038/s41467-020-18671-7
摘要
Abstract Organic synthesis methodology enables the synthesis of complex molecules and materials used in all fields of science and technology and represents a vast body of accumulated knowledge optimally suited for deep learning. While most organic reactions involve distinct functional groups and can readily be learned by deep learning models and chemists alike, regio- and stereoselective transformations are more challenging because their outcome also depends on functional group surroundings. Here, we challenge the Molecular Transformer model to predict reactions on carbohydrates where regio- and stereoselectivity are notoriously difficult to predict. We show that transfer learning of the general patent reaction model with a small set of carbohydrate reactions produces a specialized model returning predictions for carbohydrate reactions with remarkable accuracy. We validate these predictions experimentally with the synthesis of a lipid-linked oligosaccharide involving regioselective protections and stereoselective glycosylations. The transfer learning approach should be applicable to any reaction class of interest.
科研通智能强力驱动
Strongly Powered by AbleSci AI