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Prediction of Reaction Yield for Buchwald‐Hartwig Cross‐coupling Reactions Using Deep Learning

Akinori Sato, Tomoyuki Miyao, Kimito Funatsu

2021Molecular Informatics23 citationsDOIOpen Access PDF

Abstract

Chemical reaction yield is one of the most important factors for determining reaction conditions. Recently, several machine learning-based prediction models using high-throughput experiment (HTE) data sets were reported for the prediction of reaction yield. However, none of them were at a practical level in terms of predictive ability. In this study, we propose a message passing neural network (MPNN) model for chemical yield prediction, focusing on the Buchwald-Hartwig cross-coupling HTE data set. As an initial atom embedding in MPNN model, we propose to use the Mol2Vec feature vectors pre-trained using a large compound database. Predictive ability of the proposed model was higher than that of previously reported five models for the three out of five data sets. Moreover, visualization of important atoms based on self-attention mechanism was in favor of Mol2Vec as an atom embedding rather than other embeddings including previously employed simple representations.

Topics & Concepts

Yield (engineering)EmbeddingComputer scienceData setArtificial neural networkSet (abstract data type)Coupling reactionDeep learningArtificial intelligenceCheminformaticsAtom (system on chip)ThroughputVisualizationCoupling (piping)Machine learningChemistryBiological systemComputational chemistryMaterials scienceParallel computingOrganic chemistryProgramming languageMetallurgyBiologyTelecommunicationsWirelessCatalysisMachine Learning in Materials ScienceComputational Drug Discovery MethodsInnovative Microfluidic and Catalytic Techniques Innovation