Litcius/Paper detail

Retrosynthesis with attention-based NMT model and chemical analysis of “wrong” predictions

Hongliang Duan, Ling Wang, Chengyun Zhang, L. Jay Guo, Jianjun Li

2020RSC Advances77 citationsDOIOpen Access PDF

Abstract

We consider retrosynthesis to be a machine translation problem. Accordingly, we apply an attention-based and completely data-driven model named Tensor2Tensor to a data set comprising approximately 50 000 diverse reactions extracted from the United States patent literature. The model significantly outperforms the seq2seq model (37.4%), with top-1 accuracy reaching 54.1%. We also offer a novel insight into the causes of grammatically invalid SMILES, and conduct a test in which experienced chemists select and analyze the "wrong" predictions that may be chemically plausible but differ from the ground truth. The effectiveness of our model is found to be underestimated and the "true" top-1 accuracy reaches as high as 64.6%.

Topics & Concepts

Retrosynthetic analysisSet (abstract data type)Computer scienceTranslation (biology)Artificial intelligenceMachine learningTraining setData setNatural language processingGround truthMachine translationChemistryProgramming languageGeneMessenger RNABiochemistryTotal synthesisOrganic chemistryMachine Learning in Materials ScienceRNA and protein synthesis mechanismsMachine Learning in Bioinformatics
Retrosynthesis with attention-based NMT model and chemical analysis of “wrong” predictions | Litcius