Molecular Transformer: A Model for Uncertainty-Calibrated Chemical Reaction Prediction 论文

2019ACS Central Science引用 841顶会
Machine Learning in Materials ScienceComputational Drug Discovery MethodsAsymmetric Hydrogenation and Catalysis

详细信息

发表期刊/会议
ACS Central Science
发表日期
2019-08-30
发表年份
2019

关键词

Machine Learning in Materials ScienceComputational Drug Discovery MethodsAsymmetric Hydrogenation and Catalysis

摘要

Organic synthesis is one of the key stumbling blocks in medicinal chemistry. A necessary yet unsolved step in planning synthesis is solving the forward problem: Given reactants and reagents, predict the products. Similar to other work, we treat reaction prediction as a machine translation problem between simplified molecular-input line-entry system (SMILES) strings (a text-based representation) of reactants, reagents, and the products. We show that a multihead attention Molecular Transformer model outperforms all algorithms in the literature, achieving a top-1 accuracy above 90% on a common benchmark data set. Molecular Transformer makes predictions by inferring the correlations between the presence and absence of chemical motifs in the reactant, reagent, and product present in the data set. Our model requires no handcrafted rules and accurately predicts subtle chemical transformations. Crucially, our model can accurately estimate its own uncertainty, with an uncertainty score that is 89% accurate in terms of classifying whether a prediction is correct. Furthermore, we show that the model is able to handle inputs without a reactant-reagent split and including stereochemistry, which makes our method universally applicable.

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